Downloads & Free Reading Options - Results
Neural Modeling by Ronald Macgregor
Read "Neural Modeling" by Ronald Macgregor through these free online access and download options.
Books Results
Source: The Internet Archive
The internet Archive Search Results
Available books for downloads and borrow from The internet Archive
1The Impact Of Victim Response On Third-Party Punishment: Evidence From ERPs, Neural Oscillations, And Computational Modeling
By Rongrong Chen
This study investigates how victim attitude responses (neutral vs. negative) influence third-party punishment decisions, using EEG and computational modeling. The goal is to understand the cognitive and neural mechanisms that underlie third-party punishment when victim feedback is incorporated. The EEG experiment aims to clarify the neural indicators of different victim attitudes (neutral vs. negative) under fair and unfair conditions, while the behavioral replication experiment seeks to replicate the behavioral results observed in the EEG study. Importantly, the study combines utility models to explore how parameters change in different attitude contexts, providing insights into the underlying psychological mechanisms.
“The Impact Of Victim Response On Third-Party Punishment: Evidence From ERPs, Neural Oscillations, And Computational Modeling” Metadata:
- Title: ➤ The Impact Of Victim Response On Third-Party Punishment: Evidence From ERPs, Neural Oscillations, And Computational Modeling
- Author: Rongrong Chen
Edition Identifiers:
- Internet Archive ID: osf-registrations-8wqha-v1
Downloads Information:
The book is available for download in "data" format, the size of the file-s is: 0.12 Mbs, the file-s for this book were downloaded 1 times, the file-s went public at Thu Mar 13 2025.
Available formats:
Archive BitTorrent - Metadata - ZIP -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find The Impact Of Victim Response On Third-Party Punishment: Evidence From ERPs, Neural Oscillations, And Computational Modeling at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
2Prediction Of Concrete And Steel Materials Contained By Cantilever Retaining Wall By Modeling The Artificial Neural Networks
By Umit Gokkus
In this study, the Artificial Neural Network (ANN) application is implemented for predicting the required concrete volume and amount of the steel reinforcement within the inversed-T-shaped and stem-stepped reinforced concrete (RC) walls. For this aim, seven-different RC wall designs were approached differentiated within the wall heights and various internal friction angles of backfill materials. Each RC wall is proportionally designed and subjected to active lateral earth pressure defined with the Mononobe-Okabe approach foreseen by Turkish Specification for Building to be Built in Seismic Zones (TSC-2007). Following the stability analysis of the RC retaining walls, the structural and reinforced concrete analyses are performed according to the Turkish Standard on Requirements for Design and Construction in Reinforced Concrete Structures (TS500-2000). Input parameters such as concrete volumes, weights of the steel bars, soil and wall material properties are subjected to the ANN modeling. The prediction of the concrete volume and amount of the steel bars are achieved with the implementation of the ANN model trained with the Artificial Bee Colony (ABC) algorithm. As a result of this study, it is revealed that ANN models are useful for verifying the existing RC retaining wall designs or performing preliminary designs for the L-shaped and stem-stepped cantilever retaining walls.
“Prediction Of Concrete And Steel Materials Contained By Cantilever Retaining Wall By Modeling The Artificial Neural Networks” Metadata:
- Title: ➤ Prediction Of Concrete And Steel Materials Contained By Cantilever Retaining Wall By Modeling The Artificial Neural Networks
- Author: Umit Gokkus
- Language: English
“Prediction Of Concrete And Steel Materials Contained By Cantilever Retaining Wall By Modeling The Artificial Neural Networks” Subjects and Themes:
- Subjects: ➤ Inverse T-shaped retaining walls - Stem-stepped walls - Concrete volume and steel area in wall design - Prediction with neural network - Artificial bee colony-based preliminary wall design
Edition Identifiers:
- Internet Archive ID: ➤ scce-volume-2-issue-4-pages-47-61
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 10.21 Mbs, the file-s for this book were downloaded 65 times, the file-s went public at Sat Mar 11 2023.
Available formats:
Archive BitTorrent - DjVuTXT - Djvu XML - Item Tile - Metadata - OCR Page Index - OCR Search Text - Page Numbers JSON - Scandata - Single Page Processed JP2 ZIP - Text PDF - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Prediction Of Concrete And Steel Materials Contained By Cantilever Retaining Wall By Modeling The Artificial Neural Networks at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
3Artificial Neural Networks: Powerful Tools For Modeling Chaotic Behavior In The Nervous System.
By Molaie, Malihe, Falahian, Razieh, Gharibzadeh, Shahriar, Jafari, Sajad and Sprott, Julien C.
This article is from Frontiers in Computational Neuroscience , volume 8 . Abstract None
“Artificial Neural Networks: Powerful Tools For Modeling Chaotic Behavior In The Nervous System.” Metadata:
- Title: ➤ Artificial Neural Networks: Powerful Tools For Modeling Chaotic Behavior In The Nervous System.
- Authors: Molaie, MaliheFalahian, RaziehGharibzadeh, ShahriarJafari, SajadSprott, Julien C.
- Language: English
Edition Identifiers:
- Internet Archive ID: pubmed-PMC3988362
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 2.52 Mbs, the file-s for this book were downloaded 84 times, the file-s went public at Thu Oct 23 2014.
Available formats:
Abbyy GZ - Animated GIF - Archive BitTorrent - DjVu - DjVuTXT - Djvu XML - JPEG Thumb - JSON - Metadata - Scandata - Single Page Processed JP2 ZIP - Text PDF -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Artificial Neural Networks: Powerful Tools For Modeling Chaotic Behavior In The Nervous System. at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
4Neural Network Modeling Of Agglomeration Firing Process For Polymetallic Ores
By International Journal of Electrical and Computer Engineering (IJECE)
While processing polymetallic ores at the non-ferrous metallurgy problems arises connecting with the excellence of production and the efficient applying the technological devices-firing furnace and crusher machine. In earlier time, similar questions were solved due to the big practice experiences and using a mathematical modeling method. The mathematical model for optimizing those operating mode is a very complex and hard to calculation. Performing computations is needed too much time and many resources. Because the control of the agglomeration furnaces and other machines are including complex multiparameter processes. The method of the math modeling for optimization the operating mode to the firing furnace is replaced with modeling based on the neural network that is here a new method. The results obtained have shown that proposed methods based on the neural network modeling of metallurgical processes allow determining more accurate and adequate results of calculations than mathematical modeling by the traditional program. The use of new approaches for modeling the technological processes at the non-ferrous metallurgy gives opportunity to enhance an effectiveness of production excellence and to enhance an efficient applying the heat-energy equipment while a firing the sulfide polymetallic ores of non-ferrous metallurgy.
“Neural Network Modeling Of Agglomeration Firing Process For Polymetallic Ores” Metadata:
- Title: ➤ Neural Network Modeling Of Agglomeration Firing Process For Polymetallic Ores
- Author: ➤ International Journal of Electrical and Computer Engineering (IJECE)
“Neural Network Modeling Of Agglomeration Firing Process For Polymetallic Ores” Subjects and Themes:
- Subjects: Automatic control - Industry production - Mathematical modeling - Neural network - Optimization mode
Edition Identifiers:
- Internet Archive ID: ➤ 10.11591ijece.v12i4.pp4352-4363
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 12.11 Mbs, the file-s for this book were downloaded 48 times, the file-s went public at Thu Sep 29 2022.
Available formats:
Archive BitTorrent - DjVuTXT - Djvu XML - Item Tile - Metadata - OCR Page Index - OCR Search Text - Page Numbers JSON - Scandata - Single Page Processed JP2 ZIP - Text PDF - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Neural Network Modeling Of Agglomeration Firing Process For Polymetallic Ores at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
5Neural Modeling And Imaging Of Stuttering ( Frank Guenther; Oxford Dysfluency Conference 2021)
By Frank Guenther
Lecture: Neural Modeling And Imaging Of Stuttering
“Neural Modeling And Imaging Of Stuttering ( Frank Guenther; Oxford Dysfluency Conference 2021)” Metadata:
- Title: ➤ Neural Modeling And Imaging Of Stuttering ( Frank Guenther; Oxford Dysfluency Conference 2021)
- Author: Frank Guenther
- Language: English
“Neural Modeling And Imaging Of Stuttering ( Frank Guenther; Oxford Dysfluency Conference 2021)” Subjects and Themes:
- Subjects: stuttering - neuroscience - neural model - speech
Edition Identifiers:
- Internet Archive ID: ➤ neural-modeling-and-imaging-of-stuttering-frank-guenther-oxford-dysfluency-conference-2021
Downloads Information:
The book is available for download in "movies" format, the size of the file-s is: 185.04 Mbs, the file-s for this book were downloaded 20 times, the file-s went public at Sat Jul 23 2022.
Available formats:
Archive BitTorrent - Item Tile - MPEG4 - Metadata - Thumbnail -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Neural Modeling And Imaging Of Stuttering ( Frank Guenther; Oxford Dysfluency Conference 2021) at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
6The Neural Simulation Language : A System For Brain Modeling
By Weitzenfeld, Alfredo
Lecture: Neural Modeling And Imaging Of Stuttering
“The Neural Simulation Language : A System For Brain Modeling” Metadata:
- Title: ➤ The Neural Simulation Language : A System For Brain Modeling
- Author: Weitzenfeld, Alfredo
- Language: English
“The Neural Simulation Language : A System For Brain Modeling” Subjects and Themes:
- Subjects: ➤ Neural networks (Computer science) - Neural networks (Neurobiology) - Nerve Net - Brain -- Computer simulation - Neural Networks (Computer) - Simulation - Neuronales Netz
Edition Identifiers:
- Internet Archive ID: neuralsimulation0000weit
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 948.10 Mbs, the file-s for this book were downloaded 43 times, the file-s went public at Mon May 18 2020.
Available formats:
ACS Encrypted EPUB - ACS Encrypted PDF - Abbyy GZ - Cloth Cover Detection Log - DjVuTXT - Djvu XML - Dublin Core - EPUB - Item Tile - JPEG Thumb - JSON - LCP Encrypted EPUB - LCP Encrypted PDF - Log - MARC - MARC Binary - Metadata - OCR Page Index - OCR Search Text - PNG - Page Numbers JSON - Scandata - Single Page Original JP2 Tar - Single Page Processed JP2 ZIP - Text PDF - Title Page Detection Log - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find The Neural Simulation Language : A System For Brain Modeling at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
7Neural Modeling Of Brain And Cognitive Disorders
Lecture: Neural Modeling And Imaging Of Stuttering
“Neural Modeling Of Brain And Cognitive Disorders” Metadata:
- Title: ➤ Neural Modeling Of Brain And Cognitive Disorders
- Language: English
“Neural Modeling Of Brain And Cognitive Disorders” Subjects and Themes:
- Subjects: ➤ Cognition disorders -- Computer simulation -- Congresses - Brain -- Diseases -- Computer simulation -- Congresses - Psychoses -- Computer simulation -- Congresses - Neural networks (Neurobiology) -- Congresses - Nervous System Diseases -- congresses - Cognition Disorders -- congresses - Mental Disorders -- congresses - Models, Neurological -- congresses
Edition Identifiers:
- Internet Archive ID: neuralmodelingof0000unse
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 1275.17 Mbs, the file-s for this book were downloaded 22 times, the file-s went public at Fri Mar 25 2022.
Available formats:
ACS Encrypted PDF - Cloth Cover Detection Log - DjVuTXT - Djvu XML - Dublin Core - EPUB - Item Tile - JPEG Thumb - JSON - LCP Encrypted EPUB - LCP Encrypted PDF - Log - MARC - MARC Binary - Metadata - OCR Page Index - OCR Search Text - PNG - Page Numbers JSON - Scandata - Single Page Original JP2 Tar - Single Page Processed JP2 ZIP - Text PDF - Title Page Detection Log - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Neural Modeling Of Brain And Cognitive Disorders at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
8Neural Networks Modeling Of Ship Dynamicsin Ice Conditions
By Yu.S. Zhuk, Yu.I. Netchayev
The questions of use of neural networks models are discussed at the control of ship dynamics in ice conditions. The control and forecast of development of a situation is realized on the basis of the data dynamic measurements within the framework of a competition principle. The modeling is carried out with use of methods of classical mathematics and theory of artificial neural networks.
“Neural Networks Modeling Of Ship Dynamicsin Ice Conditions” Metadata:
- Title: ➤ Neural Networks Modeling Of Ship Dynamicsin Ice Conditions
- Author: Yu.S. Zhuk, Yu.I. Netchayev
- Language: rus
Edition Identifiers:
- Internet Archive ID: ➤ httpsjai.in.uaindex.phpd0b0d180d185d196d0b2paper_num776
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 7.39 Mbs, the file-s for this book were downloaded 19 times, the file-s went public at Sat May 18 2024.
Available formats:
Archive BitTorrent - DjVuTXT - Djvu XML - Item Tile - Metadata - OCR Page Index - OCR Search Text - Page Numbers JSON - Scandata - Single Page Processed JP2 ZIP - Text PDF - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Neural Networks Modeling Of Ship Dynamicsin Ice Conditions at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
9Modeling Diesel Engine Fueled With Tamanu Oil - Diesel Blend By Hybridizing Neural Network With Firefly Algorithm
By Yarrapragada K.S.S Rao and B. Bala Krishna
Research works are ongoing in mixing the biologically synthesized oil with the diesel for reducing the effect of global warming and climate change. From the review study, it is noted that the blended biodiesels require more assert about their practical viability. So, the non-edible Tamanu oil is synthesized and it is blended with diesel and its emission characteristics, engine performance and combustion characteristics are studied in our previous work. This paper attempts to model the diesel engine fueled with tamanu oil biodiesel blend. The proposed model exploits the context of neural network and the firefly algorithm is used to train it. After analyzing the various characteristics of the diesel engine, the acquired data is subjected to a proposed FF-NM method. The simulated results are statistically evaluated and the proposed modeling method is proved to be better than the other NM.
“Modeling Diesel Engine Fueled With Tamanu Oil - Diesel Blend By Hybridizing Neural Network With Firefly Algorithm” Metadata:
- Title: ➤ Modeling Diesel Engine Fueled With Tamanu Oil - Diesel Blend By Hybridizing Neural Network With Firefly Algorithm
- Authors: Yarrapragada K.S.S RaoB. Bala Krishna
- Language: English
“Modeling Diesel Engine Fueled With Tamanu Oil - Diesel Blend By Hybridizing Neural Network With Firefly Algorithm” Subjects and Themes:
- Subjects: Biodiesel - Diesel engine - Firefly algorithm - Neural model - Tamanu oil
Edition Identifiers:
- Internet Archive ID: ➤ mccl_10.1016_j.renene.2018.08.091
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 18.89 Mbs, the file-s for this book were downloaded 119 times, the file-s went public at Sat Jul 06 2019.
Available formats:
Abbyy GZ - Archive BitTorrent - DjVuTXT - Djvu XML - Item Tile - Metadata - Scandata - Single Page Processed JP2 ZIP - Text PDF - Unknown -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Modeling Diesel Engine Fueled With Tamanu Oil - Diesel Blend By Hybridizing Neural Network With Firefly Algorithm at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
10Artificial Neural Networks: Modeling Tree Survival And Mortality In The Atlantic Forest Biome In Brazil
By Samuel José Silva Soares da Rocha, Carlos Moreira Miquelino Eleto Torres, Laércio Antônio Gonçalves Jacovine, Helio Garcia Leite, Eduardo Monteiro Gelcer, Karina Milagres Neves, Bruno Leão Said Schettini, Paulo Henrique Villanova, Liniker Fernandes da Silva, Leonardo Pequeno Reis and José Cola Zanuncio
Models to predict tree survival and mortality can help to understand vegetation dynamics and to predict effects of climate change on native forests. The objective of the present study was to use Artificial Neural Networks, based on the competition index and climatic and categorical variables, to predict tree survival and mortality in Semideciduous Seasonal Forests in the Atlantic Forest biome. Numerical and categorical trees variables, in permanent plots, were used. The Agricultural Reference Index for Drought (ARID) and the distance-dependent competition index were the variables used. The overall efficiency of classification by ANNs was higher than 92% and 93% in the training and test, respectively. The accuracy for classification and number of surviving trees was above 99% in the test and in training for all ANNs. The classification accuracy of the number of dead trees was low. The mortality accuracy rate (10.96% for training and 13.76% for the test) was higher with the ANN 4, which considers the climatic variable and the competition index. The individual tree-level model integrates dendrometric and meteorological variables, representing a new step for modeling tree survival in the Atlantic Forest biome.
“Artificial Neural Networks: Modeling Tree Survival And Mortality In The Atlantic Forest Biome In Brazil” Metadata:
- Title: ➤ Artificial Neural Networks: Modeling Tree Survival And Mortality In The Atlantic Forest Biome In Brazil
- Authors: ➤ Samuel José Silva Soares da RochaCarlos Moreira Miquelino Eleto TorresLaércio Antônio Gonçalves JacovineHelio Garcia LeiteEduardo Monteiro GelcerKarina Milagres NevesBruno Leão Said SchettiniPaulo Henrique VillanovaLiniker Fernandes da SilvaLeonardo Pequeno ReisJosé Cola Zanuncio
- Language: English
“Artificial Neural Networks: Modeling Tree Survival And Mortality In The Atlantic Forest Biome In Brazil” Subjects and Themes:
- Subjects: Artificial intelligence - Prognosis - Tropical forests
Edition Identifiers:
- Internet Archive ID: ➤ mccl_10.1016_j.scitotenv.2018.07.123
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 6.91 Mbs, the file-s for this book were downloaded 102 times, the file-s went public at Sat Jul 06 2019.
Available formats:
Abbyy GZ - Archive BitTorrent - DjVuTXT - Djvu XML - Item Tile - Metadata - Scandata - Single Page Processed JP2 ZIP - Text PDF - Unknown -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Artificial Neural Networks: Modeling Tree Survival And Mortality In The Atlantic Forest Biome In Brazil at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
11Neural Modeling : Electrical Signal Processing In The Nervous System
By MacGregor, Ronald J
Models to predict tree survival and mortality can help to understand vegetation dynamics and to predict effects of climate change on native forests. The objective of the present study was to use Artificial Neural Networks, based on the competition index and climatic and categorical variables, to predict tree survival and mortality in Semideciduous Seasonal Forests in the Atlantic Forest biome. Numerical and categorical trees variables, in permanent plots, were used. The Agricultural Reference Index for Drought (ARID) and the distance-dependent competition index were the variables used. The overall efficiency of classification by ANNs was higher than 92% and 93% in the training and test, respectively. The accuracy for classification and number of surviving trees was above 99% in the test and in training for all ANNs. The classification accuracy of the number of dead trees was low. The mortality accuracy rate (10.96% for training and 13.76% for the test) was higher with the ANN 4, which considers the climatic variable and the competition index. The individual tree-level model integrates dendrometric and meteorological variables, representing a new step for modeling tree survival in the Atlantic Forest biome.
“Neural Modeling : Electrical Signal Processing In The Nervous System” Metadata:
- Title: ➤ Neural Modeling : Electrical Signal Processing In The Nervous System
- Author: MacGregor, Ronald J
- Language: English
“Neural Modeling : Electrical Signal Processing In The Nervous System” Subjects and Themes:
- Subjects: ➤ Nervous system -- Mathematical models - Electrophysiology -- Mathematical models - Biomedical engineering - Electrophysiology - Models, Theoretical - Nervous System Physiological Phenomena - Biosignalverarbeitung - Mathematisches Modell - Neurophysiologie - Electrophysiology Mathematical models - Nervous system Mathematical models
Edition Identifiers:
- Internet Archive ID: neuralmodelingel0000macg_l5j1
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 938.64 Mbs, the file-s for this book were downloaded 56 times, the file-s went public at Sun Jun 28 2020.
Available formats:
ACS Encrypted EPUB - ACS Encrypted PDF - Abbyy GZ - Cloth Cover Detection Log - DjVuTXT - Djvu XML - Dublin Core - EPUB - Item Tile - JPEG Thumb - JSON - LCP Encrypted EPUB - LCP Encrypted PDF - Log - MARC - MARC Binary - Metadata - OCR Page Index - OCR Search Text - PNG - Page Numbers JSON - Scandata - Single Page Original JP2 Tar - Single Page Processed JP2 ZIP - Text PDF - Title Page Detection Log - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Neural Modeling : Electrical Signal Processing In The Nervous System at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
12NASA Technical Reports Server (NTRS) 20170011249: UAV Trajectory Modeling Using Neural Networks UAV Trajectory Modeling Using Neural Networks
By NASA Technical Reports Server (NTRS)
Large amount of small Unmanned Aerial Vehicles (sUAVs) are projected to operate in the near future. Potential sUAV applications include, but not limited to, search and rescue, inspection and surveillance, aerial photography and video, precision agriculture, and parcel delivery. sUAVs are expected to operate in the uncontrolled Class G airspace, which is at or below 500 feet above ground level (AGL), where many static and dynamic constraints exist, such as ground properties and terrains, restricted areas, various winds, manned helicopters, and conflict avoidance among sUAVs. How to enable safe, efficient, and massive sUAV operations at the low altitude airspace remains a great challenge. NASA's Unmanned aircraft system Traffic Management (UTM) research initiative works on establishing infrastructure and developing policies, requirement, and rules to enable safe and efficient sUAVs' operations. To achieve this goal, it is important to gain insights of future UTM traffic operations through simulations, where the accurate trajectory model plays an extremely important role. On the other hand, like what happens in current aviation development, trajectory modeling should also serve as the foundation for any advanced concepts and tools in UTM. Accurate models of sUAV dynamics and control systems are very important considering the requirement of the meter level precision in UTM operations. The vehicle dynamics are relatively easy to derive and model, however, vehicle control systems remain unknown as they are usually kept by manufactures as a part of intellectual properties. That brings challenges to trajectory modeling for sUAVs. How to model the vehicle's trajectories with unknown control system? This work proposes to use a neural network to model a vehicle's trajectory. The neural network is first trained to learn the vehicle's responses at numerous conditions. Once being fully trained, given current vehicle states, winds, and desired future trajectory, the neural network should be able to predict the vehicle's future states at next time step. A complete 4-D trajectory are then generated step by step using the trained neural network. Experiments in this work show that the neural network can approximate the sUAV's model and predict the trajectory accurately.
“NASA Technical Reports Server (NTRS) 20170011249: UAV Trajectory Modeling Using Neural Networks UAV Trajectory Modeling Using Neural Networks” Metadata:
- Title: ➤ NASA Technical Reports Server (NTRS) 20170011249: UAV Trajectory Modeling Using Neural Networks UAV Trajectory Modeling Using Neural Networks
- Author: ➤ NASA Technical Reports Server (NTRS)
- Language: English
“NASA Technical Reports Server (NTRS) 20170011249: UAV Trajectory Modeling Using Neural Networks UAV Trajectory Modeling Using Neural Networks” Subjects and Themes:
- Subjects: ➤ NASA Technical Reports Server (NTRS) - NASA Ames Research Center - Xue, Min
Edition Identifiers:
- Internet Archive ID: NASA_NTRS_Archive_20170011249
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 1.04 Mbs, the file-s for this book were downloaded 24 times, the file-s went public at Sat Jul 02 2022.
Available formats:
Archive BitTorrent - Metadata - Text PDF -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find NASA Technical Reports Server (NTRS) 20170011249: UAV Trajectory Modeling Using Neural Networks UAV Trajectory Modeling Using Neural Networks at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
13Neural Modeling Of Selective Attention
By Levine, Daniel S
No Abstract Available
“Neural Modeling Of Selective Attention” Metadata:
- Title: ➤ Neural Modeling Of Selective Attention
- Author: Levine, Daniel S
- Language: English
“Neural Modeling Of Selective Attention” Subjects and Themes:
- Subjects: ➤ CORROSION PREVENTION - HYDROGEN EMBRITTLEMENT - STRESS INTENSITY FACTORS - IRON ALLOYS - NICKEL ALLOYS - SERVICE LIFE - STRAIN RATE - STRESS CORROSION CRACKING - ACTIVATION ENERGY - CHLORIDES - CRACK PROPAGATION
Edition Identifiers:
- Internet Archive ID: nasa_techdoc_19910073804
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 2.61 Mbs, the file-s for this book were downloaded 223 times, the file-s went public at Sun Aug 01 2010.
Available formats:
Abbyy GZ - Animated GIF - Archive BitTorrent - DjVu - DjVuTXT - Djvu XML - Item Tile - Metadata - Scandata - Single Page Processed JP2 ZIP - Text PDF -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Neural Modeling Of Selective Attention at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
14Neural Theory And Modeling
No Abstract Available
“Neural Theory And Modeling” Metadata:
- Title: Neural Theory And Modeling
- Language: English
Edition Identifiers:
- Internet Archive ID: neuraltheorymode0000unse
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 1034.56 Mbs, the file-s for this book were downloaded 14 times, the file-s went public at Wed Oct 07 2020.
Available formats:
ACS Encrypted EPUB - ACS Encrypted PDF - Abbyy GZ - Book Genome JSON - Cloth Cover Detection Log - DjVuTXT - Djvu XML - EPUB - Item Tile - JPEG Thumb - JSON - LCP Encrypted EPUB - LCP Encrypted PDF - Log - Metadata - OCR Page Index - OCR Search Text - PNG - Page Numbers JSON - Scandata - Single Page Original JP2 Tar - Single Page Processed JP2 ZIP - Text PDF - Title Page Detection Log - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Neural Theory And Modeling at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
15Probability-based Nonlinear Modeling Of Neural Dynamical Systems With Point-process Inputs And Outputs.
By Sandler, Roman, Song, Dong, Hampson, Robert E, Deadwyler, Sam A, Berger, Theodore and Marmarelis, Vasilis
This article is from BMC Neuroscience , volume 15 . Abstract None
“Probability-based Nonlinear Modeling Of Neural Dynamical Systems With Point-process Inputs And Outputs.” Metadata:
- Title: ➤ Probability-based Nonlinear Modeling Of Neural Dynamical Systems With Point-process Inputs And Outputs.
- Authors: ➤ Sandler, RomanSong, DongHampson, Robert EDeadwyler, Sam ABerger, TheodoreMarmarelis, Vasilis
- Language: English
Edition Identifiers:
- Internet Archive ID: pubmed-PMC4124976
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 1.14 Mbs, the file-s for this book were downloaded 104 times, the file-s went public at Wed Oct 08 2014.
Available formats:
Abbyy GZ - Animated GIF - Archive BitTorrent - DjVu - DjVuTXT - Djvu XML - Item Tile - JSON - Metadata - Scandata - Single Page Processed JP2 ZIP - Text PDF -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Probability-based Nonlinear Modeling Of Neural Dynamical Systems With Point-process Inputs And Outputs. at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
16Financial Market Modeling With Quantum Neural Networks
By Carlos Pedro Gonçalves
Econophysics has developed as a research field that applies the formalism of Statistical Mechanics and Quantum Mechanics to address Economics and Finance problems. The branch of Econophysics that applies of Quantum Theory to Economics and Finance is called Quantum Econophysics. In Finance, Quantum Econophysics' contributions have ranged from option pricing to market dynamics modeling, behavioral finance and applications of Game Theory, integrating the empirical finding, from human decision analysis, that shows that nonlinear update rules in probabilities, leading to non-additive decision weights, can be computationally approached from quantum computation, with resulting quantum interference terms explaining the non-additive probabilities. The current work draws on these results to introduce new tools from Quantum Artificial Intelligence, namely Quantum Artificial Neural Networks as a way to build and simulate financial market models with adaptive selection of trading rules, leading to turbulence and excess kurtosis in the returns distributions for a wide range of parameters.
“Financial Market Modeling With Quantum Neural Networks” Metadata:
- Title: ➤ Financial Market Modeling With Quantum Neural Networks
- Author: Carlos Pedro Gonçalves
- Language: English
“Financial Market Modeling With Quantum Neural Networks” Subjects and Themes:
- Subjects: ➤ Physics and Society - Quantitative Finance - Physics - General Finance - Neural and Evolutionary Computing - Computing Research Repository - Computational Finance
Edition Identifiers:
- Internet Archive ID: arxiv-1508.06586
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 18.94 Mbs, the file-s for this book were downloaded 80 times, the file-s went public at Thu Jun 28 2018.
Available formats:
Abbyy GZ - Archive BitTorrent - DjVuTXT - Djvu XML - JPEG Thumb - Metadata - Scandata - Single Page Processed JP2 ZIP - Text PDF -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Financial Market Modeling With Quantum Neural Networks at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
17Analysing Properties Of The C. Elegans Neural Network: Mathematically Modeling A Biological System
By Daniel J. Kelleher, Tyler M. Reese, Dylan T. Yott and Antoni Brzoska
The brain is one of the most studied and highly complex systems in the biological world. It is the information center behind all vertebrate and most invertebrate life, and thus has become a major focus in current research. While many of these studies have concentrated on studying the brain directly, our focus is the structure of the brain itself: at its core an interconnected network of nodes (neurons). A better understanding of the structural aspects of the brain should elucidate some of its functional properties. In this paper we analyze the brain of the nematode Caenorhabditis elegans. Consisting of only 302 neurons, it is one of the better-understood neural networks. Using a Laplacian matrix of the 279-neuron "giant component" of the network, we use an eigenvalue counting function to look for fractal-like self similarity. This matrix representation is also used to plot (in eigenfunction coordinates) both 2 and 3 dimensional visualizations of the neural network. Further analysis examines the small-world properties of the system, including average path length and clustering coefficient. We then test for localization of eigenfunctions, using graph energy and spacial variance. To better understand these results, all of these calculations are also performed on random networks, branching trees, and known fractals, as well as fractals which have been "rewired" to have small-world properties. This analysis is one of many stepping-stones in the research of neural networks. While many of the structures and functions within the brain are known, understanding how the two interact is also important. A firmer grasp on the structural properties of the neural network is a key step in this process
“Analysing Properties Of The C. Elegans Neural Network: Mathematically Modeling A Biological System” Metadata:
- Title: ➤ Analysing Properties Of The C. Elegans Neural Network: Mathematically Modeling A Biological System
- Authors: Daniel J. KelleherTyler M. ReeseDylan T. YottAntoni Brzoska
- Language: English
Edition Identifiers:
- Internet Archive ID: arxiv-1109.3888
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 12.93 Mbs, the file-s for this book were downloaded 84 times, the file-s went public at Mon Sep 23 2013.
Available formats:
Abbyy GZ - Animated GIF - Archive BitTorrent - DjVu - DjVuTXT - Djvu XML - Item Tile - Metadata - Scandata - Single Page Processed JP2 ZIP - Text PDF -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Analysing Properties Of The C. Elegans Neural Network: Mathematically Modeling A Biological System at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
18Modeling Arbiter-PUF In NodeMCU ESP8266 Using Artificial Neural Network
By Mohd Syafiq Mispan; Aiman Zakwan Jidin; Haslinah Mohd Nasir; Noor Mohd Ariff Brahin; llani Mohd Nawi
A hardware fingerprinting primitive known as physical unclonable function (PUF) has a huge potential for secret-key cryptography and identification/authentication applications. The hardware fingerprint is manifested by the random and unique binary strings extracted from the integrated circuit (IC) which exist due to inherent process variations during its fabrication. PUF technology has a huge potential to be used for device identification and authentication in resource-constrained internet of things (IoT) applications such as wireless sensor networks (WSN). A secret computational model of PUF is suggested to be stored in the verifier’s database as an alternative to challenge and response pairs (CRPs) to reduce area consumption. Therefore, in this paper, the design steps to build a PUF model in NodeMCU ESP8266 using an artificial neural network (ANN) are presented. Arbiter-PUF is used in our study and NodeMCU ESP8266 is chosen because it is suitable to be used as a sensor node or sink in WSN applications. ANN with a resilient back-propagation training algorithm is used as it can model the non-linearity with high accuracy. The results show that ANN can model the arbiter-PUF with approximately 99.5% prediction accuracy and the PUF model only consumes 309,889 bytes of memory space.
“Modeling Arbiter-PUF In NodeMCU ESP8266 Using Artificial Neural Network” Metadata:
- Title: ➤ Modeling Arbiter-PUF In NodeMCU ESP8266 Using Artificial Neural Network
- Author: ➤ Mohd Syafiq Mispan; Aiman Zakwan Jidin; Haslinah Mohd Nasir; Noor Mohd Ariff Brahin; llani Mohd Nawi
- Language: english-handwritten
“Modeling Arbiter-PUF In NodeMCU ESP8266 Using Artificial Neural Network” Subjects and Themes:
- Subjects: Computational model - Hardware fingerprinting - Lightweight authentication - Machine learning - Physical unclonable function
Edition Identifiers:
- Internet Archive ID: 10.11591ijres.v11.i3.pp233-239
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 4.97 Mbs, the file-s for this book were downloaded 42 times, the file-s went public at Tue Nov 01 2022.
Available formats:
Archive BitTorrent - Djvu XML - Item Tile - Metadata - OCR Page Index - OCR Search Text - Page Numbers JSON - Scandata - Single Page Processed JP2 ZIP - Text PDF - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Modeling Arbiter-PUF In NodeMCU ESP8266 Using Artificial Neural Network at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
19Modeling Coverage For Neural Machine Translation
By Zhaopeng Tu, Zhengdong Lu, Yang Liu, Xiaohua Liu and Hang Li
Attention mechanism has enhanced state-of-the-art Neural Machine Translation (NMT) by jointly learning to align and translate. It tends to ignore past alignment information, however, which often leads to over-translation and under-translation. To address this problem, we propose coverage-based NMT in this paper. We maintain a coverage vector to keep track of the attention history. The coverage vector is fed to the attention model to help adjust future attention, which lets NMT system to consider more about untranslated source words. Experiments show that the proposed approach significantly improves both translation quality and alignment quality over standard attention-based NMT.
“Modeling Coverage For Neural Machine Translation” Metadata:
- Title: ➤ Modeling Coverage For Neural Machine Translation
- Authors: Zhaopeng TuZhengdong LuYang LiuXiaohua LiuHang Li
“Modeling Coverage For Neural Machine Translation” Subjects and Themes:
Edition Identifiers:
- Internet Archive ID: arxiv-1601.04811
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 0.79 Mbs, the file-s for this book were downloaded 27 times, the file-s went public at Fri Jun 29 2018.
Available formats:
Archive BitTorrent - Metadata - Text PDF -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Modeling Coverage For Neural Machine Translation at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
20Modeling Cognitive Deficits Following Neurodegenerative Diseases And Traumatic Brain Injuries With Deep Convolutional Neural Networks
By Bethany Lusch, Jake Weholt, Pedro D. Maia and J. Nathan Kutz
The accurate diagnosis and assessment of neurodegenerative disease and traumatic brain injuries (TBI) remain open challenges. Both cause cognitive and functional deficits due to focal axonal swellings (FAS), but it is difficult to deliver a prognosis due to our limited ability to assess damaged neurons at a cellular level in vivo. We simulate the effects of neurodegenerative disease and TBI using convolutional neural networks (CNNs) as our model of cognition. We utilize biophysically relevant statistical data on FAS to damage the connections in CNNs in a functionally relevant way. We incorporate energy constraints on the brain by pruning the CNNs to be less over-engineered. Qualitatively, we demonstrate that damage leads to human-like mistakes. Our experiments also provide quantitative assessments of how accuracy is affected by various types and levels of damage. The deficit resulting from a fixed amount of damage greatly depends on which connections are randomly injured, providing intuition for why it is difficult to predict impairments. There is a large degree of subjectivity when it comes to interpreting cognitive deficits from complex systems such as the human brain. However, we provide important insight and a quantitative framework for disorders in which FAS are implicated.
“Modeling Cognitive Deficits Following Neurodegenerative Diseases And Traumatic Brain Injuries With Deep Convolutional Neural Networks” Metadata:
- Title: ➤ Modeling Cognitive Deficits Following Neurodegenerative Diseases And Traumatic Brain Injuries With Deep Convolutional Neural Networks
- Authors: Bethany LuschJake WeholtPedro D. MaiaJ. Nathan Kutz
“Modeling Cognitive Deficits Following Neurodegenerative Diseases And Traumatic Brain Injuries With Deep Convolutional Neural Networks” Subjects and Themes:
- Subjects: Quantitative Biology - Machine Learning - Quantitative Methods - Neurons and Cognition - Statistics
Edition Identifiers:
- Internet Archive ID: arxiv-1612.04423
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 0.75 Mbs, the file-s for this book were downloaded 40 times, the file-s went public at Fri Jun 29 2018.
Available formats:
Archive BitTorrent - Metadata - Text PDF -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Modeling Cognitive Deficits Following Neurodegenerative Diseases And Traumatic Brain Injuries With Deep Convolutional Neural Networks at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
21Frustratingly Short Attention Spans In Neural Language Modeling
By Michał Daniluk, Tim Rocktäschel, Johannes Welbl and Sebastian Riedel
Neural language models predict the next token using a latent representation of the immediate token history. Recently, various methods for augmenting neural language models with an attention mechanism over a differentiable memory have been proposed. For predicting the next token, these models query information from a memory of the recent history which can facilitate learning mid- and long-range dependencies. However, conventional attention mechanisms used in memory-augmented neural language models produce a single output vector per time step. This vector is used both for predicting the next token as well as for the key and value of a differentiable memory of a token history. In this paper, we propose a neural language model with a key-value attention mechanism that outputs separate representations for the key and value of a differentiable memory, as well as for encoding the next-word distribution. This model outperforms existing memory-augmented neural language models on two corpora. Yet, we found that our method mainly utilizes a memory of the five most recent output representations. This led to the unexpected main finding that a much simpler model based only on the concatenation of recent output representations from previous time steps is on par with more sophisticated memory-augmented neural language models.
“Frustratingly Short Attention Spans In Neural Language Modeling” Metadata:
- Title: ➤ Frustratingly Short Attention Spans In Neural Language Modeling
- Authors: Michał DanilukTim RocktäschelJohannes WelblSebastian Riedel
“Frustratingly Short Attention Spans In Neural Language Modeling” Subjects and Themes:
- Subjects: ➤ Learning - Neural and Evolutionary Computing - Artificial Intelligence - Computing Research Repository - Computation and Language
Edition Identifiers:
- Internet Archive ID: arxiv-1702.04521
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 0.47 Mbs, the file-s for this book were downloaded 19 times, the file-s went public at Sat Jun 30 2018.
Available formats:
Archive BitTorrent - Metadata - Text PDF -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Frustratingly Short Attention Spans In Neural Language Modeling at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
22Neural Network-based Parking System Object Detection And Predictive Modeling
By Ziad El Khatib, Adel Ben Mnaouer, Sherif Moussa, Omar Mashaal, Nor Azman Ismail, Mohd Azman Bin Abas, Fuad Abdulgaleel
A neural network-based parking system with real-time license plate detection and vacant space detection using hyper parameter optimization is presented. When number of epochs increased from 30, 50 to 80 and learning rate tuned to 0.001, the validation loss improved to 0.017 and training object loss improved to 0.040. The model means average precision mAP_0.5 is improved to 0.988 and the precision is improved to 99%. The proposed neural network-based parking system also uses a regularization technique for effective predictive modeling. The proposed modified lasso ridge elastic (LRE) regularization technique provides a 5.21 root mean square error (RMSE) and an R-square of 0.71 with a 4.22 mean absolute error (MAE) indicative of higher accuracy performance compared to other regularization regression models. The advantage of the proposed modified LRE is that it enables effective regularization via modified penalty with the feature selection characteristics of both lasso and ridge.
“Neural Network-based Parking System Object Detection And Predictive Modeling” Metadata:
- Title: ➤ Neural Network-based Parking System Object Detection And Predictive Modeling
- Author: ➤ Ziad El Khatib, Adel Ben Mnaouer, Sherif Moussa, Omar Mashaal, Nor Azman Ismail, Mohd Azman Bin Abas, Fuad Abdulgaleel
- Language: English
“Neural Network-based Parking System Object Detection And Predictive Modeling” Subjects and Themes:
- Subjects: Hyperparamter optimization - Predictive modeling - Real-time object detection - Regularization technique - Yolo neural network
Edition Identifiers:
- Internet Archive ID: 08-21238
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 8.78 Mbs, the file-s for this book were downloaded 66 times, the file-s went public at Thu Apr 27 2023.
Available formats:
Archive BitTorrent - DjVuTXT - Djvu XML - Item Tile - Metadata - OCR Page Index - OCR Search Text - Page Numbers JSON - Scandata - Single Page Processed JP2 ZIP - Text PDF - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Neural Network-based Parking System Object Detection And Predictive Modeling at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
23DTIC ADA358600: Feature Saliency In Artificial Neural Networks With Application To Modeling Workload
By Defense Technical Information Center
This dissertation research extends the current knowledge of feature saliency in artificial neural networks (ANN). Feature saliency measures allow for the user to rank order the features based upon the saliency, or relative importance, of the features. Selecting a parsimonious set of salient input features is crucial to the success of any ANN model. In this research, several methodologies were developed using the Signal to Noise Ratio (SNR) Feature Screening Method and its associated SNR Saliency Measure for selecting a parsimonious set of salient features to classify pilot workload in addition to air traffic controller workload. Candidate features were derived from electroencephalography (EEG), electrocardiography (EKG), electro-oculography (EOG), and respiratory gauges. In addition, a new saliency measure was developed that can account for time in Elman Recurrent Neural Networks (RNN). This Partial Derivative Based Spatial Temporal Saliency Measure is used via a Spatial Temporal Feature Screening Method for selecting a parsimonious set of salient features in both time and space. Finally, a technique for investigating the memory capacity of an Elman RNN was developed.
“DTIC ADA358600: Feature Saliency In Artificial Neural Networks With Application To Modeling Workload” Metadata:
- Title: ➤ DTIC ADA358600: Feature Saliency In Artificial Neural Networks With Application To Modeling Workload
- Author: ➤ Defense Technical Information Center
- Language: English
“DTIC ADA358600: Feature Saliency In Artificial Neural Networks With Application To Modeling Workload” Subjects and Themes:
- Subjects: ➤ DTIC Archive - Greene, Kelly A. - AIR FORCE INST OF TECH WRIGHT-PATTERSONAFB OH SCHOOL OF ENGINEERING - *NEURAL NETS - *ARTIFICIAL INTELLIGENCE - *MENTAL ABILITY - PERFORMANCE(HUMAN) - PILOTS - SIGNAL TO NOISE RATIO - THESES - WORKLOAD - AIR TRAFFIC CONTROLLERS - ELECTROENCEPHALOGRAPHY - ELECTROCARDIOGRAPHY.
Edition Identifiers:
- Internet Archive ID: DTIC_ADA358600
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 326.67 Mbs, the file-s for this book were downloaded 101 times, the file-s went public at Sat Apr 21 2018.
Available formats:
Abbyy GZ - Additional Text PDF - Archive BitTorrent - DjVuTXT - Djvu XML - Image Container PDF - JPEG Thumb - Metadata - OCR Page Index - OCR Search Text - Page Numbers JSON - Scandata - Single Page Processed JP2 ZIP - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find DTIC ADA358600: Feature Saliency In Artificial Neural Networks With Application To Modeling Workload at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
24Theoretical Neuroscience : Computational And Mathematical Modeling Of Neural Systems
By Dayan, Peter, 1965-
This dissertation research extends the current knowledge of feature saliency in artificial neural networks (ANN). Feature saliency measures allow for the user to rank order the features based upon the saliency, or relative importance, of the features. Selecting a parsimonious set of salient input features is crucial to the success of any ANN model. In this research, several methodologies were developed using the Signal to Noise Ratio (SNR) Feature Screening Method and its associated SNR Saliency Measure for selecting a parsimonious set of salient features to classify pilot workload in addition to air traffic controller workload. Candidate features were derived from electroencephalography (EEG), electrocardiography (EKG), electro-oculography (EOG), and respiratory gauges. In addition, a new saliency measure was developed that can account for time in Elman Recurrent Neural Networks (RNN). This Partial Derivative Based Spatial Temporal Saliency Measure is used via a Spatial Temporal Feature Screening Method for selecting a parsimonious set of salient features in both time and space. Finally, a technique for investigating the memory capacity of an Elman RNN was developed.
“Theoretical Neuroscience : Computational And Mathematical Modeling Of Neural Systems” Metadata:
- Title: ➤ Theoretical Neuroscience : Computational And Mathematical Modeling Of Neural Systems
- Author: Dayan, Peter, 1965-
- Language: English
“Theoretical Neuroscience : Computational And Mathematical Modeling Of Neural Systems” Subjects and Themes:
- Subjects: ➤ Neural networks (Neurobiology) -- Computer simulation - Human information processing -- Computer simulation - Computational neuroscience
Edition Identifiers:
- Internet Archive ID: theoreticalneuro0000daya
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 1205.18 Mbs, the file-s for this book were downloaded 316 times, the file-s went public at Thu Oct 06 2022.
Available formats:
ACS Encrypted PDF - AVIF Thumbnails ZIP - Cloth Cover Detection Log - DjVuTXT - Djvu XML - Dublin Core - EPUB - Item Tile - JPEG Thumb - JSON - LCP Encrypted EPUB - LCP Encrypted PDF - Log - MARC - MARC Binary - Metadata - OCR Page Index - OCR Search Text - PNG - Page Numbers JSON - RePublisher Final Processing Log - RePublisher Initial Processing Log - Scandata - Single Page Original JP2 Tar - Single Page Processed JP2 ZIP - Text PDF - Title Page Detection Log - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Theoretical Neuroscience : Computational And Mathematical Modeling Of Neural Systems at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
25Artificial Neural Network Modeling For Predicting The Quality Of Water In The Sabak Bernam River
By Faqihah Affandi, Mohamad Faizal Abd Rahman, Adi Izhar Che Ani, Mohd Suhaimi Sulaiman
Water quality prediction is aided by environmental monitoring, ecological sustainability, and aquaculture. Traditional prediction approaches capture the nonlinearity and non-stationarity of water quality well. Due to their rapid progress, artificial neural networks (ANNs) have become a hotspot in water quality prediction in recent years. ANNs are utilised in this study to predict water quality using soft computing techniques. The feedforward network and the standard back-propagation method of Levenberg-Marquardt and scaled conjugate gradient learning algorithm were employed in this research. One hidden layer has been recommended for the modelling, with the number of hidden neurons set at 3, 24, and 49. For this analysis, six different testing percentages were used, and the output data can be categorised as '0' for clean water and '1' for polluted water. From the results, it can be shown that the most optimised model was from the model of trainlm with a testing percentage of 18% and with 3 number of neurons. This most optimised model obtains an accuracy of 91.7%, the best validation performance of 0.073346 with 24 epochs, and having a receiver operating characteristic (ROC) curve that is closer to the true positive rate compared to other samples.
“Artificial Neural Network Modeling For Predicting The Quality Of Water In The Sabak Bernam River” Metadata:
- Title: ➤ Artificial Neural Network Modeling For Predicting The Quality Of Water In The Sabak Bernam River
- Author: ➤ Faqihah Affandi, Mohamad Faizal Abd Rahman, Adi Izhar Che Ani, Mohd Suhaimi Sulaiman
“Artificial Neural Network Modeling For Predicting The Quality Of Water In The Sabak Bernam River” Subjects and Themes:
- Subjects: Artificial neural network - Levenberg Marquardt - Scale conjugate gradient - Total dissolved solid - Water quality
Edition Identifiers:
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 7.48 Mbs, the file-s for this book were downloaded 36 times, the file-s went public at Mon Nov 07 2022.
Available formats:
Archive BitTorrent - DjVuTXT - Djvu XML - Item Tile - Metadata - OCR Page Index - OCR Search Text - Page Numbers JSON - Scandata - Single Page Processed JP2 ZIP - Text PDF - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Artificial Neural Network Modeling For Predicting The Quality Of Water In The Sabak Bernam River at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
26Discriminative Neural Sentence Modeling By Tree-Based Convolution
By Lili Mou, Hao Peng, Ge Li, Yan Xu, Lu Zhang and Zhi Jin
This paper proposes a tree-based convolutional neural network (TBCNN) for discriminative sentence modeling. Our models leverage either constituency trees or dependency trees of sentences. The tree-based convolution process extracts sentences' structural features, and these features are aggregated by max pooling. Such architecture allows short propagation paths between the output layer and underlying feature detectors, which enables effective structural feature learning and extraction. We evaluate our models on two tasks: sentiment analysis and question classification. In both experiments, TBCNN outperforms previous state-of-the-art results, including existing neural networks and dedicated feature/rule engineering. We also make efforts to visualize the tree-based convolution process, shedding light on how our models work.
“Discriminative Neural Sentence Modeling By Tree-Based Convolution” Metadata:
- Title: ➤ Discriminative Neural Sentence Modeling By Tree-Based Convolution
- Authors: ➤ Lili MouHao PengGe LiYan XuLu ZhangZhi Jin
- Language: English
“Discriminative Neural Sentence Modeling By Tree-Based Convolution” Subjects and Themes:
- Subjects: Learning - Computing Research Repository - Computation and Language - Neural and Evolutionary Computing
Edition Identifiers:
- Internet Archive ID: arxiv-1504.01106
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 8.83 Mbs, the file-s for this book were downloaded 41 times, the file-s went public at Wed Jun 27 2018.
Available formats:
Abbyy GZ - Archive BitTorrent - DjVuTXT - Djvu XML - JPEG Thumb - Metadata - Scandata - Single Page Processed JP2 ZIP - Text PDF -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Discriminative Neural Sentence Modeling By Tree-Based Convolution at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
27Neural Discourse Modeling Of Conversations
By John M. Pierre, Mark Butler, Jacob Portnoff and Luis Aguilar
Deep neural networks have shown recent promise in many language-related tasks such as the modeling of conversations. We extend RNN-based sequence to sequence models to capture the long range discourse across many turns of conversation. We perform a sensitivity analysis on how much additional context affects performance, and provide quantitative and qualitative evidence that these models are able to capture discourse relationships across multiple utterances. Our results quantifies how adding an additional RNN layer for modeling discourse improves the quality of output utterances and providing more of the previous conversation as input also improves performance. By searching the generated outputs for specific discourse markers we show how neural discourse models can exhibit increased coherence and cohesion in conversations.
“Neural Discourse Modeling Of Conversations” Metadata:
- Title: ➤ Neural Discourse Modeling Of Conversations
- Authors: John M. PierreMark ButlerJacob PortnoffLuis Aguilar
“Neural Discourse Modeling Of Conversations” Subjects and Themes:
- Subjects: ➤ Computation and Language - Computing Research Repository - Neural and Evolutionary Computing
Edition Identifiers:
- Internet Archive ID: arxiv-1607.04576
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 0.34 Mbs, the file-s for this book were downloaded 24 times, the file-s went public at Fri Jun 29 2018.
Available formats:
Archive BitTorrent - Metadata - Text PDF -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Neural Discourse Modeling Of Conversations at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
28Joint Modeling Of Event Sequence And Time Series With Attentional Twin Recurrent Neural Networks
By Shuai Xiao, Junchi Yan, Mehrdad Farajtabar, Le Song, Xiaokang Yang and Hongyuan Zha
A variety of real-world processes (over networks) produce sequences of data whose complex temporal dynamics need to be studied. More especially, the event timestamps can carry important information about the underlying network dynamics, which otherwise are not available from the time-series evenly sampled from continuous signals. Moreover, in most complex processes, event sequences and evenly-sampled times series data can interact with each other, which renders joint modeling of those two sources of data necessary. To tackle the above problems, in this paper, we utilize the rich framework of (temporal) point processes to model event data and timely update its intensity function by the synergic twin Recurrent Neural Networks (RNNs). In the proposed architecture, the intensity function is synergistically modulated by one RNN with asynchronous events as input and another RNN with time series as input. Furthermore, to enhance the interpretability of the model, the attention mechanism for the neural point process is introduced. The whole model with event type and timestamp prediction output layers can be trained end-to-end and allows a black-box treatment for modeling the intensity. We substantiate the superiority of our model in synthetic data and three real-world benchmark datasets.
“Joint Modeling Of Event Sequence And Time Series With Attentional Twin Recurrent Neural Networks” Metadata:
- Title: ➤ Joint Modeling Of Event Sequence And Time Series With Attentional Twin Recurrent Neural Networks
- Authors: ➤ Shuai XiaoJunchi YanMehrdad FarajtabarLe SongXiaokang YangHongyuan Zha
“Joint Modeling Of Event Sequence And Time Series With Attentional Twin Recurrent Neural Networks” Subjects and Themes:
- Subjects: Learning - Computing Research Repository
Edition Identifiers:
- Internet Archive ID: arxiv-1703.08524
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 2.32 Mbs, the file-s for this book were downloaded 22 times, the file-s went public at Sat Jun 30 2018.
Available formats:
Archive BitTorrent - Metadata - Text PDF -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Joint Modeling Of Event Sequence And Time Series With Attentional Twin Recurrent Neural Networks at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
29NASA Technical Reports Server (NTRS) 20180000636: Using Neural Networks To Improve The Performance Of Radiative Transfer Modeling Used For Geometry Dependent Surface Lambertian-Equivalent Reflectivity Calculations
By NASA Technical Reports Server (NTRS)
Surface Lambertian-equivalent reflectivity (LER) is important for trace gas retrievals in the direct calculation of cloud fractions and indirect calculation of the air mass factor. Current trace gas retrievals use climatological surface LER's. Surface properties that impact the bidirectional reflectance distribution function (BRDF) as well as varying satellite viewing geometry can be important for retrieval of trace gases. Geometry Dependent LER (GLER) captures these effects with its calculation of sun normalized radiances (I/F) and can be used in current LER algorithms (Vasilkov et al. 2016). Pixel by pixel radiative transfer calculations are computationally expensive for large datasets. Modern satellite missions such as the Tropospheric Monitoring Instrument (TROPOMI) produce very large datasets as they take measurements at much higher spatial and spectral resolutions. Look up table (LUT) interpolation improves the speed of radiative transfer calculations but complexity increases for non-linear functions. Neural networks perform fast calculations and can accurately predict both non-linear and linear functions with little effort.
“NASA Technical Reports Server (NTRS) 20180000636: Using Neural Networks To Improve The Performance Of Radiative Transfer Modeling Used For Geometry Dependent Surface Lambertian-Equivalent Reflectivity Calculations” Metadata:
- Title: ➤ NASA Technical Reports Server (NTRS) 20180000636: Using Neural Networks To Improve The Performance Of Radiative Transfer Modeling Used For Geometry Dependent Surface Lambertian-Equivalent Reflectivity Calculations
- Author: ➤ NASA Technical Reports Server (NTRS)
- Language: English
“NASA Technical Reports Server (NTRS) 20180000636: Using Neural Networks To Improve The Performance Of Radiative Transfer Modeling Used For Geometry Dependent Surface Lambertian-Equivalent Reflectivity Calculations” Subjects and Themes:
- Subjects: ➤ NASA Technical Reports Server (NTRS) - 07ced2076c304faf96e437e67596fbd2 - 0cfbb5f25f8c4a6c88fdf4b578a4c61c - 1dcb3048abbf41edb6610d80c18c85fe - 35e3902b44174e38bc3118401b5aced8 - 65be156dfb0a4f1ea0303218688bc60e - 67348d1934c04e2cb8b802d5b31b091d - Deutsches Zentrum fuer Luft- und Raumfahrt e.V. - fa738a91785a4299ab2f4c67c35e8b3d - Fasnacht, Zachary - Greenbelt, MD, United States - Haffner, David P. - Joiner, Joanna - Krotkov, Nickolay - Lanham, MD, United States - Loyola, Diego - NASA Goddard Space Flight Center - Qin, Wenhan - RT Solutions, Inc. - Science Systems and Applications, Inc. - Spurr, Robert - Vasilkov, Alexander - Wessling, Germany
Edition Identifiers:
- Internet Archive ID: NASA_NTRS_Archive_20180000636
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 0.89 Mbs, the file-s for this book were downloaded 23 times, the file-s went public at Wed Jun 29 2022.
Available formats:
Archive BitTorrent - Metadata - Text PDF -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find NASA Technical Reports Server (NTRS) 20180000636: Using Neural Networks To Improve The Performance Of Radiative Transfer Modeling Used For Geometry Dependent Surface Lambertian-Equivalent Reflectivity Calculations at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
30Modeling Baseline Energy Using Artificial Neural Network: A Small Dataset Approach
By Wan Nazirah Wan Md Adnan, Nofri Yenita Dahlan, Ismail Musirin
In this work, baseline energy model development using Artificial Neural Network (ANN) with resampling techniques; Cross Validation (CV) and Bootstrap (BS) are presented. Resampling techniques are used to examine the ability of the ANN model to deal with a small dataset. Working days, class days and Cooling Degree Days (CDD) are used as ANN input meanwhile the ANN output is monthly electricity consumption. The coefficient of correlation (R) is used as performance function to evaluate the model accuracy. For this analysis, R is calculated for the entire data set (R_all) and separately for training set (R_train), validation set (R_valid) dan testing set (R_test). The closer R to 1, the higher similarities between targeted and predicted output. The total of two different models with several number of neurons are developed and compared. It can be concluded that all models are capable to train the network. Artificial Neural Network with Bootstrap Cross Validation technique (ANN-BSCV) outperforms Artificial Neural Network with Cross Validation technique (ANN-CV). The 3-6-1 ANN-BSCV, with R_train = 0.95668, R_valid = 0.97553, R_test = 0.85726 and R_all = 0.94079 is selected as the baseline energy model to predict energy consumption for Option C IPMVP.
“Modeling Baseline Energy Using Artificial Neural Network: A Small Dataset Approach” Metadata:
- Title: ➤ Modeling Baseline Energy Using Artificial Neural Network: A Small Dataset Approach
- Author: ➤ Wan Nazirah Wan Md Adnan, Nofri Yenita Dahlan, Ismail Musirin
- Language: English
“Modeling Baseline Energy Using Artificial Neural Network: A Small Dataset Approach” Subjects and Themes:
- Subjects: Baseline Energy Model - Artificial Neural Network - Cross Validation - Bootstrap - Small datase
Edition Identifiers:
- Internet Archive ID: ➤ 32-14501-modeling-baseline-edit-ity
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 12.50 Mbs, the file-s for this book were downloaded 135 times, the file-s went public at Mon Apr 05 2021.
Available formats:
Archive BitTorrent - DjVuTXT - Djvu XML - Item Tile - Metadata - OCR Page Index - OCR Search Text - Page Numbers JSON - Scandata - Single Page Processed JP2 ZIP - Text PDF - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Modeling Baseline Energy Using Artificial Neural Network: A Small Dataset Approach at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
31Modeling Of Artificial Neural Networks For Silicon Prediction In The Cast Iron Production Process
By Wandercleiton Cardoso, Renzo di Felice, Bruna Nunes dos Santos, Arthur Nascimento Schitine, Thiago Augusto Pires Machado, André Gustavo de Sousa Galdino, Pedro Vitor Morbach Dixini
The main way to produce cast iron is in the blast furnace. In the production of hot metal, the control of silicon is important. Alumina and silica react chemically with limestone and dolomite to form blast furnace slag. In this work, 12 artificial neural networks (ANNs) were modeled with different numbers of neurons in each hidden layer. The number of neurons varied between 10 and 200 neurons. ANNs were used to predict the silicon content of hot metal produced. The ANN with 30 neurons showed the best performance. In the test phase, the mathematical correlation was 97.5% and the mean square error (MSE) was 0.0006, and in the cross-validation phase, the mathematical correlation was 95.5% while the MSE was 0.00035.
“Modeling Of Artificial Neural Networks For Silicon Prediction In The Cast Iron Production Process” Metadata:
- Title: ➤ Modeling Of Artificial Neural Networks For Silicon Prediction In The Cast Iron Production Process
- Author: ➤ Wandercleiton Cardoso, Renzo di Felice, Bruna Nunes dos Santos, Arthur Nascimento Schitine, Thiago Augusto Pires Machado, André Gustavo de Sousa Galdino, Pedro Vitor Morbach Dixini
- Language: English
“Modeling Of Artificial Neural Networks For Silicon Prediction In The Cast Iron Production Process” Subjects and Themes:
- Subjects: Artificial neural network - Blast furnace - Silicon - Slag - Statistical analysis
Edition Identifiers:
- Internet Archive ID: 14-21505-1570759034
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 7.13 Mbs, the file-s for this book were downloaded 86 times, the file-s went public at Fri Aug 19 2022.
Available formats:
Archive BitTorrent - DjVuTXT - Djvu XML - Item Tile - Metadata - OCR Page Index - OCR Search Text - Page Numbers JSON - Scandata - Single Page Processed JP2 ZIP - Text PDF - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Modeling Of Artificial Neural Networks For Silicon Prediction In The Cast Iron Production Process at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
32Neural Profiles Of Emotion Processing And Working Memory: Modeling Development Across Adolescence Using Latent Transition Analysis
By Landry Goodgame Huffman and Assaf Oshri
Parenting behaviors are critical in shaping youths’ socioemotional and cognitive development, especially throughout childhood and during the transition to adolescence. Positive and supportive parenting behaviors both socialize effective emotion regulation and promote top-down executive functions such as working memory (Kerr et al., 2017; Schroeder & Kelly, 2009). Throughout late childhood and adolescence, emotion regulation and working memory undergo significant changes, not only as a result of the rearing environment but also due to ongoing brain development. Whereas some adolescents will follow normative trajectories of cognitive and emotional development, others may exhibit neurobiological vulnerabilities underlying processes that lead to later psychopathology (Beauchaine & McNulty, 2013). This data-driven study aims to: 1) derive latent profiles of neural function during working memory and implicit emotion processing in relevant ROIs, 2) identify transitions of profile membership across 24 months (Mage, baseline = 11, Mage, T2 = 13), and 3) characterize environmental predictors and socioemotional distal outcomes associated wth transitions between profiles. We will use longitudinal data from the ABCD project (NW1 = 11,854; NW5 = 10,414, NW7 = 6,251), including assessments of parenting at baseline, functional imaging at baseline and wave 5 (24 months post baseline), and psychopathology at baseline, wave 5, and wave 7 (36 months post baseline).
“Neural Profiles Of Emotion Processing And Working Memory: Modeling Development Across Adolescence Using Latent Transition Analysis” Metadata:
- Title: ➤ Neural Profiles Of Emotion Processing And Working Memory: Modeling Development Across Adolescence Using Latent Transition Analysis
- Authors: Landry Goodgame HuffmanAssaf Oshri
Edition Identifiers:
- Internet Archive ID: osf-registrations-uq5tw-v1
Downloads Information:
The book is available for download in "data" format, the size of the file-s is: 0.20 Mbs, the file-s for this book were downloaded 3 times, the file-s went public at Tue Nov 30 2021.
Available formats:
Archive BitTorrent - Metadata - ZIP -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Neural Profiles Of Emotion Processing And Working Memory: Modeling Development Across Adolescence Using Latent Transition Analysis at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
33Modeling Of Potato Slice Drying Process In A Microwave Dryer Using Artificial Neural Network And Machine Vision
Introduction Microwave drying compared to conventional hot air drying has many benefits to apply in food drying processes such as volumetric heating, high thermal efficiency, shorter drying time and improved product quality. In conventional microwave drying method, a fixed microwave power was used during the drying process. However, the water of the product evaporated and mass of product decreased over the time that resulted in microwave power density (MPD) increasing during the drying process. Increasing the power density, especially at the end of the process, sharply increased the product temperature. High temperature of products led to the deterioration of the product quality. Most research used variable microwave power program for preventing the risk of overheating and charring of product. The evaporation of the water causes the shrinkage of product. Therefore, many studies have used machine vision for measuring the shrinkage and this technology has been used in modeling and predicting the MC. Materials and Methods The fresh potato samples ( Solanum tuberosum cv. Santana) with 83% (w.b.) of initial MC were sliced into the chips of 5mm thickness. The developed drying systems consisted of microwave oven, lighting unit and imaging unit, temperature sensor, microwave power adjusting unit and a data acquisition unit (DAQ). A LabVIEW (V17.6, 2017) program was developed to integrate all measurements and adjusting the microwave power during the drying process. In this study, two sets of experiment with different aims have done. The first set of experiments was used for calculating the shrinkage by developed image processing algorithm and MC by offline mass measurement and then data sets were used to investigate the artificial neural networks (ANNs). The second set was used for evaluating the reliability of investigating models. The experiments, in the first set, were done with 8, 4 and 2.67 W g -1 . In the variable mode, the power varied in two/three steps with respect to the MC of samples during the drying process. Second set of experiments was done in two variable and constant power modes with 5 and 3 W g -1 . An image processing algorithm was developed to measure the shrinkage of potato slice during the drying process. In this study the feed forward ANN with back propagation algorithm was used. Two structures of ANN were used for modeling of MC. In the first model time and power density and the second model shrinkage and power density were used as input. Also moisture ratio was used as an output parameter in two models. Results and Discussion The obtained results indicated that for the first model the ANN with 2-3-1 structure had better results than others structures. This structure had 0.0713, 0.0337 and 0.0640 of RMSE and 0.9764, 0.9973 and 0.9800 of R for train, validation and test, respectively. For the second model, the 2-2-2-1 structure of ANN with 0.0780, 0.0816 and 0.0908 of RMSE and 0.9598, 0.9799 and 0.9746 of R for train, validation and test, respectively had better results than other structures. The evaluation of these models with a second data set showed that the second model with shrinkage and power density as input with 0.067 of RMSE and 0.994 of R had better results than the first model with 0.173 of RMSE and 0.961 of R. These consequences expressed that the second model had higher reliability for prediction of MC based on shrinkage and power density during drying process. Conclusion In this study, a microwave dryer was developed with a real-time image recording system and a microwave power level program during the drying process. Two ANN models were used for modeling of drying kinetics of the potato slices. Also image processing algorithm was investigated by measuring the shrinkage of potato slice during the drying process. The outcomes revealed that shrinkage as input in the ANN had great effect on MC prediction during the drying process.
“Modeling Of Potato Slice Drying Process In A Microwave Dryer Using Artificial Neural Network And Machine Vision” Metadata:
- Title: ➤ Modeling Of Potato Slice Drying Process In A Microwave Dryer Using Artificial Neural Network And Machine Vision
- Language: per
“Modeling Of Potato Slice Drying Process In A Microwave Dryer Using Artificial Neural Network And Machine Vision” Subjects and Themes:
- Subjects: Microwave power density - Moisture content kinetic - Shrinkage
Edition Identifiers:
- Internet Archive ID: ➤ jam-volume-11-issue-2-pages-263-275
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 9.55 Mbs, the file-s for this book were downloaded 23 times, the file-s went public at Tue May 09 2023.
Available formats:
Archive BitTorrent - DjVuTXT - Djvu XML - Item Tile - Metadata - OCR Page Index - OCR Search Text - Page Numbers JSON - Scandata - Single Page Processed JP2 ZIP - Text PDF - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Modeling Of Potato Slice Drying Process In A Microwave Dryer Using Artificial Neural Network And Machine Vision at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
34Modeling Of Performence Of An Artillery Rocket Using Neural Networks
By Om Prakash
Book Source: Digital Library of India Item 2015.225022 dc.contributor.author: Om Prakash dc.date.accessioned: 2015-07-10T15:28:14Z dc.date.available: 2015-07-10T15:28:14Z dc.date.digitalpublicationdate: 2005-09-08 dc.identifier.barcode: 5990010120112 dc.identifier.origpath: /rawdataupload/upload/0120/114 dc.identifier.copyno: 1 dc.identifier.uri: http://www.new.dli.ernet.in/handle/2015/225022 dc.description.scannerno: 15 dc.description.scanningcentre: IIIT, Allahabad dc.description.main: 1 dc.description.tagged: 0 dc.description.totalpages: 66 dc.format.mimetype: application/pdf dc.language.iso: English dc.publisher: Indian Institute Of Technology Kanpur dc.rights: Out_of_copyright dc.source.library: Indian Institute Of Technology Kanpur dc.subject.classification: Technology dc.subject.classification: Engineering. Technology In General dc.subject.classification: Mechanical Engineering In General. Nuclear Technology. Electrical Engineering. Machinery dc.title: Modeling Of Performence Of An Artillery Rocket Using Neural Networks
“Modeling Of Performence Of An Artillery Rocket Using Neural Networks” Metadata:
- Title: ➤ Modeling Of Performence Of An Artillery Rocket Using Neural Networks
- Author: Om Prakash
- Language: English
Edition Identifiers:
- Internet Archive ID: in.ernet.dli.2015.225022
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 72.32 Mbs, the file-s for this book were downloaded 154 times, the file-s went public at Wed Jan 25 2017.
Available formats:
Abbyy GZ - Additional Text PDF - Archive BitTorrent - DjVuTXT - Djvu XML - Image Container PDF - Item Tile - Metadata - Scandata - Single Page Processed JP2 ZIP -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Modeling Of Performence Of An Artillery Rocket Using Neural Networks at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
35Universal Phase Shifter Regulator System Modeling With Robust GPC Using Neural Networks For Compensation Power In Transmission Line
By International Journal of Power Electronics and Drive Systems
Electricity consumption is increasing gradually and this trend will continue in the future. In addition, rapid network control systems using the resources offered by power electronics and control microelectronics have been recently studied and developed, and are currently in normal application for some, for others, in pilot applications or as prototypes. This paper attempts to show that these systems are referred to by the general acronym flexible alternative current transmission systems (FACTS) similarly dethroned the traditional systems while offering better solutions and solving the energy quality problem such as the hybrid system (unified power flow controller (UPFC), or universal phase shifter regulator (UPSR)) which opens up new perspectives for more efficient operation of networks by continuous and rapid action on the various parameters of the network (voltage, phase shift, and impedance); thus, the power transits will be better controlled and the voltages better held, which will make it possible to increase the stability margins or tend towards the thermal limits of the lines. In this work, we used a classic control (PI-decoupled) and others while offering more flexibility of control thanks to the development of strategies identification/control based on generalized predictive control (GPC) with neural network to ensure robust control with advanced algorithms.
“Universal Phase Shifter Regulator System Modeling With Robust GPC Using Neural Networks For Compensation Power In Transmission Line” Metadata:
- Title: ➤ Universal Phase Shifter Regulator System Modeling With Robust GPC Using Neural Networks For Compensation Power In Transmission Line
- Author: ➤ International Journal of Power Electronics and Drive Systems
“Universal Phase Shifter Regulator System Modeling With Robust GPC Using Neural Networks For Compensation Power In Transmission Line” Subjects and Themes:
- Subjects: ➤ FACTS - Generalized predictive control - PI-decoupled - Recurrent neural network - Robustness - Stability - UPFC (UPSR)
Edition Identifiers:
- Internet Archive ID: ➤ 10.11591ijpeds.v13.i3.pp1448-1458
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 7.21 Mbs, the file-s for this book were downloaded 78 times, the file-s went public at Thu Oct 06 2022.
Available formats:
Archive BitTorrent - DjVuTXT - Djvu XML - Item Tile - Metadata - OCR Page Index - OCR Search Text - Page Numbers JSON - Scandata - Single Page Processed JP2 ZIP - Text PDF - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Universal Phase Shifter Regulator System Modeling With Robust GPC Using Neural Networks For Compensation Power In Transmission Line at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
36ERIC ED585240: Modeling Course Achievements Of Elementary Education Teacher Candidates With Artificial Neural Networks
By ERIC
In this study, it was aimed to predict elementary education teacher candidates' achievements in "Science and Technology Education I and II" courses by using artificial neural networks. It was also aimed to show the independent variables importance in the prediction. In the data set used in this study, variables of gender, type of education, field of study in high school and transcript information of 14 courses including end-of-term letter grades were collected. The fact that the artificial neural network performance in this study was R = 0.84 for the Science and Technology Education I course, and R = 0.84 for the Science and Technology Education II course shows that the network performance overlaps with the findings obtained from the related studies.
“ERIC ED585240: Modeling Course Achievements Of Elementary Education Teacher Candidates With Artificial Neural Networks” Metadata:
- Title: ➤ ERIC ED585240: Modeling Course Achievements Of Elementary Education Teacher Candidates With Artificial Neural Networks
- Author: ERIC
- Language: English
“ERIC ED585240: Modeling Course Achievements Of Elementary Education Teacher Candidates With Artificial Neural Networks” Subjects and Themes:
- Subjects: ➤ ERIC Archive - ERIC - Akgün, Ergün Demir, Metin Elementary School Teachers - Preservice Teachers - Artificial Intelligence - Science Education - Technology Education - Gender Differences - Intellectual Disciplines - Student Records - Grades (Scholastic) - Foreign Countries - Academic Achievement - Research Methodology - High School Students
Edition Identifiers:
- Internet Archive ID: ERIC_ED585240
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 15.94 Mbs, the file-s for this book were downloaded 46 times, the file-s went public at Thu May 25 2023.
Available formats:
Archive BitTorrent - DjVuTXT - Djvu XML - Item Tile - Metadata - OCR Page Index - OCR Search Text - Page Numbers JSON - Scandata - Single Page Processed JP2 ZIP - Text PDF - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find ERIC ED585240: Modeling Course Achievements Of Elementary Education Teacher Candidates With Artificial Neural Networks at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
37Modeling In The Neurosciences : From Ionic Channels To Neural Networks
In this study, it was aimed to predict elementary education teacher candidates' achievements in "Science and Technology Education I and II" courses by using artificial neural networks. It was also aimed to show the independent variables importance in the prediction. In the data set used in this study, variables of gender, type of education, field of study in high school and transcript information of 14 courses including end-of-term letter grades were collected. The fact that the artificial neural network performance in this study was R = 0.84 for the Science and Technology Education I course, and R = 0.84 for the Science and Technology Education II course shows that the network performance overlaps with the findings obtained from the related studies.
“Modeling In The Neurosciences : From Ionic Channels To Neural Networks” Metadata:
- Title: ➤ Modeling In The Neurosciences : From Ionic Channels To Neural Networks
- Language: English
“Modeling In The Neurosciences : From Ionic Channels To Neural Networks” Subjects and Themes:
- Subjects: ➤ Neurons -- Computer simulation - Neurons -- Mathematical models - Neural networks (Neurobiology) - Computational neuroscience - Models, Neurological - Computer Simulation - Neurons -- physiology - Neurosciences -- methods
Edition Identifiers:
- Internet Archive ID: modelinginneuros0000unse
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 1052.46 Mbs, the file-s for this book were downloaded 41 times, the file-s went public at Wed Apr 29 2020.
Available formats:
ACS Encrypted EPUB - ACS Encrypted PDF - Abbyy GZ - Cloth Cover Detection Log - DjVuTXT - Djvu XML - Dublin Core - EPUB - Item Tile - JPEG Thumb - JSON - LCP Encrypted EPUB - LCP Encrypted PDF - Log - MARC - MARC Binary - Metadata - OCR Page Index - OCR Search Text - PNG - Page Numbers JSON - Scandata - Single Page Original JP2 Tar - Single Page Processed JP2 ZIP - Text PDF - Title Page Detection Log - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Modeling In The Neurosciences : From Ionic Channels To Neural Networks at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
38Interpretable Nonlinear Dynamic Modeling Of Neural Trajectories
By Yuan Zhao and Il Memming Park
A central challenge in neuroscience is understanding how neural system implements computation through its dynamics. We propose a nonlinear time series model aimed at characterizing interpretable dynamics from neural trajectories. Our model assumes low-dimensional continuous dynamics in a finite volume. It incorporates a prior assumption about globally contractional dynamics to avoid overly enthusiastic extrapolation outside of the support of observed trajectories. We show that our model can recover qualitative features of the phase portrait such as attractors, slow points, and bifurcations, while also producing reliable long-term future predictions in a variety of dynamical models and in real neural data.
“Interpretable Nonlinear Dynamic Modeling Of Neural Trajectories” Metadata:
- Title: ➤ Interpretable Nonlinear Dynamic Modeling Of Neural Trajectories
- Authors: Yuan ZhaoIl Memming Park
“Interpretable Nonlinear Dynamic Modeling Of Neural Trajectories” Subjects and Themes:
- Subjects: Quantitative Biology - Quantitative Methods - Neurons and Cognition
Edition Identifiers:
- Internet Archive ID: arxiv-1608.06546
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 5.33 Mbs, the file-s for this book were downloaded 17 times, the file-s went public at Fri Jun 29 2018.
Available formats:
Archive BitTorrent - Metadata - Text PDF -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Interpretable Nonlinear Dynamic Modeling Of Neural Trajectories at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
39Efficient Transfer Learning Schemes For Personalized Language Modeling Using Recurrent Neural Network
By Seunghyun Yoon, Hyeongu Yun, Yuna Kim, Gyu-tae Park and Kyomin Jung
In this paper, we propose an efficient transfer leaning methods for training a personalized language model using a recurrent neural network with long short-term memory architecture. With our proposed fast transfer learning schemes, a general language model is updated to a personalized language model with a small amount of user data and a limited computing resource. These methods are especially useful for a mobile device environment while the data is prevented from transferring out of the device for privacy purposes. Through experiments on dialogue data in a drama, it is verified that our transfer learning methods have successfully generated the personalized language model, whose output is more similar to the personal language style in both qualitative and quantitative aspects.
“Efficient Transfer Learning Schemes For Personalized Language Modeling Using Recurrent Neural Network” Metadata:
- Title: ➤ Efficient Transfer Learning Schemes For Personalized Language Modeling Using Recurrent Neural Network
- Authors: Seunghyun YoonHyeongu YunYuna KimGyu-tae ParkKyomin Jung
“Efficient Transfer Learning Schemes For Personalized Language Modeling Using Recurrent Neural Network” Subjects and Themes:
Edition Identifiers:
- Internet Archive ID: arxiv-1701.03578
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 0.13 Mbs, the file-s for this book were downloaded 20 times, the file-s went public at Sat Jun 30 2018.
Available formats:
Archive BitTorrent - Metadata - Text PDF -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Efficient Transfer Learning Schemes For Personalized Language Modeling Using Recurrent Neural Network at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
40Abstractive Headline Generation For Spoken Content By Attentive Recurrent Neural Networks With ASR Error Modeling
By Lang-Chi Yu, Hung-yi Lee and Lin-shan Lee
Headline generation for spoken content is important since spoken content is difficult to be shown on the screen and browsed by the user. It is a special type of abstractive summarization, for which the summaries are generated word by word from scratch without using any part of the original content. Many deep learning approaches for headline generation from text document have been proposed recently, all requiring huge quantities of training data, which is difficult for spoken document summarization. In this paper, we propose an ASR error modeling approach to learn the underlying structure of ASR error patterns and incorporate this model in an Attentive Recurrent Neural Network (ARNN) architecture. In this way, the model for abstractive headline generation for spoken content can be learned from abundant text data and the ASR data for some recognizers. Experiments showed very encouraging results and verified that the proposed ASR error model works well even when the input spoken content is recognized by a recognizer very different from the one the model learned from.
“Abstractive Headline Generation For Spoken Content By Attentive Recurrent Neural Networks With ASR Error Modeling” Metadata:
- Title: ➤ Abstractive Headline Generation For Spoken Content By Attentive Recurrent Neural Networks With ASR Error Modeling
- Authors: Lang-Chi YuHung-yi LeeLin-shan Lee
“Abstractive Headline Generation For Spoken Content By Attentive Recurrent Neural Networks With ASR Error Modeling” Subjects and Themes:
Edition Identifiers:
- Internet Archive ID: arxiv-1612.08375
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 0.34 Mbs, the file-s for this book were downloaded 24 times, the file-s went public at Fri Jun 29 2018.
Available formats:
Archive BitTorrent - Metadata - Text PDF -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Abstractive Headline Generation For Spoken Content By Attentive Recurrent Neural Networks With ASR Error Modeling at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
41Digital Mental Health Screening Through Game: Identification Of Reinforcement Learning Characteristics With Artificial Neural Network Modeling
By Yul HR Kang and Sungji Wang
This study aims to develop a digital mental health screening method by analyzing reinforcement learning patterns through an artificial neural network model, investigating the associations with mental health.
“Digital Mental Health Screening Through Game: Identification Of Reinforcement Learning Characteristics With Artificial Neural Network Modeling” Metadata:
- Title: ➤ Digital Mental Health Screening Through Game: Identification Of Reinforcement Learning Characteristics With Artificial Neural Network Modeling
- Authors: Yul HR KangSungji Wang
Edition Identifiers:
- Internet Archive ID: osf-registrations-hybrz-v1
Downloads Information:
The book is available for download in "data" format, the size of the file-s is: 0.29 Mbs, the file-s for this book were downloaded 1 times, the file-s went public at Wed Mar 12 2025.
Available formats:
Archive BitTorrent - Metadata - ZIP -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Digital Mental Health Screening Through Game: Identification Of Reinforcement Learning Characteristics With Artificial Neural Network Modeling at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
42Chapter Indoor Trajectory Reconstruction Using Building Information Modeling And Graph Neural Networks
Trajectory reconstruction of pedestrian is of paramount importance to understand crowd dynamics and human movement pattern, which will provide insights to improve building design, facility management and route planning. Camera-based tracking methods have been widely explored with the rapid development of deep learning techniques. When moving to indoor environment, many challenges occur, including occlusions, complex environments and limited camera placement and coverage. Therefore, we propose a novel indoor trajectory reconstruction method using building information modeling (BIM) and graph neural network (GNN). A spatial graph representation is proposed for indoor environment to capture the spatial relationships of indoor areas and monitoring points. Closed circuit television (CCTV) system is integrated with BIM model through camera registration. Pedestrian simulation is conducted based on the BIM model to simulate the pedestrian movement in the considered indoor environment. The simulation results are embedded into the spatial graph for training of GNN. The indoor trajectory reconstruction is implemented as GNN conducts edge classification on the spatial graph
“Chapter Indoor Trajectory Reconstruction Using Building Information Modeling And Graph Neural Networks” Metadata:
- Title: ➤ Chapter Indoor Trajectory Reconstruction Using Building Information Modeling And Graph Neural Networks
- Language: English
Edition Identifiers:
- Internet Archive ID: oapen-20.500.12657-89043
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 11.04 Mbs, the file-s for this book were downloaded 10 times, the file-s went public at Tue May 28 2024.
Available formats:
Archive BitTorrent - DjVuTXT - Djvu XML - Item Tile - Metadata - OCR Page Index - OCR Search Text - Page Numbers JSON - Scandata - Single Page Processed JP2 ZIP - Text PDF - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Chapter Indoor Trajectory Reconstruction Using Building Information Modeling And Graph Neural Networks at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
43In Vitro Modeling Of The Neurovascular Environment By Coculturing Adult Human Brain Endothelial Cells With Human Neural Stem Cells.
By Chou, Chung-Hsing, Sinden, John D., Couraud, Pierre-Olivier and Modo, Michel
This article is from PLoS ONE , volume 9 . Abstract Brain and vascular cells form a functionally integrated signalling network that is known as the neurovascular unit (NVU). The signalling (autocrine, paracrine and juxtacrine) between different elements of this unit, especially in humans, is difficult to disentangle in vivo. Developing representative in vitro models is therefore essential to better understand the cellular interactions that govern the neurovascular environment. We here describe a novel approach to assay these cellular interactions by combining a human adult cerebral microvascular endothelial cell line (hCMEC/D3) with a fetal ganglionic eminence-derived neural stem cell (hNSC) line. These cell lines provide abundant homogeneous populations of cells to produce a consistently reproducible in vitro model of endothelial morphogenesis and the ensuing NVU. Vasculature-like structures (VLS) interspersed with patches of differentiating neural cells only occurred when hNSCs were seeded onto a differentiated endothelium. These VLS emerged within 3 days of coculture and by day 6 were stabilizing. After 7 days of coculture, neuronal differentiation of hNSCs was increased 3-fold, but had no significant effect on astrocyte or oligodendrocyte differentiation. ZO1, a marker of adherens and tight junctions, was highly expressed in both undifferentiated and differentiated endothelial cells, but the adherens junction markers CD31 and VE-cadherin were significantly reduced in coculture by approximately 20%. A basement membrane, consisting of laminin, vitronectin, and collagen I and IV, separated the VLS from neural patches. This simple assay can assist in elucidating the cellular and molecular signaling involved in the formation of VLS, as well as the enhancement of neuronal differentiation through endothelial signaling.
“In Vitro Modeling Of The Neurovascular Environment By Coculturing Adult Human Brain Endothelial Cells With Human Neural Stem Cells.” Metadata:
- Title: ➤ In Vitro Modeling Of The Neurovascular Environment By Coculturing Adult Human Brain Endothelial Cells With Human Neural Stem Cells.
- Authors: Chou, Chung-HsingSinden, John D.Couraud, Pierre-OlivierModo, Michel
- Language: English
Edition Identifiers:
- Internet Archive ID: pubmed-PMC4154686
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 17.33 Mbs, the file-s for this book were downloaded 86 times, the file-s went public at Sat Oct 04 2014.
Available formats:
Abbyy GZ - Animated GIF - Archive BitTorrent - DjVu - DjVuTXT - Djvu XML - Item Tile - JSON - Metadata - Scandata - Single Page Processed JP2 ZIP - Text PDF -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find In Vitro Modeling Of The Neurovascular Environment By Coculturing Adult Human Brain Endothelial Cells With Human Neural Stem Cells. at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
44Modeling And Prediction Of Cytotoxicity Of Artemisinin For Treatment Of The Breast Cancer By Using Artificial Neural Networks.
By Qaderi, Abdolhossein, Dadgar, Neda, Mansouri, Hamidreza, Alavi, Seyed Ebrahim, Esfahani, Maedeh Koohi Moftakhari and Akbarzadeh, Azim
This article is from SpringerPlus , volume 2 . Abstract While artemisinin is known as anticancer medication with favorable remedial effects, its side effects must not be neglected. In order to reduce such side effects and increase artemisinin therapeutic index, nano technology has been considered as a new approach. Liposome preparation is supposed to be one of the new methods of drug delivery. To prepare the desired nanoliposome, certain proportions of phosphatidylcholine, cholesterol and artemisinin are mixed together. Besides, in order to achieve more stability, the formulation was pegylated by polyethylene glycol 2000 (PEG 2000). Mean diameter of nanoliposomes was determined by means of Zeta sizer. Encapsulation was calculated 96.02% in nanoliposomal and 91.62% in pegylated formulation. Compared to pegylated formulation, the percent of released drug in nanoliposomal formulation was more. In addition, this study reveals that cytotoxicity effect of pegylated nanoliposomal artemisinin was more than nanoliposomal artemisinin. Since artificial neural network shows high possibility of nonlinear modulation, it is used to predict cytotoxicity effect in this study, which can precisely indicate the cytotoxicity and IC50 of anticancer drugs.
“Modeling And Prediction Of Cytotoxicity Of Artemisinin For Treatment Of The Breast Cancer By Using Artificial Neural Networks.” Metadata:
- Title: ➤ Modeling And Prediction Of Cytotoxicity Of Artemisinin For Treatment Of The Breast Cancer By Using Artificial Neural Networks.
- Authors: ➤ Qaderi, AbdolhosseinDadgar, NedaMansouri, HamidrezaAlavi, Seyed EbrahimEsfahani, Maedeh Koohi MoftakhariAkbarzadeh, Azim
- Language: English
Edition Identifiers:
- Internet Archive ID: pubmed-PMC3727081
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 2.94 Mbs, the file-s for this book were downloaded 147 times, the file-s went public at Tue Oct 28 2014.
Available formats:
Abbyy GZ - Animated GIF - Archive BitTorrent - DjVu - DjVuTXT - Djvu XML - Item Tile - JSON - Metadata - Scandata - Single Page Processed JP2 ZIP - Text PDF -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Modeling And Prediction Of Cytotoxicity Of Artemisinin For Treatment Of The Breast Cancer By Using Artificial Neural Networks. at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
45Modeling Of Confined Circular Concrete Columns Wrapped By Fiber Reinforced Polymer Using Artificial Neural Network
By Mahdi A. Abbaszadeh
This study is aimed to explore using an artificial neural network method to anticipate the confined compressive strength and its corresponding strain for the circular concrete columns wrapped with FRP sheets. 58 experimental data of circular concrete columns tested under concentric loading were collected from the literature. The experimental data is used to train and test the neural network. A comparative study was also carried out between the neural network model and the other existing models. It was found that the fundamental behavior of confined concrete columns can logically be captured by the neural network model. Besides, the neural network approach provided better results than the analytical and experimental models. The neural network-based model with R 2 equal to 0.993 and 0.991 for training and testing the compressive strength, respectively, shows that the presented model is a practical method to predict the confinement behavior of concrete columns wrapped with FRP since it provides instantaneous result once it is appropriately trained and tested.
“Modeling Of Confined Circular Concrete Columns Wrapped By Fiber Reinforced Polymer Using Artificial Neural Network” Metadata:
- Title: ➤ Modeling Of Confined Circular Concrete Columns Wrapped By Fiber Reinforced Polymer Using Artificial Neural Network
- Author: Mahdi A. Abbaszadeh
- Language: English
“Modeling Of Confined Circular Concrete Columns Wrapped By Fiber Reinforced Polymer Using Artificial Neural Network” Subjects and Themes:
- Subjects: Concrete columns - CFRP - Confinement - Artificial neural networks - Models
Edition Identifiers:
- Internet Archive ID: ➤ scce-volume-4-issue-4-pages-61-78
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 14.48 Mbs, the file-s for this book were downloaded 67 times, the file-s went public at Mon Mar 13 2023.
Available formats:
Archive BitTorrent - DjVuTXT - Djvu XML - Item Tile - Metadata - OCR Page Index - OCR Search Text - Page Numbers JSON - Scandata - Single Page Processed JP2 ZIP - Text PDF - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Modeling Of Confined Circular Concrete Columns Wrapped By Fiber Reinforced Polymer Using Artificial Neural Network at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
46Modeling Quantum Mechanical Observers Via Neural-Glial Networks
By Eiji Konishi
We investigate the theory of observers in the quantum mechanical world by using a novel model of the human brain which incorporates the glial network into the Hopfield model of the neural network. Our model is based on a microscopic construction of a quantum Hamiltonian of the synaptic junctions. Using the Eguchi-Kawai large N reduction, we show that, when the number of neurons and astrocytes is exponentially large, the degrees of freedom of the dynamics of the neural and glial networks can be completely removed and, consequently, that the retention time of the superposition of the wave functions in the brain is as long as that of the microscopic quantum system of pre-synaptics sites. Based on this model, the classical information entropy of the neural-glial network is introduced. Using this quantity, we propose a criterion for the brain to be a quantum mechanical observer.
“Modeling Quantum Mechanical Observers Via Neural-Glial Networks” Metadata:
- Title: ➤ Modeling Quantum Mechanical Observers Via Neural-Glial Networks
- Author: Eiji Konishi
Edition Identifiers:
- Internet Archive ID: arxiv-1005.5430
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 13.63 Mbs, the file-s for this book were downloaded 86 times, the file-s went public at Fri Jul 19 2013.
Available formats:
Abbyy GZ - Animated GIF - Archive BitTorrent - DjVu - DjVuTXT - Djvu XML - Item Tile - Metadata - Scandata - Single Page Processed JP2 ZIP - Text PDF -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Modeling Quantum Mechanical Observers Via Neural-Glial Networks at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
47A Model Of The Peripheral Auditory System - A Case Study In Neural Modeling
By Weiss, T. F
Model of peripheral auditory system - case study in neural modeling
“A Model Of The Peripheral Auditory System - A Case Study In Neural Modeling” Metadata:
- Title: ➤ A Model Of The Peripheral Auditory System - A Case Study In Neural Modeling
- Author: Weiss, T. F
- Language: English
“A Model Of The Peripheral Auditory System - A Case Study In Neural Modeling” Subjects and Themes:
- Subjects: AUDITORY STIMULI - COCHLEA - PERIPHERAL NERVOUS SYSTEM - AUDITORY STIMULUS
Edition Identifiers:
- Internet Archive ID: nasa_techdoc_19650025618
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 8.19 Mbs, the file-s for this book were downloaded 301 times, the file-s went public at Thu Jun 17 2010.
Available formats:
Abbyy GZ - Animated GIF - Archive BitTorrent - DjVu - DjVuTXT - Djvu XML - Item Tile - Metadata - Scandata - Single Page Processed JP2 ZIP - Text PDF -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find A Model Of The Peripheral Auditory System - A Case Study In Neural Modeling at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
48DTIC ADA282793: Neural Networks Modeling For Yield Enhancement In Semiconductor Manufacturing
By Defense Technical Information Center
Major tasks planned during the first period of the research project have been the analysis of data and evaluation of its statistical properties. Selection of feasible neural network architectures and their feasibility study have been pursued. Also, development of data manipulation software has been facilitated during the initial phase of the project work for the purpose of properly interfacing data with the neural network models
“DTIC ADA282793: Neural Networks Modeling For Yield Enhancement In Semiconductor Manufacturing” Metadata:
- Title: ➤ DTIC ADA282793: Neural Networks Modeling For Yield Enhancement In Semiconductor Manufacturing
- Author: ➤ Defense Technical Information Center
- Language: English
“DTIC ADA282793: Neural Networks Modeling For Yield Enhancement In Semiconductor Manufacturing” Subjects and Themes:
- Subjects: ➤ DTIC Archive - Zurada, Jacek M - LOUISVILLE UNIV KY - *NEURAL NETS - *MANUFACTURING - *FABRICATION - *SEMICONDUCTORS - INPUT - DATA MANAGEMENT - INTERFACES - GALLIUM ARSENIDES - STATISTICAL DATA - FEASIBILITY STUDIES - WAFERS
Edition Identifiers:
- Internet Archive ID: DTIC_ADA282793
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 16.29 Mbs, the file-s for this book were downloaded 79 times, the file-s went public at Mon Mar 19 2018.
Available formats:
Abbyy GZ - Archive BitTorrent - DjVuTXT - Djvu XML - Item Tile - Metadata - OCR Page Index - OCR Search Text - Page Numbers JSON - Scandata - Single Page Processed JP2 ZIP - Text PDF - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find DTIC ADA282793: Neural Networks Modeling For Yield Enhancement In Semiconductor Manufacturing at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
49DTIC ADA283227: Artificial Neural Network Modeling Of Damaged Aircraft
By Defense Technical Information Center
Aircraft design and control techniques rely on the proper modeling of the aircraft's equations of motion. Many of the variables used in these equations are aerodynamic coefficients which are obtained from scale models in wind tunnel tests. In order to model damaged aircraft, every aerodynamic coefficient must be determined for every possible damage mechanism in every flight condition. Designing a controller for a damaged aircraft is particularly burdensome because knowledge of the effect of each damage mechanism on the model is required before the controller can be designed. Also, a monitoring system must be employed to decide when and how much damage has occurred in order to re configure the controller. Recent advances in artificial intelligence have made parallel distributed processors (artificial neural networks) feasible. Modeled on the human brain, the artificial neural network's strength lies in its ability to generalize from a given model. This thesis examines the robustness of the artificial neural network as a model for damaged aircraft.
“DTIC ADA283227: Artificial Neural Network Modeling Of Damaged Aircraft” Metadata:
- Title: ➤ DTIC ADA283227: Artificial Neural Network Modeling Of Damaged Aircraft
- Author: ➤ Defense Technical Information Center
- Language: English
“DTIC ADA283227: Artificial Neural Network Modeling Of Damaged Aircraft” Subjects and Themes:
- Subjects: ➤ DTIC Archive - Brunger, Clifford A - NAVAL POSTGRADUATE SCHOOL MONTEREY CA - *NEURAL NETS - *EQUATIONS OF MOTION - *DAMAGE ASSESSMENT - *AIRCRAFT MODELS - TEST AND EVALUATION - AIRCRAFT - BRAIN - MOTION - VARIABLES - COEFFICIENTS - AERODYNAMICS - WIND TUNNELS - ARTIFICIAL INTELLIGENCE - WIND TUNNEL TESTS - FLIGHT - THESES - HUMANS - MONITORING - SCALE MODELS - INTELLIGENCE - CONTROL
Edition Identifiers:
- Internet Archive ID: DTIC_ADA283227
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 47.17 Mbs, the file-s for this book were downloaded 73 times, the file-s went public at Mon Mar 19 2018.
Available formats:
Abbyy GZ - Archive BitTorrent - DjVuTXT - Djvu XML - JPEG Thumb - Metadata - OCR Page Index - OCR Search Text - Page Numbers JSON - Scandata - Single Page Processed JP2 ZIP - Text PDF - chOCR - hOCR -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find DTIC ADA283227: Artificial Neural Network Modeling Of Damaged Aircraft at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
50Neural Circuits For Peristaltic Wave Propagation In Crawling Drosophila Larvae: Analysis And Modeling.
By Gjorgjieva, Julijana, Berni, Jimena, Evers, Jan Felix and Eglen, Stephen J.
This article is from Frontiers in Computational Neuroscience , volume 7 . Abstract Drosophila larvae crawl by peristaltic waves of muscle contractions, which propagate along the animal body and involve the simultaneous contraction of the left and right side of each segment. Coordinated propagation of contraction does not require sensory input, suggesting that movement is generated by a central pattern generator (CPG). We characterized crawling behavior of newly hatched Drosophila larvae by quantifying timing and duration of segmental boundary contractions. We developed a CPG network model that recapitulates these patterns based on segmentally repeated units of excitatory and inhibitory (EI) neuronal populations coupled with immediate neighboring segments. A single network with symmetric coupling between neighboring segments succeeded in generating both forward and backward propagation of activity. The CPG network was robust to changes in amplitude and variability of connectivity strength. Introducing sensory feedback via “stretch-sensitive” neurons improved wave propagation properties such as speed of propagation and segmental contraction duration as observed experimentally. Sensory feedback also restored propagating activity patterns when an inappropriately tuned CPG network failed to generate waves. Finally, in a two-sided CPG model we demonstrated that two types of connectivity could synchronize the activity of two independent networks: connections from excitatory neurons on one side to excitatory contralateral neurons (E to E), and connections from inhibitory neurons on one side to excitatory contralateral neurons (I to E). To our knowledge, such I to E connectivity has not yet been found in any experimental system; however, it provides the most robust mechanism to synchronize activity between contralateral CPGs in our model. Our model provides a general framework for studying the conditions under which a single locally coupled network generates bilaterally synchronized and longitudinally propagating waves in either direction.
“Neural Circuits For Peristaltic Wave Propagation In Crawling Drosophila Larvae: Analysis And Modeling.” Metadata:
- Title: ➤ Neural Circuits For Peristaltic Wave Propagation In Crawling Drosophila Larvae: Analysis And Modeling.
- Authors: Gjorgjieva, JulijanaBerni, JimenaEvers, Jan FelixEglen, Stephen J.
- Language: English
Edition Identifiers:
- Internet Archive ID: pubmed-PMC3616270
Downloads Information:
The book is available for download in "texts" format, the size of the file-s is: 38.74 Mbs, the file-s for this book were downloaded 87 times, the file-s went public at Mon Oct 27 2014.
Available formats:
Abbyy GZ - Animated GIF - Archive BitTorrent - DjVu - DjVuTXT - Djvu XML - JPEG Thumb - JSON - Metadata - Scandata - Single Page Processed JP2 ZIP - Text PDF -
Related Links:
- Whefi.com: Download
- Whefi.com: Review - Coverage
- Internet Archive: Details
- Internet Archive Link: Downloads
Online Marketplaces
Find Neural Circuits For Peristaltic Wave Propagation In Crawling Drosophila Larvae: Analysis And Modeling. at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
Source: LibriVox
LibriVox Search Results
Available audio books for downloads from LibriVox
1Stories of King Arthur's Knights Told to the Children
By Mary Esther Miller MacGregor

A collection of Arthurian tales retold for children. (Summary by Joy Chan)
“Stories of King Arthur's Knights Told to the Children” Metadata:
- Title: ➤ Stories of King Arthur's Knights Told to the Children
- Author: Mary Esther Miller MacGregor
- Language: English
- Publish Date: 1905
Edition Specifications:
- Format: Audio
- Number of Sections: 7
- Total Time: 1:53:24
Edition Identifiers:
- libriVox ID: 3271
Links and information:
Online Access
Download the Audio Book:
- File Name: kingarthursknights_jc_librivox
- File Format: zip
- Total Time: 1:53:24
- Download Link: Download link
Online Marketplaces
Find Stories of King Arthur's Knights Told to the Children at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
2Black-Bearded Barbarian
By Mary Esther Miller MacGregor

A fictionalized biography of George Mackay (1844-1901), an influential Presbyterian missionary in northern Taiwan. (Summary by Edmund Bloxam)
“Black-Bearded Barbarian” Metadata:
- Title: Black-Bearded Barbarian
- Author: Mary Esther Miller MacGregor
- Language: English
- Publish Date: 1912
Edition Specifications:
- Format: Audio
- Number of Sections: 11
- Total Time: 4:26:46
Edition Identifiers:
- libriVox ID: 7048
Links and information:
Online Access
Download the Audio Book:
- File Name: blackbeardedbarbarian_1211_librivox
- File Format: zip
- Total Time: 4:26:46
- Download Link: Download link
Online Marketplaces
Find Black-Bearded Barbarian at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
3History of Burke and Hare, And of the Resurrectionist Times
By George MacGregor

From the preface: ".....of all the criminal events that have occurred in Scotland, few have excited so deep, widespread, and lasting an interest as those which took place during what have been called the Resurrectionist Times, and notably, the dreadful series of murders perpetrated in the name of anatomical science by Burke and Hare. In the preparation of this work the Author has had a double purpose before him. He has sought not only to record faithfully the lives and crimes of Burke and Hare, and their two female associates, but also to present a general view of the Resurrectionist movement from its earliest inception until the passing of the Anatomy Act in 1832, when the violation of the sepulchres of the dead for scientific purposes was rendered unnecessary, and absolutely inexcusable."
“History of Burke and Hare, And of the Resurrectionist Times” Metadata:
- Title: ➤ History of Burke and Hare, And of the Resurrectionist Times
- Author: George MacGregor
- Language: English
- Publish Date: 1884
Edition Specifications:
- Format: Audio
- Number of Sections: 48
- Total Time: 12:27:39
Edition Identifiers:
- libriVox ID: 14361
Links and information:
Online Access
Download the Audio Book:
- File Name: historyofburkeandhare_2002_librivox
- File Format: zip
- Total Time: 12:27:39
- Download Link: Download link
Online Marketplaces
Find History of Burke and Hare, And of the Resurrectionist Times at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
4Stories of Siegfried, Told to the Children
By Mary Esther Miller MacGregor

Dear Denis,—Here is a story that I found in an old German poem called the Nibelungenlied. The poem is full of strange adventure, adventure of both tiny dwarf and stalwart mortal. <br><br> Some of these adventures will fill this little book, and already I can see you sitting in the nursery as you read them. <br><br> The door is opened but you do not look up. 'Denis! Denis!' You are called, but you do not hear, for you are not really in the nursery any longer. <br><br> You have wandered away to Nibelheim, the home of the strange little people of whom you are reading, and you have ears only for the harsh voices of the tiny Nibelungs, eyes only for their odd, wrinkled faces. <br><br> Siegfried is the merry hero of the Nibelungenlied. I wonder will you think him as brave as French Roland or as chivalrous as your English favourite, Guy of Warwick? Yet even should you think the German hero brave and chivalrous as these, I can hardly believe you will read and re-read this little book as often as you read and re-read the volumes which told you about your French and English heroes.—Yours affectionately, <br><br> MARY MACGREGOR (summary from the text)
“Stories of Siegfried, Told to the Children” Metadata:
- Title: ➤ Stories of Siegfried, Told to the Children
- Author: Mary Esther Miller MacGregor
- Language: English
- Publish Date: 0
Edition Specifications:
- Format: Audio
- Number of Sections: 16
- Total Time: 01:59:58
Edition Identifiers:
- libriVox ID: 15299
Links and information:
Online Access
Download the Audio Book:
- File Name: storiesofsiegfried_2208_librivox
- File Format: zip
- Total Time: 01:59:58
- Download Link: Download link
Online Marketplaces
Find Stories of Siegfried, Told to the Children at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
5Story of Greece: Told to Boys and Girls
By Mary Esther Miller MacGregor

A retelling of Greek myths, history and stories aimed at children.
“Story of Greece: Told to Boys and Girls” Metadata:
- Title: ➤ Story of Greece: Told to Boys and Girls
- Author: Mary Esther Miller MacGregor
- Language: English
- Publish Date: 0
Edition Specifications:
- Format: Audio
- Number of Sections: 104
- Total Time: 11:43:33
Edition Identifiers:
- libriVox ID: 17027
Links and information:
Online Access
Download the Audio Book:
- File Name: story_of_greece_2203_librivox
- File Format: zip
- Total Time: 11:43:33
- Download Link: Download link
Online Marketplaces
Find Story of Greece: Told to Boys and Girls at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
6Stories from the Ballads, Told to the Children
By Mary Esther Miller MacGregor

Listen, children, for you will wish to hear where I found the tales which I have told you in this little book. It is long, oh! so long ago, that they were sung up hill and down dale by wandering singers who soon became known all over the country as minstrels, or ofttimes, because they would carry with them a harp, as harpers. In court, in cottage, by princes and by humble folk, everywhere, by every one the minstrels were greeted with delight. To such sweet music did they sing the songs or ballads which they made or perchance had heard, to such sweet music, that those who listened could forget nor tale nor tune. In those far-off days of minstrelsy the country was alive with fairies. Over the mountains, through the glens, by babbling streams and across silent moors, the patter of tiny feet might be heard, feet which had strayed from Elfinland. It was of these little folk and of their visits to the homes of mortals that the minstrels sang. Sterner songs too were theirs, songs of war and bloodshed, when clan fought with clan and lives were lost and brave deeds were done. Of all indeed that made life glad or sad, of these the minstrels sang. From town to village, from court to inn they wandered, singing the old songs, adding verses to them here, dropping lines from them there, singing betimes a strain unheard before, until at length the day came when the songs were written down. It was in the old books that thus came to be written that I first found these tales, and when you have read them perhaps you will wish to go yourself to the same old books, to find many another song of love and hate, of joy and sorrow. - Summary by Mary Macgregor
“Stories from the Ballads, Told to the Children” Metadata:
- Title: ➤ Stories from the Ballads, Told to the Children
- Author: Mary Esther Miller MacGregor
- Language: English
- Publish Date: 0
Edition Specifications:
- Format: Audio
- Number of Sections: 7
- Total Time: 02:00:41
Edition Identifiers:
- libriVox ID: 17055
Links and information:
Online Access
Download the Audio Book:
- File Name: stories_from_ballads_2110_librivox
- File Format: zip
- Total Time: 02:00:41
- Download Link: Download link
Online Marketplaces
Find Stories from the Ballads, Told to the Children at online marketplaces:
- Amazon: Audiable, Kindle and printed editions.
- Ebay: New & used books.
Buy “Neural Modeling” online:
Shop for “Neural Modeling” on popular online marketplaces.
- Ebay: New and used books.