Control of autonomous robot behavior using data filtering through adaptive resonance theory
Abstract The aim of the article is to use neural networks to control autonomous robot behavior. The type of the controlling neural network was chosen a backpropagation neural network with a sigmoidal transfer function. The focus in this article is put on the use adaptive resonance theory (ART1) for...
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World Scientific Publishing
2017-11-01
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Online Access: | http://link.springer.com/article/10.1007/s40595-017-0103-7 |
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doaj-767a949f759a4258aca81e31afcadcda2020-11-24T22:03:21ZengWorld Scientific PublishingVietnam Journal of Computer Science2196-88882196-88962017-11-0152859410.1007/s40595-017-0103-7Control of autonomous robot behavior using data filtering through adaptive resonance theoryAdam Barton0Eva Volna1Martin Kotyrba2Department of Informatics and Computers, University of OstravaDepartment of Informatics and Computers, University of OstravaDepartment of Informatics and Computers, University of OstravaAbstract The aim of the article is to use neural networks to control autonomous robot behavior. The type of the controlling neural network was chosen a backpropagation neural network with a sigmoidal transfer function. The focus in this article is put on the use adaptive resonance theory (ART1) for data filtering. ART1 is used for preprocessing of the training set. This allows finding typical patterns in the full training set and thus covering the whole space of solutions. The neural network adapted by a reduced training set has a greater ability of generalization. The work also discusses the influence of vigilance parameter settings for filtering the training set. The proposed approach to data filtering through ART1 is experimentally verified to control the behavior of an autonomous robot in an unknown environment with varying degrees of difficulty regarding the location of obstacles. All obtained results are evaluated in the conclusion.http://link.springer.com/article/10.1007/s40595-017-0103-7Adaptive resonance theory (ART)Big dataControl neural networkData filtering |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Adam Barton Eva Volna Martin Kotyrba |
spellingShingle |
Adam Barton Eva Volna Martin Kotyrba Control of autonomous robot behavior using data filtering through adaptive resonance theory Vietnam Journal of Computer Science Adaptive resonance theory (ART) Big data Control neural network Data filtering |
author_facet |
Adam Barton Eva Volna Martin Kotyrba |
author_sort |
Adam Barton |
title |
Control of autonomous robot behavior using data filtering through adaptive resonance theory |
title_short |
Control of autonomous robot behavior using data filtering through adaptive resonance theory |
title_full |
Control of autonomous robot behavior using data filtering through adaptive resonance theory |
title_fullStr |
Control of autonomous robot behavior using data filtering through adaptive resonance theory |
title_full_unstemmed |
Control of autonomous robot behavior using data filtering through adaptive resonance theory |
title_sort |
control of autonomous robot behavior using data filtering through adaptive resonance theory |
publisher |
World Scientific Publishing |
series |
Vietnam Journal of Computer Science |
issn |
2196-8888 2196-8896 |
publishDate |
2017-11-01 |
description |
Abstract The aim of the article is to use neural networks to control autonomous robot behavior. The type of the controlling neural network was chosen a backpropagation neural network with a sigmoidal transfer function. The focus in this article is put on the use adaptive resonance theory (ART1) for data filtering. ART1 is used for preprocessing of the training set. This allows finding typical patterns in the full training set and thus covering the whole space of solutions. The neural network adapted by a reduced training set has a greater ability of generalization. The work also discusses the influence of vigilance parameter settings for filtering the training set. The proposed approach to data filtering through ART1 is experimentally verified to control the behavior of an autonomous robot in an unknown environment with varying degrees of difficulty regarding the location of obstacles. All obtained results are evaluated in the conclusion. |
topic |
Adaptive resonance theory (ART) Big data Control neural network Data filtering |
url |
http://link.springer.com/article/10.1007/s40595-017-0103-7 |
work_keys_str_mv |
AT adambarton controlofautonomousrobotbehaviorusingdatafilteringthroughadaptiveresonancetheory AT evavolna controlofautonomousrobotbehaviorusingdatafilteringthroughadaptiveresonancetheory AT martinkotyrba controlofautonomousrobotbehaviorusingdatafilteringthroughadaptiveresonancetheory |
_version_ |
1725831882219716608 |