About Extracting Dynamic Information of Unknown Complex Systems by Neural Networks

This work presents a straightforward methodology based on neural networks (NN) which allows to obtain relevant dynamic information of unknown nonlinear systems. It provides an approach for cases in which the complex task of analyzing the dynamic behaviour of nonlinear systems makes it excessively ch...

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Main Authors: Eloy Irigoyen, Antonio Javier Barragán, Mikel Larrea, José Manuel Andújar
Format: Article
Language:English
Published: Hindawi-Wiley 2018-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2018/3671428
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spelling doaj-1e10f298e203465a9072081a87f568a42020-11-25T00:50:04ZengHindawi-WileyComplexity1076-27871099-05262018-01-01201810.1155/2018/36714283671428About Extracting Dynamic Information of Unknown Complex Systems by Neural NetworksEloy Irigoyen0Antonio Javier Barragán1Mikel Larrea2José Manuel Andújar3UPV/EHU, Alda, Urquijo, s/n, Bizkaia, SpainUHU, ETSI, Campus de El Carmen, Huelva, SpainUPV/EHU, Alda, Urquijo, s/n, Bizkaia, SpainUHU, ETSI, Campus de El Carmen, Huelva, SpainThis work presents a straightforward methodology based on neural networks (NN) which allows to obtain relevant dynamic information of unknown nonlinear systems. It provides an approach for cases in which the complex task of analyzing the dynamic behaviour of nonlinear systems makes it excessively challenging to obtain an accurate mathematical model. After reviewing the suitability of multilayer perceptrons (MLPs) as universal approximators to replace a mathematical model, the first part of this work presents a system representation using a model formulated with state variables which can be exported to a NN structure. Considering the linearization of the NN model in a mesh of operating points, the second part of this work presents the study of equilibrium states in such points by calculating the Jacobian matrix of the system through the NN model. The results analyzed in three case studies provide representative examples of the strengths of the proposed method. Conclusively, it is feasible to study the system behaviour based on MLPs, which enables the analysis of the local stability of the equilibrium points, as well as the system dynamics in its environment, therefore obtaining valuable information of the system dynamic behaviour.http://dx.doi.org/10.1155/2018/3671428
collection DOAJ
language English
format Article
sources DOAJ
author Eloy Irigoyen
Antonio Javier Barragán
Mikel Larrea
José Manuel Andújar
spellingShingle Eloy Irigoyen
Antonio Javier Barragán
Mikel Larrea
José Manuel Andújar
About Extracting Dynamic Information of Unknown Complex Systems by Neural Networks
Complexity
author_facet Eloy Irigoyen
Antonio Javier Barragán
Mikel Larrea
José Manuel Andújar
author_sort Eloy Irigoyen
title About Extracting Dynamic Information of Unknown Complex Systems by Neural Networks
title_short About Extracting Dynamic Information of Unknown Complex Systems by Neural Networks
title_full About Extracting Dynamic Information of Unknown Complex Systems by Neural Networks
title_fullStr About Extracting Dynamic Information of Unknown Complex Systems by Neural Networks
title_full_unstemmed About Extracting Dynamic Information of Unknown Complex Systems by Neural Networks
title_sort about extracting dynamic information of unknown complex systems by neural networks
publisher Hindawi-Wiley
series Complexity
issn 1076-2787
1099-0526
publishDate 2018-01-01
description This work presents a straightforward methodology based on neural networks (NN) which allows to obtain relevant dynamic information of unknown nonlinear systems. It provides an approach for cases in which the complex task of analyzing the dynamic behaviour of nonlinear systems makes it excessively challenging to obtain an accurate mathematical model. After reviewing the suitability of multilayer perceptrons (MLPs) as universal approximators to replace a mathematical model, the first part of this work presents a system representation using a model formulated with state variables which can be exported to a NN structure. Considering the linearization of the NN model in a mesh of operating points, the second part of this work presents the study of equilibrium states in such points by calculating the Jacobian matrix of the system through the NN model. The results analyzed in three case studies provide representative examples of the strengths of the proposed method. Conclusively, it is feasible to study the system behaviour based on MLPs, which enables the analysis of the local stability of the equilibrium points, as well as the system dynamics in its environment, therefore obtaining valuable information of the system dynamic behaviour.
url http://dx.doi.org/10.1155/2018/3671428
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AT antoniojavierbarragan aboutextractingdynamicinformationofunknowncomplexsystemsbyneuralnetworks
AT mikellarrea aboutextractingdynamicinformationofunknowncomplexsystemsbyneuralnetworks
AT josemanuelandujar aboutextractingdynamicinformationofunknowncomplexsystemsbyneuralnetworks
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