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Conference Paper: Deterministic Learning of Nonlinear Dynamical Systems

TitleDeterministic Learning of Nonlinear Dynamical Systems
Authors
Issue Date2003
Citation
Ieee International Symposium On Intelligent Control - Proceedings, 2003, p. 87-92 How to Cite?
AbstractIn this paper, we present an approach for neural networks (NN) based identification of unknown nonlinear dynamical systems undergoing periodic or periodic-like (recurrent) motions. Among various types of NN architectures, we use a dynamical version of the localized RBF neural network, which is shown to be particularly suitable for identification in a dynamical framework. With the associated properties of localized RBF networks, especially the one concerning the persistent excitation (PE) condition for periodic trajectories, the proposed approach achieves sufficiently accurate identification of system dynamics in a local region along the experienced system trajectory. In particular, for neurons whose centers are close to the trajectories, the neural weights converge to a small neighborhood of a set of optimal values; while for other neurons with centers far away from the trajectories, the neural weights are not updated and are almost unchanged. The proposed approach implements a sort of "deterministic learning" in the sense that deterministic features of nonlinear dynamical systems are learned not by algorithms from statistical principles, but in a dynamical, deterministic manner, utilizing results from adaptive systems theory. The nature of this deterministic learning is closely related to the exponentially stability of a class of nonlinear adaptive systems. Simulation studies are included to demonstrate the effectiveness of the proposed approach.
Persistent Identifierhttp://hdl.handle.net/10722/169807
References

 

DC FieldValueLanguage
dc.contributor.authorWang, Cen_US
dc.contributor.authorHill, DJen_US
dc.contributor.authorChen, Gen_US
dc.date.accessioned2012-10-25T04:55:44Z-
dc.date.available2012-10-25T04:55:44Z-
dc.date.issued2003en_US
dc.identifier.citationIeee International Symposium On Intelligent Control - Proceedings, 2003, p. 87-92en_US
dc.identifier.urihttp://hdl.handle.net/10722/169807-
dc.description.abstractIn this paper, we present an approach for neural networks (NN) based identification of unknown nonlinear dynamical systems undergoing periodic or periodic-like (recurrent) motions. Among various types of NN architectures, we use a dynamical version of the localized RBF neural network, which is shown to be particularly suitable for identification in a dynamical framework. With the associated properties of localized RBF networks, especially the one concerning the persistent excitation (PE) condition for periodic trajectories, the proposed approach achieves sufficiently accurate identification of system dynamics in a local region along the experienced system trajectory. In particular, for neurons whose centers are close to the trajectories, the neural weights converge to a small neighborhood of a set of optimal values; while for other neurons with centers far away from the trajectories, the neural weights are not updated and are almost unchanged. The proposed approach implements a sort of "deterministic learning" in the sense that deterministic features of nonlinear dynamical systems are learned not by algorithms from statistical principles, but in a dynamical, deterministic manner, utilizing results from adaptive systems theory. The nature of this deterministic learning is closely related to the exponentially stability of a class of nonlinear adaptive systems. Simulation studies are included to demonstrate the effectiveness of the proposed approach.en_US
dc.languageengen_US
dc.relation.ispartofIEEE International Symposium on Intelligent Control - Proceedingsen_US
dc.titleDeterministic Learning of Nonlinear Dynamical Systemsen_US
dc.typeConference_Paperen_US
dc.identifier.emailHill, DJ:en_US
dc.identifier.authorityHill, DJ=rp01669en_US
dc.description.naturelink_to_subscribed_fulltexten_US
dc.identifier.scopuseid_2-s2.0-0344235202en_US
dc.relation.referenceshttp://www.scopus.com/mlt/select.url?eid=2-s2.0-0344235202&selection=ref&src=s&origin=recordpageen_US
dc.identifier.spage87en_US
dc.identifier.epage92en_US
dc.identifier.scopusauthoridWang, C=8238738200en_US
dc.identifier.scopusauthoridHill, DJ=35398599500en_US
dc.identifier.scopusauthoridChen, G=36012928800en_US

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