dc.creatorDelgado Rivera, Jesús Alberto
dc.date2007-12-10T13:41:02Z
dc.date2010-09-07T17:56:02Z
dc.date2011-03-10T17:34:30Z
dc.date2007-12-10T13:41:02Z
dc.date2010-09-07T17:56:02Z
dc.date2011-03-10T17:34:30Z
dc.date1995-11
dc.identifierhttp://bibdigital.epn.edu.ec/handle/15000/9732
dc.descriptionIn this paper a control scheme wich linearizes the system is discussed. The idea here is to integrate recurrent neural networks and the linearizing control scheme proposed by Kravaris and Chung. A straightforward approach would have been to identify the non-linear plant using a recurrent neural network, and then synthesize the control law using this network. However, this particular methodology is eschewed here, for this would mean tedious calculations of the varios Lie derivatives of the network and the exact cancellation of non-linear terms. Rather than go through a process of first identifying the plant an then evaluating the various parameters for linearizing the plant, a more interesting scheme would be one where the network designs the linearizing laws for the system. This means that the network provides us with the linearizing parameters as outputs, rather than the outputs of the system.
dc.languagespa
dc.rightsopenAccess
dc.rightshttps://creativecommons.org/licenses/by-nc-nd/4.0/
dc.subjectREDES NEURALES
dc.subjectSISTEMAS DE CONTROL NO LINEAL
dc.subjectNEURAL NETWORKS
dc.subjectNONLINEAR CONTROL SYSTEMS
dc.titleControl adaptive of nonlinear systems using a recurrent neural network
dc.typeArticle


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