A radial basis function implementation of the adaptive dynamic programming algorithm

Lendaris, G., Cox, C., Saeks, R.,Murray, J.

Circuits and Systems, 2002. MWSCAS-2002. The 2002 45th Midwest Symposium(2002)

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摘要
Adaptive Dynamic Programming (ADP) constitutes a potentially powerful approach to optimal control. An approximation to the Bellman cost functional is updated in real time. The technique is applicable to a broad class of nonlinear networks with unknown dynamics and is guaranteed to converge to the optimal control with stepwise stability. The goal of this paper is to describe an implementation of the ADP algorithm in which a radial basis function is used to define the approximate cost functional, which is updated locally in the neighborhood of the state trajectory each time the system is run. An application of the algorithm to a nonlinear flight control problem with unknown aircraft dynamics is presented.
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关键词
aerospace control,dynamic programming,function approximation,multivariable control systems,nonlinear control systems,optimal control,stability,state-space methods,bellman cost functional,adaptive dynamic programming algorithm,approximate cost functional,multivariate nonlinear system,nonlinear flight control problem,nonlinear networks,radial basis function implementation,state trajectory,stepwise stability,cost function,real time,radial basis function
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