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Basis function-based adaptive critic learning and its learning parameters selection
Institution:Department of Electrical and Computer Engineering University of Missouri-Columbia, Columbia, MO 65211, U.S.A.;Department of Control and Instrumentation Engineering Chonbuk National University, Republic of Korea
Abstract:An adaptive critic learning (ACL) structure consists of two modules: the action and the critic ones. Learning occurs in both modules. The critic module learns to evaluate the system status. It transforms occasionally occurred failure signals into useful evaluation information. Utilizing such information, the action module can learn the control technique. In this paper, we investigate the technique of using basis functions (BFs) in ACL. One difficulty in the scheme is on selection of learning parameters. Without a guideline, the best set of learning parameters must be obtained from a large number of test simulations. This study investigated the effects of parameters through analysis and verified the analytical results by simulations. In addition to the problem of parameter selection, effects of measurement errors on the CMAC-based (one basis function technique) ACL have been also examined and reported.
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