Document Type : Review Article

Authors

university of tabriz

Abstract

In this paper, two adaptive H∞ control schemes based on a genetic wavelet kernel support vector machine (SVM) and a hybrid genetic wavelet kernel SVM is presented for nonlinear uncertain systems. In these methods, wavelet kernel SVM is employed to establish the adaptive controller and an on-line learning rule for the weighting vector and bias is derived. The H∞ control technique is combined with adaptive control algorithm and wavelet support vector machine to achieve the desired attenuation on the tracking error caused by wavelet-SVM approximation error and external disturbances. The most important feature of the proposed control strategy is its inherent robustness and its ability to handle the nonlinear behaviour of the system. The results of simulation show this SVM online algorithm controller is very effective and the SVM controller can achieve a satisfactory performance 

Keywords

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