Self-organizing Identification of Nonlinear Control Systems Based on Neural Networks
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Abstract:
This paper firstly extends the self-organizing neural networks to general case. Then the self-organizing process is applied to classify the dynamic process of nonlinear control systems. The nonlinear system is self-organized according to the probability density of the input and output samples and is approximated by many linear sub-spaces with different classifying centers and receptive fields. The self-organizing least squares identification of nonlinear systems is constructed based on the general least squares algorithms, the linearization errors of sub-spaces, and the cooperation and competition mechanism. The simulation results have shown the efficiency of the suggested algorithm.
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Hu Dewen, Wang Zhengzhi, Zhou Zhongtan. Self-organizing Identification of Nonlinear Control Systems Based on Neural Networks[J]. Journal of National University of Defense Technology,1998,20(2):85-90.