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期刊论文
非线性系统的RBF神经网络建模与控制
International Journal of Innovative Computing, Information and Control,-0001,():
Many systems in reality exhibit nonlinear characteristics and in most cases they cannot be treated satisfactorily using linearized approaches over the full operating range. In this paper, an approximate modeling approach is introduced to overcome the mismatch between the linear/linearized model and the real nonlinear plant by treating the nonlinear system as a linear uncertain system that consists of a linear part and an uncertain part, for which a radial basis function neural network is employed to approximate and a nonlinear control scheme is proposed using a linear feedback PD controller to work concurrently with a nonlinear radical basis function neural network controller(RBFNNC). The PD controller, designed for the linear part, is used to improve the transient response while maintaining the stability of the system, and the RBFNNC, designed from fuzzy if-then rules with functional equivalence to a fuzzy inference system, is employed to compensate for the system nonlinearity/uncertainty and reduce the steady state error. The proposed modeling approach or control scheme can incorporate prior knowledge in its framework and provide a more transparent insight than the neural black-box approach. The simulation results reveal that the proposed modeling and control scheme for nonlinear systems is effective.
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