A Linear Quadratic Regulation Controller Based on Radial Basis Function Network Approximation
Chao Liu,
Xiaoxia Qiu,
Teng Xu
et al.
Abstract:This paper proposes a linear quadratic regulation (LQR) tracking control method based on a radial basis function (RBF) that successfully compensates for the shortcomings of the LQR method. The LQR method depends on the linearity of a model. Specifically, an RBF neural network is used to approximate and compensate for the nonlinear part of a controlled object in the PID type-I, type-II and type-III control loops to improve the performance of the system. Through the simulation of different industrial systems, su… Show more
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