Model reference adaptive control of electro-hydraulic servo system based on RBF neural network and nonlinear disturbance observer
Haifang Zhong,
Kailei Liu,
Hongbin Qiang
et al.
Abstract:For the electro-hydraulic servo systems (EHSS) subjected to parameter uncertainties and unknown load disturbances, a model reference adaptive controller (MRAC) is proposed in this paper. Based on radial basis function neural networks (RBF NN) and nonlinear disturbance observer (NDO), it ensures a high performance in tracking output to the reference model. Firstly, a nominal MRAC is developed using Liapunov theory. In addition, a RBF NN is constructed to approximate parameter uncertainty and other nonlinear fun… Show more
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