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Distributed learning consensus control based on neural networks for heterogeneous nonlinear multiagent systems
Authors:Dong Shen  Chao Zhang  Jian‐Xin Xu
Abstract:This paper considers a novel distributed iterative learning consensus control algorithm based on neural networks for the control of heterogeneous nonlinear multiagent systems. The system's unknown nonlinear function is approximated by suitable neural networks; the approximation error is countered by a robust term in the control. Two types of control algorithms, both of which utilize distributed learning laws, are provided to achieve consensus. In the provided control algorithms, the desired reference is considered to be an unknown factor and then estimated using the associated learning laws. The consensus convergence is proven by the composite energy function method. A numerical simulation is ultimately presented to demonstrate the efficacy of the proposed control schemes.
Keywords:composite energy function  distributed iterative learning control  multiagent systems  neural networks  norm‐bounded uncertainty
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