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Adaptive neural complementary sliding-mode control via functional-linked wavelet neural network

机译:基于函数链接小波神经网络的自适应神经互补滑模控制

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Chaos control can be applied in the vast areas of physics and engineering systems, but the parameters of chaotic system are inevitably perturbed by external inartificial factors and cannot be exactly known. This paper proposes an adaptive neural complementary sliding-mode control (ANCSC) system, which is composed of a neural controller and a robust compensator, for a chaotic system. The neural controller uses a functional-linked wavelet neural network (FWNN) to approximate an ideal complementary sliding-mode controller. Since the output weights of FWNN are equipped with a functional-linked type form, the FWNN offers good learning accuracy. The robust compensator is designed to eliminate the effect of the approximation error introduced by the neural controller upon the system stability in the Lyapunov sense. Without requiring preliminary offline learning, the parameter learning algorithm can online tune the controller parameters of the proposed ANCSC system to ensure system stable. Finally, it shows by the simulation results that favorable control performance can be achieved for a chaotic system by the proposed ANCSC scheme.
机译:混沌控制可以应用于物理和工程系统的广阔领域,但是混沌系统的参数不可避免地会受到外部非人为因素的干扰,因此无法确切知道。本文提出了一种适用于混沌系统的自适应神经互补滑模控制系统,该系统由神经控制器和鲁棒补偿器组成。神经控制器使用功能链接的小波神经网络(FWNN)逼近理想的互补滑模控制器。由于FWNN的输出权重配备有功能链接类型的表格,因此FWNN具有良好的学习准确性。鲁棒补偿器旨在消除Lyapunov意义上神经控制器引入的逼近误差对系统稳定性的影响。参数学习算法无需预先进行离线学习,就可以在线调整建议的ANCSC系统的控制器参数,以确保系统稳定。最后,通过仿真结果表明,所提出的ANCSC方案可以实现混沌系统的良好控制性能。

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