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Adaptive dynamic RBF neural controller design for a class of nonlinear systems

机译:一类非线性系统的自适应动态RBF神经控制器设计

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In this paper, an adaptive DRBF neural control (ADNC) system which is composed of a neural controller and a smooth compensator is proposed. The neural controller utilizes a dynamic radial basis function (DRBF) network to online mimic an ideal controller and the smooth compensator is designed to eliminate the effect of the approximation error between the ideal controller and neural controller. The DRBF network can self-organizing its network structure. All the controller parameters of the proposed ADNC system are online tuned in the Lyapunov sense, thus the stability analytic shows the system output can exponentially converge to a small neighborhood of the trajectory command. Finally, the proposed ADNC system is applied to a chaotic system and a DC motor. Simulation and experimental results verify that a favorable tracking performance and no chattering phenomena can be achieved by the proposed ADNC system.
机译:提出了一种由神经控制器和平滑补偿器组成的自适应DRBF神经控制(ADNC)系统。神经控制器利用动态径向基函数(DRBF)网络在线模拟理想控制器,而平滑补偿器旨在消除理想控制器和神经控制器之间的近似误差影响。 DRBF网络可以自组织其网络结构。所提出的ADNC系统的所有控制器参数都在Lyapunov意义上进行了在线调谐,因此稳定性分析表明系统输出可以指数收敛于轨迹命令的较小邻域。最后,将所提出的ADNC系统应用于混沌系统和直流电动机。仿真和实验结果验证了所提出的ADNC系统可以实现良好的跟踪性能和无抖动现象。

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