首页> 外文会议>International Symposium on Neural Networks pt.2; 20040819-20040821; Dalian; CN >A Neural Network Based Method for Solving Discrete-Time Nonlinear Output Regulation Problem in Sampled-Data Systems
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A Neural Network Based Method for Solving Discrete-Time Nonlinear Output Regulation Problem in Sampled-Data Systems

机译:基于神经网络的采样数据系统离散非线性输出调节问题

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Many of nonlinear control systems are sampled-data system, i.e. the continuous-time nonlinear plants are controlled by digital controllers. So it is important to investigate that if the solution of the discrete-time output regulation problem is effective to sampled-data nonlinear control systems. Recently a feedforward neural network based approach to solving the discrete regulator equations has been presented. This approach leads to an effective way to practically solve the discrete nonlinear output regulation problem. In this paper the approach is used to sampled-data nonlinear control system. The simulation of the sampled-data system shows that the control law designed by the proposed approach performs much better than the linear control law does.
机译:许多非线性控制系统是采样数据系统,即连续时间非线性设备由数字控制器控制。因此,重要的是要研究离散时间输出调节问题的解决方案是否对采样数据非线性控制系统有效。最近,提出了一种基于前馈神经网络的离散调节器方程求解方法。这种方法导致有效地解决离散非线性输出调节问题的方法。本文将该方法用于采样数据非线性控制系统。采样数据系统的仿真表明,所提出的方法设计的控制律的性能远优于线性控制律。

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