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Stable neural-network-based adaptive control for sampled-data nonlinear systems

机译:基于稳定神经网络的采样数据非线性系统自适应控制

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摘要

For a class of MIMO sampled-data nonlinear systems with unknown dynamic nonlinearities, a stable neural-network (NN)-based adaptive control approach which is an integration of an NN approach and the adaptive implementation of the variable structure control with a sector, is developed. The sampled-data nonlinear system is assumed to be controllable and its state vector is available for measurement. The variable structure control with a sector serves two purposes. One is to force the system state to be within the state region in which the NN's are used when the system goes out of neural control; and the other is to provide an additional control until the system tracking error metric is controlled inside the sector within the network approximation region. The proof of a complete stability and a tracking error convergence is given and the setting of the sector and the NN parameters is discussed. It is demonstrated that the asymptotic error of the system can be made dependent only on inherent network approximation errors and the frequency range of unmodeled dynamics. Simulation studies of a two-link manipulator show the effectiveness of the proposed control approach.
机译:对于一类具有未知动态非线性的MIMO采样数据非线性系统,一种基于稳定神经网络(NN)的自适应控制方法是将NN方法与带有扇区的可变结构控制的自适应实现相结合的方法。发达。假定采样数据非线性系统是可控制的,并且其状态向量可用于测量。具有扇区的可变结构控制有两个目的。一种是当系统退出神经控制时,迫使系统状态处于使用NN的状态区域之内。另一个是提供额外的控制,直到在网络逼近区域内的扇区内控制系统跟踪误差度量为止。给出了完全稳定性和跟踪误差收敛的证明,并讨论了扇区和NN参数的设置。证明了可以使系统的渐近误差仅取决于固有的网络近似误差和未建模动力学的频率范围。两连杆机械手的仿真研究表明了所提出的控制方法的有效性。

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