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Direct adaptive regulation of unknown nonlinear dynamical systems via dynamic neural networks

机译:通过动态神经网络对未知非线性动力学系统进行直接自适应调节

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摘要

A direct nonlinear adaptive state regulator, for unknown dynamical systems that are modeled by dynamic neural networks is discussed. In the ideal case of complete model matching, convergence of the state to zero plus boundedness of all signals in the closed loop is ensured. Moreover, the behavior of the closed loop system is analyzed for cases in which the true plant differs from the dynamic neural network model in the sense that it is of higher order, or due to the presence of a modeling error term. In both cases, modifications of the original control and update laws are provided, so that at least uniform ultimate boundedness is guaranteed, even though in some cases the stability results obtained for the ideal case are retained.
机译:讨论了一种直接非线性自适应状态调节器,适用于由动态神经网络建模的未知动态系统。在完全模型匹配的理想情况下,确保闭环状态收敛到零加所有信号的有界度。此外,针对在真实植物与高阶神经网络或由于存在建模误差项的意义上真实植物与动态神经网络模型不同的情况,分析了闭环系统的行为。在这两种情况下,都提供了对原始控制和更新定律的修改,从而即使在某些情况下保留了理想情况下获得的稳定性结果,也至少保证了统一的最终有界度。

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