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Adaptive Dynamic Programming for a Class of Complex-Valued Nonlinear Systems

机译:一类复值非线性系统的自适应动态规划

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摘要

In this brief, an optimal control scheme based on adaptive dynamic programming (ADP) is developed to solve infinite-horizon optimal control problems of continuous-time complex-valued nonlinear systems. A new performance index function is established on the basis of complex-valued state and control. Using system transformations, the complex-valued system is transformed into a real-valued one, which overcomes Cauchy–Riemann conditions effectively. With the transformed system and the performance index function, a new ADP method is developed to obtain the optimal control law by using neural networks. A compensation controller is developed to compensate the approximation errors of neural networks. Stability properties of the nonlinear system are analyzed and convergence properties of the weights for neural networks are presented. Finally, simulation results demonstrate the performance of the developed optimal control scheme for complex-valued nonlinear systems.
机译:在此简要介绍了一种基于自适应动态规划(ADP)的最优控制方案,以解决连续时间复数值非线性系统的无限水平最优控制问题。在复数值状态和控制的基础上建立了新的性能指标函数。使用系统转换,将复值系统转换为实值系统,从而有效地克服了柯西-黎曼条件。利用改造后的系统和性能指标函数,开发了一种新的ADP方法,通过神经网络获得最优控制律。开发了一种补偿控制器来补偿神经网络的近似误差。分析了非线性系统的稳定性,并给出了神经网络权重的收敛性。最后,仿真结果证明了所开发的复杂值非线性系统最优控制方案的性能。

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