Data-driven robust approximate optimal tracking control for unknown general nonlinear systems using adaptive dynamic programming method.

IEEE transactions on neural networks Pub Date : 2011-12-01 Epub Date: 2011-10-13 DOI:10.1109/TNN.2011.2168538
Huaguang Zhang, Lili Cui, Xin Zhang, Yanhong Luo
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引用次数: 505

Abstract

In this paper, a novel data-driven robust approximate optimal tracking control scheme is proposed for unknown general nonlinear systems by using the adaptive dynamic programming (ADP) method. In the design of the controller, only available input-output data is required instead of known system dynamics. A data-driven model is established by a recurrent neural network (NN) to reconstruct the unknown system dynamics using available input-output data. By adding a novel adjustable term related to the modeling error, the resultant modeling error is first guaranteed to converge to zero. Then, based on the obtained data-driven model, the ADP method is utilized to design the approximate optimal tracking controller, which consists of the steady-state controller and the optimal feedback controller. Further, a robustifying term is developed to compensate for the NN approximation errors introduced by implementing the ADP method. Based on Lyapunov approach, stability analysis of the closed-loop system is performed to show that the proposed controller guarantees the system state asymptotically tracking the desired trajectory. Additionally, the obtained control input is proven to be close to the optimal control input within a small bound. Finally, two numerical examples are used to demonstrate the effectiveness of the proposed control scheme.

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基于自适应动态规划方法的未知一般非线性系统数据驱动鲁棒近似最优跟踪控制。
针对未知的一般非线性系统,采用自适应动态规划(ADP)方法,提出了一种新的数据驱动鲁棒近似最优跟踪控制方案。在控制器的设计中,只需要可用的输入输出数据,而不需要已知的系统动态。采用递归神经网络(NN)建立数据驱动模型,利用可用的输入输出数据重构未知系统动态。通过增加与建模误差相关的可调节项,首先保证了建模误差收敛于零。然后,基于得到的数据驱动模型,利用ADP方法设计了近似最优跟踪控制器,该控制器由稳态控制器和最优反馈控制器组成。此外,提出了一种鲁棒项来补偿由ADP方法引入的神经网络逼近误差。基于Lyapunov方法,对闭环系统进行了稳定性分析,表明所提出的控制器能保证系统状态渐近跟踪期望轨迹。此外,还证明了得到的控制输入在一个小范围内接近最优控制输入。最后,通过两个数值算例验证了所提控制方案的有效性。
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来源期刊
IEEE transactions on neural networks
IEEE transactions on neural networks 工程技术-工程:电子与电气
自引率
0.00%
发文量
2
审稿时长
8.7 months
期刊最新文献
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