Critic-Identifier Structure ADP Based Near-optimal Decentralized Tracking Control of Modular and Reconfigurable Robots

Hongbing Xia, Daiwei Xue, Yanchun Wang, Aimin Qiao, Bo Zhao
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Abstract

This paper investigates a near-optimal decentralized tracking control (DTC) scheme for modular and reconfigurable robots (MRRs) via a novel critic-identifier (CI) structure-based adaptive dynamic programming (ADP) algorithm. The DTC problem of MRRs is transformed into an optimal control issue, which consists of local namely controller, local optimal feedback controller and robust compensator. By using desired states of coupled subsystems to substitute their corresponding actual states, the strict norm-boundedness assumption of interconnections can be avoided. By using self-learning ability of neural network (NN), an identifier is constructed to approximate the subsystem dynamics. Then, the local desired control law can be obtained based on identified dynamics. A critic NN is constructed to solve Hamiltonian-Jacobi-Bellman (HJB) equation, and the local tracking feedback control policy is derived. To remove the overall error caused by the substitution, identification and approximation of critic NN, a robust term is added to guarantee the reliable performance of MRR system. The stability of the closed-loop system is ensured to be asymptotically stable by using the Lyapunov's direct methods. Finally, simulation studies show the effectiveness of the proposed scheme.
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基于临界标识结构ADP的模块化可重构机器人近最优分散跟踪控制
本文研究了一种基于临界标识符(CI)结构的自适应动态规划(ADP)算法的模块化和可重构机器人的近最优分散跟踪控制(DTC)方案。将mrr的直接转矩控制问题转化为最优控制问题,该问题由局部即控制器、局部最优反馈控制器和鲁棒补偿器组成。通过使用耦合子系统的期望状态代替其对应的实际状态,可以避免互连的严格范数有界假设。利用神经网络的自学习能力,构造了近似子系统动态的辨识器。然后,根据辨识出的动力学特性,得到局部所需的控制律。构造了一个求解Hamiltonian-Jacobi-Bellman (HJB)方程的评价神经网络,推导了局部跟踪反馈控制策略。为了消除由批判神经网络的替换、识别和逼近所带来的整体误差,增加了一个鲁棒项,保证了MRR系统的可靠性能。利用李雅普诺夫直接方法,保证了闭环系统的渐近稳定。最后,仿真研究表明了该方案的有效性。
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