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Critic-Identifier Structure-Based ADP for Decentralized Robust Optimal Control of Modular Robot Manipulators

机译:基于关键标识符结构的ADP用于模块化机器人机械手的分散鲁棒最优控制

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摘要

This paper presents a decentralized robust optimal control method for modular robot manipulators (MRMs) via a novel critic-identifier (CI) structure-based adaptive dynamic programming (ADP) scheme. The robust control problem of MRMs is transformed into an optimal compensation control approach, which combines model-based compensation control, identifier-based learning control and ADP-based optimal control. The dynamic model of MRMs is formulated based on a torque sensing technique that is deployed for each joint module, where the local dynamic information is utilized effectively to design the model compensation controller. A neural network (NN) identifier is established to approximate the dynamics of the interconnected dynamic coupling (IDC). Based on the ADP algorithm, the Hamiltonian-Jacobi-Bellman (HJB) equation can be solved by constructing a critic NN, and the approximate optimal control policy is derived. The closed-loop robotic system is guaranteed to be asymptotic stable by the implementation of a set of decentralized control policies that have been developed. Finally, simulations verify the effectiveness of the proposed method.
机译:本文提出了一种基于新颖的批评者标识符(CI)基于结构的自适应动态规划(ADP)方案的模块化机器人操纵器(MRM)的分散鲁棒最优控制方法。 MRM的鲁棒控制问题被转化为最优补偿控制方法,该方法将基于模型的补偿控制,基于标识符的学习控制和基于ADP的最优控制相结合。 MRM的动态模型是基于为每个关节模块部署的扭矩传感技术制定的,其中有效利用局部动态信息来设计模型补偿控制器。建立神经网络(NN)标识符以近似互连动态耦合(IDC)的动力学。基于ADP算法,可以通过构造评论器NN来求解Hamiltonian-Jacobi-Bellman(HJB)方程,并推导近似的最优控制策略。通过实施一套已开发的分散控制策略,可以确保闭环机器人系统是渐近稳定的。最后,仿真验证了所提方法的有效性。

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