A Lyapunov theory based adaptive fuzzy learning control for robotic manipulator

Rajneesh Sharma, Netaji Subhas
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引用次数: 3

Abstract

This work proposes to amalgamate the Fuzzy Q learning (FQL) with Lyapunov theory based control resulting in a controller with guaranteed stability for dynamic trajectory tracking control of robotic manipulators. FQL algorithm combines reinforcement learning (RL) approach with fuzzy modeling; however, it fails to address the stability issue of the designed controller. Proposed approach is specifically aimed at addressing this shortcoming. Proposed controller combines powerful generalization and learning capability of fuzzy systems with Lyapunov theory based control that guarantees stability. To demonstrate the viability and effectiveness of the Lyapunov theory based adaptive fuzzy learning approach over basic FQL methodology, we compare the performance of the controller on two degrees of freedom standard two link robot manipulator which is a highly coupled, time varying nonlinear system. Results validate that the proposed hybrid controller indeed leads to a superior performance in terms of both input torques at each joint and tracking accuracy in presence of external disturbances and payload mass variations.
基于Lyapunov理论的机械臂自适应模糊学习控制
本文提出将模糊Q学习(FQL)与基于李雅普诺夫理论的控制相结合,形成一种具有保证稳定性的机器人动态轨迹跟踪控制控制器。FQL算法将强化学习(RL)方法与模糊建模相结合;然而,它未能解决所设计控制器的稳定性问题。建议的方法专门针对解决这一缺点。该控制器将模糊系统强大的泛化和学习能力与基于李雅普诺夫理论的控制相结合,保证了系统的稳定性。为了证明基于Lyapunov理论的自适应模糊学习方法在基本FQL方法上的可行性和有效性,我们比较了控制器在二自由度标准双连杆机器人机械臂上的性能,这是一个高度耦合的时变非线性系统。结果验证了所提出的混合控制器在每个关节处的输入扭矩和存在外部干扰和有效载荷质量变化的跟踪精度方面确实具有优越的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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