Adaptive Robust Tracking Control of Robotic Manipulator based on SMC and Fuzzy Control Strategy

A. H. Mary, Ahmad Al-Talabi, T. Kara, Dina Saadi Muneam, Mohammad Yahya Almuhanna, Laith Awda Kadhim Mayyahi
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Abstract

In recent years, robotic systems have been widely used in different applications, and this has motivated researchers to develop different control methods.  A model-free, intelligent, robust control method for a nonlinear robotic manipulator system is proposed in this work. This paper presents a novel solution for the major drawbacks of the sliding mode control scheme, which are chattering. Prior knowledge is needed about the dynamic model of the controlled system and the upper bound of uncertainty. In this paper, a fuzzy-like PD controller with SMC (FLPDSM) is proposed. The fuzzy-like PD controller was designed according to fuzzy rules and membership functions based on the nominal model of the robot manipulator. A robust control term was added to the control signal to compensate for the system uncertainty, and external disturbances are compensated by adding an auxiliary robust term to the SMC control law. Two methods for designing robust control terms are proposed. The first proposed method assumes that the upper bound of system uncertainty is known although it cannot be exactly determined due to external disturbances and uncertainty. Hence, a second method was proposed that assumes this bound to be unknown, and an adaptive gain based on Lyapunov theory was used to derive the adaptation law. The Lyapunov second method was used to ensure the stability of the closed loop system. Performance tests on the proposed methods were implemented through simulation studies for the two-link robotic manipulator, and the test results were compared with the standard SMC to verify the effectiveness of the proposed method. A good trajectory tracking with a high robustness against parameter variations and external disturbances was observed under the presented control scheme.
基于 SMC 和模糊控制策略的机器人机械手自适应鲁棒跟踪控制
近年来,机器人系统被广泛应用于不同领域,这促使研究人员开发出不同的控制方法。 本文提出了一种针对非线性机器人机械手系统的无模型、智能、鲁棒控制方法。本文针对滑模控制方案的主要缺点,即颤振,提出了一种新的解决方案。需要事先了解受控系统的动态模型和不确定性的上限。本文提出了一种带有 SMC 的类模糊 PD 控制器(FLPDSM)。类模糊 PD 控制器是根据机器人机械手标称模型的模糊规则和成员函数设计的。为补偿系统的不确定性,在控制信号中添加了鲁棒控制项,并通过在 SMC 控制法则中添加辅助鲁棒项来补偿外部干扰。本文提出了两种设计鲁棒控制项的方法。第一种方法假定系统不确定性的上限是已知的,但由于外部干扰和不确定性,该上限无法准确确定。因此,提出了第二种方法,即假设该界限是未知的,并使用基于 Lyapunov 理论的自适应增益来推导自适应法则。Lyapunov 第二种方法用于确保闭环系统的稳定性。通过对双链路机械手的仿真研究,对所提出的方法进行了性能测试,并将测试结果与标准 SMC 进行了比较,以验证所提出方法的有效性。在所提出的控制方案下,可以观察到良好的轨迹跟踪,对参数变化和外部干扰具有很高的鲁棒性。
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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