Truong Thanh Nguyen, Vo Anh Tuan, Kang Hee-Jun
School of Electrical Engineering, University of Ulsan, 93 Daehak-ro, Nam-gu, Ulsan, 44610, Republic of Korea.
ISA Trans. 2024 Jan;144:330-341. doi: 10.1016/j.isatra.2023.11.013. Epub 2023 Nov 9.
This paper introduces a new control strategy for robot manipulators, specifically designed to tackle the challenges associated with traditional model-based sliding mode (SM) controller design. These challenges include the need for accurately computed system models, knowledge of disturbance upper bounds, fixed-time convergence, prescribed performance, and the generation of chattering. To overcome these obstacles, we propose the incorporation of a neural network (NN) that effectively addresses these issues by removing the constraint of a precise system model. Additionally, we introduce a novel fixed-time prescribed performance control (PPC) to enhance response performance and position-tracking accuracy, while effectively limiting overshoot and maintaining steady-state error within the predefined range. To expedite the convergence of the SM surface to its equilibrium point, we introduce a faster terminal sliding mode (TSM) surface and a novel fixed-time reaching control algorithm (RCA) with adaptable factors. By integrating these approaches, we develop a novel control strategy that successfully achieves the desired goals for robot manipulators. The effectiveness and stability of the proposed approach are validated through extensive simulations on a 3-DOF SAMSUNG FARA-AT2 robot manipulator, utilizing both Lyapunov criteria and performance evaluations. The results demonstrate improved convergence rate and tracking accuracy, reduced chattering, and enhanced controller robustness.
本文介绍了一种用于机器人操纵器的新型控制策略,该策略专门设计用于应对与传统基于模型的滑模(SM)控制器设计相关的挑战。这些挑战包括需要精确计算的系统模型、干扰上限的知识、固定时间收敛、规定性能以及抖振的产生。为了克服这些障碍,我们提出纳入一个神经网络(NN),通过消除精确系统模型的约束来有效解决这些问题。此外,我们引入了一种新型的固定时间规定性能控制(PPC),以提高响应性能和位置跟踪精度,同时有效限制超调并将稳态误差保持在预定义范围内。为了加快滑模面收敛到其平衡点,我们引入了一个更快的终端滑模(TSM)面和一种具有自适应因子的新型固定时间到达控制算法(RCA)。通过整合这些方法,我们开发了一种新型控制策略,成功实现了机器人操纵器的预期目标。利用李雅普诺夫准则和性能评估,在一个三自由度三星FARA - AT2机器人操纵器上进行了广泛的仿真,验证了所提方法的有效性和稳定性。结果表明收敛速度和跟踪精度得到提高,抖振减少,控制器鲁棒性增强。