滑模控制流体肌肉驱动并联机器人的自适应迭代学习控制

Zhang Xinxin, Min Li, Huafeng Ding
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摘要

本文提出了一种结合滑模控制技术的自适应迭代学习控制(AILC)方法,以提高流体肌肉驱动并联机器人重复任务的力控制性能。与传统的迭代学习控制方法不同,本文提出的AILC是学习控制器时变参数,而不是学习控制信号。针对AILC对非重复干扰敏感的特点,引入了滑模变结构技术来增强其鲁棒性。由于控制器设计中不涉及模型信息,因此该方法是一种完整的数据驱动方法。从而避免了获得精确模型的困难。对二自由度调频驱动并联机械臂进行了仿真研究。仿真结果表明,该方法具有良好的力跟踪性能和鲁棒性。
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Adaptive Iterative Learning Control of Fluidic Muscle Driven Parallel Manipulators for Force Control With Sliding Mode Technique
In this paper, an adaptive iterative learning control (AILC) method combined with sliding mode technique is proposed to improve the force control performance for repeating tasks of fluidic muscle (FM) driven parallel manipulators. Different from the traditional iterative learning control method, the proposed AILC is to learn the controller time-varying parameters rather than to learn the control signals. Since the AILC is sensitive to non-repetitive disturbances, the sliding mode technique is introduced to enhance the robustness. Since no model information involved in the controller design, the proposed method is a complete data-driven method. Hence, the difficulty of obtaining accurate model is avoided. Simulation studies are performed on a two degrees of freedom FM driven parallel manipulator. Simulation results demonstrate that the proposed method can achieve high force tracking performance and robustness.
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