Adaptive Parallel Iterative Learning Control with A Time-Varying Sign Gain Approach Empowered by Expert System

Phichitphon Chotikunnan, Rawiphon Chotikunnan, Panya Minyong
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引用次数: 2

Abstract

This study explores the incorporation of time-varying sign gain into a parallel iterative learning control (ILC) architecture, augmented by an expert system, to enhance the performance and stability of a robotic arm system. The methodology involves iteratively tuning the learning control gains using time-varying sign gain guided by an expert system. Stability analysis, encompassing asymptotic and monotonic convergence, demonstrates promising results across multiple joints, affirming the effectiveness of the proposed control architecture. In comparison with traditional PID control, fixed gain ILC, and ILC with adaptive learning in the expert system, the analysis focuses on stability, precision, and adaptability, using root mean square error (RMSE) as a key metric. The results show that ILC with adaptive learning from the expert system consistently reduces RMSE, even in the presence of learning transients. This adaptability effectively controls the learning transients, ensuring improved performance in subsequent iterations. In conclusion, the integration of time-varying sign gain with expert system assistance in a parallel ILC architecture holds promise for advancing adaptive control in robotic systems. Positive outcomes in stability, precision, and adaptability suggest practical applications in real-world scenarios. This research provides valuable insights into the implementation of dynamic learning mechanisms for enhanced robotic system performance, laying the groundwork for future refinement in robotic manipulator control systems.
借助专家系统的时变符号增益方法实现自适应并行迭代学习控制
本研究探讨了将时变符号增益纳入并行迭代学习控制(ILC)架构,并辅以专家系统,以提高机械臂系统的性能和稳定性。该方法包括在专家系统的指导下,利用时变符号增益迭代调整学习控制增益。稳定性分析包括渐近收敛和单调收敛,在多个关节上显示出良好的结果,肯定了所提出的控制架构的有效性。与传统的 PID 控制、固定增益 ILC 和专家系统中带有自适应学习功能的 ILC 相比,以均方根误差(RMSE)为关键指标,重点分析了稳定性、精确性和适应性。结果表明,即使存在学习瞬态,专家系统中带有自适应学习功能的 ILC 也能持续降低 RMSE。这种适应性有效地控制了学习瞬态,确保在后续迭代中提高性能。总之,在并行 ILC 架构中集成时变符号增益和专家系统辅助,有望推动机器人系统的自适应控制。在稳定性、精确性和适应性方面取得的积极成果表明,在现实世界中的应用是切实可行的。这项研究为提高机器人系统性能的动态学习机制的实施提供了宝贵的见解,为机器人机械手控制系统的未来完善奠定了基础。
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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来源期刊
CiteScore
6.30
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0.00%
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