基于学习的扰动补偿广义预测控制在重复操作中的应用

L. Kwek, A. Tan, E. K. Wong
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引用次数: 0

摘要

针对执行重复性跟踪任务的双连杆平面机器人,提出了一种增强广义预测控制(GPC)方案。所提出的gpc增益集成了一种结合迭代学习控制(ILC)和实时反馈控制(RFC)的干扰补偿方案。用最小均方误差估计器估计重复扰动引起的输出误差。通过对该滤波输出误差的重复学习,ILC预测重复干扰的模式。另一方面,RFC根据正在进行的周期中的误差反馈信息推断非重复干扰的影响。采用增益自适应方法调节ILC的学习活动。然后在约束GPC优化过程中对这些估计扰动的影响进行补偿。在十种干扰情况下,所提出的GPC-Gain方案显著降低了轨迹跟踪误差,平均均方误差(MSE)仅为基准的49.53%。最重要的是,所提出的控制器提供了光滑和有界的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of generalized predictive control with learning-based disturbance compensator in repetitive operations
This paper presents the implementation of an enhanced generalized predictive control (GPC) scheme on a two-link planar robotic manipulator performing some repetitive tracking task. The proposed GPC-Gain incorporates a disturbance compensation scheme that combines iterative learning control (ILC) and real-time feedback (RFC) controls. A least mean square error (LMSE) estimator is used to estimate output error caused by repeating disturbances. Through repetitive learning from this filtered output error, ILC predicts the pattern of repeating disturbance. On the other hand, RFC deduces the effect of non-repeating disturbance based on the error feedback information during the ongoing cycle. The learning activity by ILC is regulated using a gain adaptation method. The effect of these estimated disturbances is then compensated in advance in the constrained GPC optimization procedure. Over ten disturbance scenarios, the proposed GPC-Gain scheme reduces the trajectory tracking errors significantly where the average mean squared error (MSE) is merely 49.53% of that of the benchmark. Most importantly, the proposed controller provides a smooth and bounded solution.
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