Application of direct adaptive generalized predictive control (GPCAD) to a robotic joint

K.B. Pimenta, J. M. Rosário, D. Dumur
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引用次数: 7

Abstract

The number of robots working in industry significantly increases due to their capacity to realize operations that requires flexibility, rapidity and accuracy. However, as quick flexible manipulators are essential to achieve this performance leading to a minor production time and small energy consumption, more resourceful control algorithms must be implemented, which can cope with important parameters variations, such as inertia. On the other side, even if predictive control has proved to be an efficient control strategy in industry, the maintenance of a high level of performances may be impossible to reach with a fixed predictive controller in case of important parameters variations. A solution is then to develop an adaptive version of the predictive controller for systems with parametric disturbances. This paper presents a direct version of adaptive generalized predictive control. The algorithm is rewritten in an original form minimizing a performance index, using a least-squares type strategy for the controller parameters on line identification and including a conditional updating test in the adaptation loop. An application of this structure to a robotic joint is finally developed, and a comparison between fixed predictive control and adaptive predictive control strategies stresses the advantages of adaptation in case of important inertia variations.
直接自适应广义预测控制在机器人关节中的应用
由于机器人能够实现需要灵活性、快速性和准确性的操作,在工业中工作的机器人数量显著增加。然而,由于快速灵活的机械手是实现这一性能的必要条件,从而导致较少的生产时间和较小的能耗,因此必须实现更灵活的控制算法,以应对重要的参数变化,如惯性。另一方面,即使预测控制在工业中被证明是一种有效的控制策略,在重要参数变化的情况下,固定的预测控制器可能无法保持高水平的性能。一个解决方案是开发一个自适应版本的预测控制器,用于具有参数扰动的系统。本文提出了一种直接的自适应广义预测控制。将该算法改写为最小化性能指标的原始形式,采用最小二乘策略在线辨识控制器参数,并在自适应回路中加入条件更新测试。最后将该结构应用于机器人关节,并将固定预测控制与自适应预测控制策略进行了比较,强调了自适应在重要惯性变化情况下的优势。
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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