自由自由机器人模型的动态控制系统

Choi,Young-Kiu, Park,Jin-Hyun
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引用次数: 0

摘要

研究了冗余度机器人机械手的动态控制问题。传统上,冗余度机器人的运动学控制方案是从速度的角度出发,并假设机械臂的动态控制是完美的。然而,在现实中,由于冗余度机器人的动力学特性,对其进行精确控制是非常困难的。因此,在加速度维度上采用冗余度机器人机械手的运动学控制器,并可与计算扭矩方法相结合,以实现精确的控制性能。但它们的控制性能受限于机械手参数的精度,如连杆质量、长度、转动惯量和可变载荷。因此,本文针对典型载荷,采用遗传算法对计算得到的转矩控制器的比例和导数控制增益进行优化,并应用神经网络对任意载荷获得合适的控制增益。仿真结果表明,对于冗余度机器人,所提出的控制方法比传统的控制方法具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
여유자유도 로봇 매니퓰레이터를 위한 동적제어시스템
This paper deals with the dynamic control of redundant robot manipulator. Traditionally, the kinematic control schemes for redundant robot manipulator were developed from the point of speed and used under the assumption that the dynamic control of manipulator is perfect. However, in reality, the precise control of redundant robot manipulator is very difficult due to their dynamics. Therefore, the kinematic controllers for redundant robot manipulator were employed in the acceleration dimension and may be combined with the computed torque method to achieve the accurate control performance. But their control performance is limited by the accuracy of the manipulator parameters such as the link mass, length, moment of inertia and varying payload. Hence in this paper, the proportional and derivative control gains of the computed torque controller are optimized by the genetic algorithm on the typical payloads, and the neural network is applied to obtain the proper control gains for arbitrary loads. The simulation results show that the proposed control method has better performance than the conventional control method for redundant robot manipulator.
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