Using a fuzzy supervisor to optimize multiple criteria in redundant robots

M. Hanson, R. Tolson
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引用次数: 4

Abstract

Kinematically redundant robots are robots that have more degrees of freedom than necessary to complete a desired task. Traditionally, the extra degrees of freedom have been used to optimize a single criterion such as joint torques minimization, obstacle avoidance, or minimization of flexible base vibrations. Because these approaches do not consider hardware limitations such as joint and rate limits, optimizing a single criterion often leads to high joint velocities and instabilities. To overcome these problems, it has been suggested that multiple criteria be optimized. Although optimizing multiple criteria offers the possibility of stabilizing joint solutions, it is difficult to choose the required weights associated with each criterion. This paper presents results using a fuzzy logic supervisor to decide the relative importance of each criterion and compute time-varying weights.
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基于模糊监督的冗余机器人多准则优化
运动学冗余机器人是指具有比完成期望任务所需的更多自由度的机器人。传统上,额外的自由度被用于优化单个标准,如关节扭矩最小化、避障或柔性基座振动最小化。由于这些方法没有考虑关节和速率限制等硬件限制,因此优化单一标准通常会导致关节速度和不稳定性高。为了克服这些问题,有人建议对多个标准进行优化。虽然优化多个准则提供了稳定关节解的可能性,但很难选择与每个准则相关联的所需权重。本文给出了用模糊逻辑监督器确定各准则的相对重要性并计算时变权重的结果。
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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