A Novel Head-following Algorithm for Multi-Joint Articulated Driven Continuum Robots

Jianyu Yang, Xuanting Li, Zhongqi Sheng, Xiaofeng Ma, Hui Shi, Hualong Xie
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Abstract

Head-following (tracking) issue is a challenge in developing multi-joint continuum robots. However various approaches have been developed in head-following algorithm for articulated-driven mechanism (ADM) continuum robots, problems still exist such as low end-accuracy, large trajectory deviation, and low computational efficiency. This paper presents a novel head-following algorithm(NHF) with high precision, small trajectory deviation, and high computational efficiency for multi-joint ADM continuum robots. The proposed algorithm first uses the follow-the-leader (FTL) method to search for planning points. Secondly, the end-effector errors are calculated, split, and adjusted. Thirdly, the error judgment set is assigned based on the error rate of the end-effector, and also the joints that need to be adjusted are determined. Finally, the joint angles are iteratively adjusted. In this paper, the NHF algorithm is simulated on ADM continuum robots with saparately 10, 20 and 31 joints. The result shows that, compareing with other FTL algorithms, NHF algorithm has the highest end accuracy, and the smallest trajectory deviation.
多关节驱动连续机器人的新型头部跟随算法
头部跟踪(追踪)问题是开发多关节连续机器人的一个挑战。尽管针对关节驱动机构(ADM)连续机器人的头部跟踪算法已开发出多种方法,但仍然存在末端精度低、轨迹偏差大和计算效率低等问题。本文提出了一种适用于多关节 ADM 连续机器人的高精度、小轨迹偏差和高计算效率的新型头部跟随算法(NHF)。所提出的算法首先使用 "跟随领导者(FTL)"方法来搜索规划点。其次,计算、分割和调整末端执行器误差。第三,根据末端执行器的误差率分配误差判断集,并确定需要调整的关节。最后,对关节角度进行迭代调整。本文在 ADM 连续机器人上对 NHF 算法进行了仿真,关节数分别为 10、20 和 31。结果表明,与其他超光速算法相比,NHF 算法的末端精度最高,轨迹偏差最小。
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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