现代制造工程 ›› 2026, Vol. 545 ›› Issue (2): 42-49.doi: 10.16731/j.cnki.1671-3133.2026.02.006

• 机器人技术 • 上一篇    下一篇

基于运动过程要素采样的机器人运动误差补偿方法

赖俊杰1, 丁杰雄1, 华晨辉2, 樊腾娇1, 杜丽1, 王伟1   

  1. 1 电子科技大学机械与电气工程学院,成都 611731;
    2 成都工业学院智能制造学院,成都 611730
  • 收稿日期:2025-01-17 出版日期:2026-02-18 发布日期:2026-03-18
  • 作者简介:赖俊杰,硕士,主要研究方向为机器人运动精度。E-mail:384795490@qq.com

Robot motion error compensation method based on sampling of kinematic process elements

LAI Junjie1, DING Jiexiong1, HUA Chenhui2, FAN Tengjiao1, DU Li1, WANG Wei1   

  1. 1 School of Mechanical and Electrical Engineering, University of Electronic Science and Technology of China, Chengdu 611731, China;
    2 School of Intelligent Manufacturing, Chengdu Technological University, Chengdu 611730, China
  • Received:2025-01-17 Online:2026-02-18 Published:2026-03-18

摘要: 为了提高机器人的运动精度,提出一种基于运动过程要素采样的运动误差离线补偿方法,能够有效减少机器人的轨迹偏差。考虑关节运动过程,基于LSTM-DNN神经网络建立机器人跟踪误差预测模型;为了使预测模型能有效学习机器人的动态特性,采用拉丁超立方抽样技术在高维空间中构建用于模型训练的轨迹数据集;基于跟踪误差预测模型估计机器人在执行任务时的实际运动轨迹,将其与理论轨迹对比,基于法平面方法计算补偿量并实施前馈补偿。试验结果表明,误差补偿后测试轨迹的轨迹偏差RMSE从1.106 5 mm降至0.296 0 mm,能有效提高机器人的运动精度。

关键词: 跟踪误差预测, LSTM, 轨迹偏差, 离线补偿, 机器人

Abstract: To enhance the motion accuracy of robots,a motion error offline compensation method based on kinematic process element sampling was proposed,which effectively reducing the trajectory deviation of robots. Considering the motion process of joints,a robot tracking error prediction model was established based on LSTM-DNN neural network. In order to enable the predictive model to effectively learn the dynamic characteristics of the robot,a trajectory dataset for model training was constructed in high-dimensional space using Latin hypercube sampling technique. The actual motion trajectory of the robot during task execution was estimated based on the tracking error prediction model. This trajectory was then compared with the theoretical trajectory,and compensation was calculated using the normal plane method to implement feedforward compensation. Experimental results show that the trajectory deviation RMSE of the tested trajectory after error compensation is reduced from 1.106 5 mm to 0.296 0 mm,effectively enhancing the robot′s motion accuracy.

Key words: tracking error prediction, LSTM, trajectory deviation, offline compensation, robotics

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