Experimental Analysis of Robot Hybrid Calibration Based on Geometrical Identification and Artificial Neural Network

Maxime Selingue, A. Olabi, Stéphane Thiery, Richard Béarée
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引用次数: 1

Abstract

Industrial robots are known to have good repeatability and poor accuracy. However, accuracy can be improved through calibration process. Different methods of calibration can be found in the literature. In this paper, a hybrid calibration approach was applied to improve the accuracy of a lightweight collaborative robot. The approach is based on an analytical model to compensate geometric errors and on an artificial neural network to compensate residual errors (stiffness, gear errors,…. etc). The suggested approach is analysed and optimised in the work. The approach can reduce the positioning error from 3.10mm to 0.13mm on a lightweight collaborative robot in a specific sub-workspace.
基于几何识别和人工神经网络的机器人混合标定实验分析
众所周知,工业机器人具有良好的重复性和较差的精度。然而,通过校准过程可以提高精度。在文献中可以找到不同的校准方法。本文采用一种混合标定方法来提高轻型协作机器人的标定精度。该方法基于解析模型补偿几何误差,并基于人工神经网络补偿剩余误差(刚度、齿轮误差、....)等等)。在工作中对建议的方法进行了分析和优化。该方法可将轻型协作机器人在特定子工作空间内的定位误差从3.10mm减小到0.13mm。
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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