基于深度学习的机器人定位误差补偿

Sami Sellami, A. Klimchik
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引用次数: 3

摘要

机器人的位置精度在先进的工业应用中起着非常重要的作用,目前大多数工业机器人具有良好的可重复性,但由于非几何标定参数难以建模和识别,仍然存在一定的绝对位置误差。本文研究了一种利用传统识别方法和神经网络来减小机器人绝对位置误差的方法。为了提高机器人的精度,我们建议首先识别可确定的误差源(几何误差和关节挠度误差),然后使用基于深度学习的方法识别难以正确完整建模的非几何误差源(如连杆顺应度、齿轮间隙等)。该算法在UR-10机器人上进行了仿真测试,仅使用测量数据和深度学习方法就能够以较高的精度识别一些预定义的参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A deep learning based robot positioning error compensation
Robot position accuracy plays a very important role in advanced industrial applications, nowadays, most of the industrial robots have excellent repeatability, however, it still always remain some absolute position error that are due to non geometric calibration parameters that are hard to model and identify. The present work studied a method to reduce the absolute position error of robots using conventional identification procedures as well as neural networks.In order to increase the robot accuracy, we propose to first identify determinable error sources (geometric errors and joint deflection errors), then, use deep learning based methods to identify the non-geometric error sources such as link compliance, gear backlash, and others, which are difficult to model correctly and completely. The algorithm is tested on simulation with the UR-10 robot and is able to identify some predefined parameters with a high level of accuracy using only measurements data and deep learning methods.
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