Novel Method for Improving Motion Accuracy of a Large-Scale Industrial Robot to Perform Offline Teaching Based on Gaussian Process Regression

N. Maeda, D. Kato, T. Hirogaki, E. Aoyama
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Abstract

Industrial robots that can respond to the current needs for variable-type and variable-volume production and that can play a variety of roles such as processing and transporting with a single robot to reduce time and cost. If realized, these robots will help save space in factories and increase production efficiency. However, this requires high positioning accuracy of the robot. In this study, we analyze the motion accuracy of industrial robots and their compensation method to construct this system. Here, we use a laser tracker to measure the coordinates of the hand tip of the robot when the robot is stationary. Subsequently, the error amount in an arbitrary posture is predicted using a Gaussian process. Furthermore, Bayesian optimization is used to efficiently search for points where the positioning error norm is likely to be large, which is then compensated for by a feedback method. This method successfully reduced the time cost of the experiment to approximately one-tenth of that required in the previous study and achieved a correction of approximately 66 %. However, because this method alone does not perform an exhaustive measurement, it is unclear whether all the points predicted to have small errors are so small that they do not require correction. Therefore, future studies, we will aim to verify this issue by considering the time efficiency.
基于高斯过程回归提高大型工业机器人离线教学运动精度的新方法
工业机器人是一种能够适应当前变类型、变批量生产的需求,能够发挥加工、运输等多种作用,以减少时间和成本的机器人。如果实现,这些机器人将有助于节省工厂空间,提高生产效率。然而,这对机器人的定位精度要求很高。在本研究中,我们分析了工业机器人的运动精度及其补偿方法来构建该系统。在这里,我们使用激光跟踪器来测量机器人静止时手尖的坐标。然后,利用高斯过程预测任意姿态下的误差量。在此基础上,利用贝叶斯优化算法对定位误差范数较大的点进行有效搜索,并用反馈方法对定位误差范数进行补偿。该方法成功地将实验时间成本降低到以前研究所需时间的十分之一左右,并实现了约66%的正确率。然而,由于这种方法本身并不能进行详尽的测量,因此尚不清楚是否所有预测有小误差的点都小到不需要校正。因此,在未来的研究中,我们将从时间效率的角度来验证这一问题。
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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