Supervised learning based observer for in-process tool offset estimation in robotic arc welding applications

Alexander Schmidt, Christian Kotschote, O. Riedel
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引用次数: 1

Abstract

Workpiece tolerances in manufacturing welding applications can lead to a deviation of the welding tool from the workpiece. Such a tool offset leads to reduced welding quality. This problem can be solved by measuring the exact workpiece geometry and orientation in advance of the welding process. However, measuring the workpiece geometry for each workpiece increases the manufacturing time. Therefore, this work presents a novel approach for an in-process tool offset observer. The observer model is retrieved via supervised learning methods based on real experimental welding data. The methods for extracting features from time-series data are described. A benchmark for multiple supervised learning methods and sensor types is presented. The accuracy of the trained models is tested by welding experiments. The significance of this paper is the demonstration of the feasibility of in-process tool offset estimation for robotic arc welding applications.
基于监督学习的观测器在机器人弧焊过程中刀具偏移估计
在制造焊接应用中,工件公差可能导致焊接工具与工件的偏差。这样的刀具偏移导致焊接质量降低。这一问题可以通过在焊接前精确测量工件的几何形状和方向来解决。然而,测量每个工件的工件几何形状会增加制造时间。因此,这项工作提出了一种新的方法,在进程中的工具偏移观察者。基于实际焊接实验数据,采用监督学习方法对观测器模型进行检索。描述了从时间序列数据中提取特征的方法。提出了多种监督学习方法和传感器类型的基准。通过焊接实验验证了模型的准确性。本文的意义在于论证了在机器人弧焊应用中刀具偏移估计的可行性。
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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