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In-process virtual verification of weld seam removal in robotic abrasive belt grinding process using deep learning

机译:使用深度学习对机器人砂带磨削过程中焊缝去除的过程虚拟验证

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摘要

Transforming the manufacturing environment from manually operated production units to unsupervised robotic machining centres requires a presence of reliable in-process monitoring system. In this paper, we demonstrate a technique for automatic endpoint detection of weld seam removal in a robotic abrasive belt grinding process with the help of a vision system using deep learning. The paper presents the results of the first investigative stage of semantic segmentation of weld seam removal states using encoder-decoder convolutional neural networks (EDCNN). An experimental investigation using four different weld seam states on mild steel work coupon are trained using the VGG-16 network based on encoder-decoder architecture. The results demonstrate the potential of the developed vision based methodology as a tool for endpoint prediction of the weld seam removal in real time during a compliant abrasive belt grinding process. The prediction system based on semantic segmentation is able to monitor weld profile geometry evolution taking into account the varying belt grinding parameters during machining which will allow further process optimisation.
机译:将制造环境从人工操作的生产单位转变为无人监督的机器人加工中心,需要可靠的过程监控系统。在本文中,我们演示了一种在机器人砂带磨削过程中借助深度学习的视觉系统自动检测焊缝去除终点的技术。本文介绍了使用编码器-解码器卷积神经网络(EDCNN)对焊缝去除状态进行语义分割的第一个调查阶段的结果。使用基于编码器-解码器体系结构的VGG-16网络,对低碳钢工作试样上使用四种不同焊缝状态的实验研究进行了训练。结果证明了开发的基于视觉的方法学的潜力,该工具可用于在顺应性砂带磨削过程中实时实时预测焊缝去除的终点。基于语义分割的预测系统能够在加工过程中考虑到变化的砂带磨削参数来监控焊接轮廓几何形状的演变,这将进一步优化工艺。

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