Automatic Tungsten Inert Gas (TIG) welding using machine vision and neural network on material SS304

A. Baskoro, Randy Tandian, Haikal, Andreas Edyanto, A. S. Saragih
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引用次数: 10

Abstract

Welding is a process of joining two or more substances that are based on the principles of diffusion processes, resulting in unification on the materials to be joined. The strength of the weld joint is determined by several parameters, including the weld bead width and the penetration. The width of the weld bead especially the upper part can be determined by looking directly through the CCD (Charge-Coupled Device) camera. But it is difficult to observe the back bead width directly since in practice it is impossible to install the CCD camera at the bottom of specimen. In this paper, Tungsten Inert Gas (TIG) Welding with the welding speed is controlled by the microcontroller for the purpose of adjusting the back bead width has observed. The back bead width is estimated based on data of weld bead width obtained from machine vision, welding speed, and currents that used in this experimental. It's used to obtain a series of data which would have conducted as initial experiments to train and build the neural network system. Results showed that the back bead width is 3 mm on the current 55 A, 60 A, and 65 A have an average error of each current of 0.11 mm, 0.09 mm, and 0.12 mm.
采用机器视觉和神经网络对SS304材料进行自动钨惰性气体(TIG)焊接
焊接是根据扩散过程的原理将两种或两种以上的物质连接起来,使待连接材料统一的过程。焊接接头的强度由几个参数决定,包括焊头宽度和焊透。通过CCD(电荷耦合器件)摄像机可以直接确定焊缝的宽度,特别是焊缝上部的宽度。但由于在实际操作中不可能在试样底部安装CCD相机,因此很难直接观察到后头宽度。本文观察了钨极惰性气体(TIG)焊接过程中,通过单片机控制焊接速度以调节后焊头宽度。根据实验中使用的机器视觉、焊接速度和电流获得的焊缝宽度数据估计后焊缝宽度。它被用来获取一系列数据,这些数据可以作为训练和构建神经网络系统的初始实验。结果表明,在电流为55 A、60 A和65 A时,背珠宽度为3 mm,每个电流的平均误差分别为0.11 mm、0.09 mm和0.12 mm。
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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