Machine assisted manual torch operation in gas tungsten arc welding process

N. Huang, Shujun Chen, Yuming Zhang
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Abstract

Skills possessed by human welders typically require a long time to develop. Especially, maintaining the torch to travel in desired speed is challenging. In this paper, a feedback control system is designed and implemented to assist the welder to adjust the torch movement for the desired speed in manual gas tungsten arc welding (GTAW) process. To this end, an innovative helmet based manual welding platform is proposed and developed. In this system, vibrators are installed on the helmet to generate vibration sounds to instruct the welder to speed or slow down the torch movement. The torch movement is monitored by a leap motion sensor. The torch speed is used as the feedback for the control algorithm to determine how to change the vibrations. To design the control algorithm, dynamic experiments are conducted to correlate the arm movement (torch speed) to the vibration control signal. Linear model is firstly identified using standard least squares method, and the model is analyzed. A nonlinear Adaptive Neuro-Fuzzy Inference System (ANFIS) model is then proposed to improve the modeling performance. The resultant nonlinear ANFIS model can estimate the welder's response on the welding speed with acceptable accuracy. Based on the response model, a PID control algorithm has been designed and implemented to control the welder arm movement for desired torch speed. Experiments verified the effectiveness of the system for the desired speed with acceptable accuracy.
在钨气弧焊过程中,机器辅助人工焊枪操作
人类焊工所拥有的技能通常需要很长时间才能发展。特别是,保持火炬以所需的速度行进是具有挑战性的。本文设计并实现了一种反馈控制系统,以辅助焊工将焊枪运动调整到所需的速度。为此,提出并开发了一种新型的基于头盔的手工焊接平台。在这个系统中,振动器安装在头盔上,产生振动声音,指示焊工加快或减慢火炬的运动。火炬的运动由一个跳跃运动传感器监测。火炬速度被用作控制算法的反馈,以确定如何改变振动。为了设计控制算法,进行了动态实验,将手臂运动(火炬速度)与振动控制信号相关联。首先利用标准最小二乘法识别线性模型,并对模型进行分析。为了提高建模性能,提出了一种非线性自适应神经模糊推理系统(ANFIS)模型。由此建立的非线性ANFIS模型能够以可接受的精度估计焊机对焊接速度的响应。基于响应模型,设计并实现了一种PID控制算法来控制焊机臂的运动以达到期望的焊枪速度。实验验证了该系统的有效性,达到了期望的速度和可接受的精度。
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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