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Detecting dynamic development of weld pool using machine learning from innovative composite images for adaptive welding

机译:采用机器学习从创新的复合图像进行自适应焊接检测焊接池动态发展

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摘要

Gas tungsten arc welding (GTAW) is the primary joining process for critical applications where joining precision is crucial. However, variations in manufacturing conditions adversely affect the joining precision. The dynamic joining process needs to be monitored and adaptively controlled to assure the specified weld quality be produced despite variations. Among required weld qualities, the weld joint penetration is often the most critical one as an incomplete penetration causes explosion under high temperature/pressure and an excessive penetration/heat input affects the flow of fluids and degrades materials properties. Unfortunately, detecting its development, how the melted metal has developed within the work-piece, is challenging as it occurs underneath and is not directly observable. The key to solving the problem is to find, or design, measurable physical phenomena that are fully determined by the weld penetration and then correlate the phenomena to the penetration. Analysis shows that the weld pool surface that is directly observable using an innovative active vision method developed at the University of Kentucky is correlated to the thermal expansion of melted metal, thus the weld penetration. However, the surface is also affected by prior conditions. As such, we propose to form a composite image from the image taken from the initial pool, reflecting prior condition and from real-time developing pool such that this single composite image reflecting the measurable phenomena is only determined by the development of the weld penetration. To further correlate the measurable phenomena to the weld penetration, conventional methods analyze the date/images and propose features that may fundamentally characterize the phenomena. This kind of hand engineering method is tedious and does not assure success. To address this challenge, a convolutional neural network (CNN) is adopted that allows the raw composite images to be used directly as the input without need for hand engineering to manually analyze the features. The CNN model is applied to train, verify and test the datasets and the generated training model is used to identify the penetration states such that the welding current can be reduced from the peak to the base level after the desired penetration state is achieved despite manufacturing condition variations. The results show that the accuracy of the CNN model is approximately 97.5%.
机译:气体钨弧焊(GTAW)是关键应用的主要连接过程,其中连接精度至关重要。然而,制造条件的变化对加入精度产生不利影响。需要监控动态连接过程并自适应地控制以确保尽管变化产生的焊接质量。在所需的焊接品质中,焊接接头渗透通常是最关键的渗透性,因为不完全渗透导致爆炸在高温/压力下产生爆炸,过度的渗透/热输入影响流体流动并降低材料性质。不幸的是,检测到其开发,如何在工件内开发熔化的金属,这是挑战,因为它发生在下面并且不可观察到。解决问题的关键是找到或设计可测量的物理现象,这些物理现象完全由焊接穿透确定,然后将现象与穿透的现象相关联。分析表明,使用在肯塔基大学开发的创新活性视觉方法直接观察的焊接池表面与熔化金属的热膨胀相关,从而焊接穿透。然而,表面也受到先前条件的影响。这样,我们建议从初始池中的图像形成复合图像,反映现有条件和实时显影池,使得反映可测量现象的这种单个合成图像仅通过焊接穿透的发展来确定。为了进一步与焊接渗透的可测量现象相关联,常规方法分析日期/图像并提出可能从根本表征现象的特征。这种手工工程方法乏味,并不保证成功。为了解决这一挑战,采用了一种卷积神经网络(CNN),其允许直接使用原始合成图像作为输入,而无需手工工程来手动分析特征。 CNN模型应用于培训,验证和测试数据集,并且所产生的训练模型用于识别渗透状态,使得尽管制造条件,焊接电流可以从峰值到基本电平。尽管制造条件达到所需的穿透状态变化。结果表明,CNN模型的准确性约为97.5%。

著录项

  • 来源
    《Journal of Manufacturing Processes》 |2020年第8期|908-915|共8页
  • 作者单位

    Beijing Univ Technol Minist Educ Welding Res Inst Beijing 100124 Peoples R China|Beijing Univ Technol Minist Educ Engn Res Ctr Adv Mfg Technol Automot Components Beijing 100124 Peoples R China|Univ Kentucky Dept Elect & Comp Engn Lexington KY 40506 USA;

    Univ Kentucky Dept Elect & Comp Engn Lexington KY 40506 USA;

    Univ Kentucky Dept Elect & Comp Engn Lexington KY 40506 USA;

    Univ Kentucky Dept Elect & Comp Engn Lexington KY 40506 USA;

    Beijing Univ Technol Minist Educ Welding Res Inst Beijing 100124 Peoples R China|Beijing Univ Technol Minist Educ Engn Res Ctr Adv Mfg Technol Automot Components Beijing 100124 Peoples R China;

    Univ Kentucky Dept Elect & Comp Engn Lexington KY 40506 USA;

    Beijing Univ Technol Minist Educ Welding Res Inst Beijing 100124 Peoples R China|Beijing Univ Technol Minist Educ Engn Res Ctr Adv Mfg Technol Automot Components Beijing 100124 Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    GTAW-P; Penetration mode; Active vision; Composite image design; CNN;

    机译:GTAW-P;渗透模式;活跃视觉;复合图像设计;CNN;

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