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首页> 外文期刊>Journal of Manufacturing Processes >Machine learning of weld joint penetration from weld pool surface using support vector regression
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Machine learning of weld joint penetration from weld pool surface using support vector regression

机译:使用支持向量回归从焊接池表面的焊接接头渗透的机器学习

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摘要

Skilled human welders can control the weld joint penetration through observing the molten pool. This suggests that a model may be developed to predict the backside bead width, that quantitively measures the weld joint penetration, from the weld pool surface. However, the weld pool surface is specular and subject to the radiation of the arc such that its measurement is challenging. At the University of Kentucky, the weld pool surface is measured using an innovative a 3-D vision sensor that can overcome the challenges caused by the specular nature and arc radiation; and the measured surface is characterized by three parameters. Because of the lack of physics based model, neural networks would typically be used to approximate the unknown correction, which is nonlinear in general, between the backside bead width and the characteristics parameters. Unfortunately, neural networks require large amount of data to train for adequate model accuracy. While the weld pool surface can be measured using the innovative 3D sensor, the ground truth for the backside bead width needs to be measured offline after the experiment and to this end the work-work needs to appropriately cleaned/processed. Large amount of training data needed may not be easily obtained. To improve the critical ability to accurately predict the backside bead width, models need to be established from relatively small amount of training data. To this end, the authors propose to use the support vector regression (SVR) method and hypothesize that a SVR model trained using the small amount of the training data available would perform better than that a multi-layer perceptron (MLP) artificial neural network model trained using the same data. Modeling results show that for the relatively small training data available, the optimized SVR model provides a more accurate prediction to the backside bead width. As such, the authors systematically advanced the ability to accurately predict the weld joint penetration. The use of the innovative 3D sensor to obtain the 3D weld pool surface and the proposed use of the support vector method to address the small data issue played crucial roles.
机译:熟练的人体焊工可以通过观察熔池来控制焊接接头渗透。这表明可以开发模型以预测后侧珠宽,其定量地测量焊接池表面的焊接接头穿透。然而,焊接池表面是镜面的并且受电辐射的影响,使其测量是具有挑战性的。在肯塔基大学,焊接池表面采用创新的三维视觉传感器测量,可以克服镜面性质和电弧辐射引起的挑战;并且测量的表面的特征在于三个参数。由于基于物理学的缺乏模型,神经网络通常用于近似未知校正,这通常是非线性的,在后侧珠宽和特征参数之间是非线性的。不幸的是,神经网络需要大量数据来训练以获得足够的模型精度。虽然可以使用创新的3D传感器测量焊接池表面,但需要在实验后离线测量后侧珠子宽度的原始真理,并在此期结束时,需要适当清洁/处理的工作工作。可能不容易获得需要大量的培训数据。为了提高准确预测背面珠宽的临界能力,需要从相对少量的训练数据建立模型。为此,作者建议使用支持向量回归(SVR)方法并假设使用可用的少量训练数据训练的SVR模型将比多层的Perceptron(MLP)人工神经网络模型更好使用相同的数据训练。建模结果表明,对于可用的相对较小的培训数据,优化的SVR模型对后侧珠宽度提供更精确的预测。因此,作者系统地提出了准确地预测焊接关节渗透的能力。使用创新的3D传感器来获得3D焊接池表面和建议使用支持载体方法来解决小数据问题播放了至关重要的角色。

著录项

  • 来源
    《Journal of Manufacturing Processes》 |2019年第5期|23-28|共6页
  • 作者单位

    Shanghai Jiao Tong Univ Collaborat Innovat Ctr Adv Ship & Deep Sea Explor State Key Lab Ocean Engn Shanghai Peoples R China|Univ Kentucky Dept Elect & Comp Engn Inst Sustainable Mfg Lexington KY 40506 USA;

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

    Shanghai Jiao Tong Univ Collaborat Innovat Ctr Adv Ship & Deep Sea Explor State Key Lab Ocean Engn Shanghai Peoples R China;

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

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

    Weld joint penetration; Support vector regression; Predictive control; Weld pool surface;

    机译:焊接联合渗透;支持向量回归;预测控制;焊接池表面;

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