Intelligent Manufacturing Technology

Penetration Estimation of GMA Backing Welding Based on Weld Pool Geometry Parameters

  • Junfen Huang ,
  • Long Xue ,
  • Jiqiang Huang ,
  • Yong Zou ,
  • Ke Ma
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  • Opto-Mechatronic Equipment Technology Beijing Area Major Laboratory, Beijing Institute of Petrochemical Technology, Beijing 102617, China

收稿日期: 2018-07-15

  网络出版日期: 2019-07-19

基金资助

Supported by National Natural Science Foundation of China (Grant No. 51505035), Key Project of Science and Technology Plan of Beijing Municipal Education Commission of China (Grant No. KZ201810017022), National Key R&D Program of China (Grant No. 2017YFB1303300) and National Science and Technology Major Project of China (Grant No. 2018ZX04044001-009)

Penetration Estimation of GMA Backing Welding Based on Weld Pool Geometry Parameters

  • Junfen Huang ,
  • Long Xue ,
  • Jiqiang Huang ,
  • Yong Zou ,
  • Ke Ma
Expand
  • Opto-Mechatronic Equipment Technology Beijing Area Major Laboratory, Beijing Institute of Petrochemical Technology, Beijing 102617, China

Received date: 2018-07-15

  Online published: 2019-07-19

Supported by

Supported by National Natural Science Foundation of China (Grant No. 51505035), Key Project of Science and Technology Plan of Beijing Municipal Education Commission of China (Grant No. KZ201810017022), National Key R&D Program of China (Grant No. 2017YFB1303300) and National Science and Technology Major Project of China (Grant No. 2018ZX04044001-009)

摘要

Penetration estimation is a prerequisite of the automation of backing welding based on vision sensing technology. However, the arc interference in welding process leads to the difficulties of extracting the weld pool characteristic information, which brings great challenges to the penetration estimation. At present, most researches focus on the extraction of weld pool geometry parameters, and the visual sensing systems are complex in structure and complicated in the image processing algorithms. The research of penetration estimation based on weld pool geometry parameters is still in the exploratory stage. The purpose of this paper is to research the relationship between the weld pool geometry parameters and the penetration during backing welding and to estimate penetration using the weld pool geometry parameters. A passive vision sensing test system for gas metal arc (GMA) backing welding was established. An image processing algorithm was developed to extract the weld pool geometry parameters, namely, the area, maximum width and length, half-length, length-width ratio and advancing contact angle (simplified as AWP, MWWP, MLWP, HLWP, LWR and ACA, respectively). The corresponding relationships between the weld pool geometry parameters and the penetration state were explored by analysing their changes with the welding current and speed. The distribution of the weld pool geometry parameters corresponding to penetration was determined. When the AWP of the weld pool is within a certain range and the values of LWR and ACA are close to their maximum and minimum respectively, the penetration is in good condition. A mathematical model with the weld pool geometry parameters as independent variables and the back-bead width (the indicator of the penetration state) as a dependent variable was established based on multivariable linear regression analysis, and relevant statistical tests were carried out. Multivariable linear regression equations for the weld pool geometry parameters and the back-bead width were deduced according to the variations in the current and speed, and the equations can be used to estimate the penetration of backing welding. The study provides a solution to penetration estimation of GMA backing welding based on automatic vision sensing.

本文引用格式

Junfen Huang , Long Xue , Jiqiang Huang , Yong Zou , Ke Ma . Penetration Estimation of GMA Backing Welding Based on Weld Pool Geometry Parameters[J]. Chinese Journal of Mechanical Engineering, 2019 , 32(3) : 55 -55 . DOI: 10.1186/s10033-019-0366-2

Abstract

Penetration estimation is a prerequisite of the automation of backing welding based on vision sensing technology. However, the arc interference in welding process leads to the difficulties of extracting the weld pool characteristic information, which brings great challenges to the penetration estimation. At present, most researches focus on the extraction of weld pool geometry parameters, and the visual sensing systems are complex in structure and complicated in the image processing algorithms. The research of penetration estimation based on weld pool geometry parameters is still in the exploratory stage. The purpose of this paper is to research the relationship between the weld pool geometry parameters and the penetration during backing welding and to estimate penetration using the weld pool geometry parameters. A passive vision sensing test system for gas metal arc (GMA) backing welding was established. An image processing algorithm was developed to extract the weld pool geometry parameters, namely, the area, maximum width and length, half-length, length-width ratio and advancing contact angle (simplified as AWP, MWWP, MLWP, HLWP, LWR and ACA, respectively). The corresponding relationships between the weld pool geometry parameters and the penetration state were explored by analysing their changes with the welding current and speed. The distribution of the weld pool geometry parameters corresponding to penetration was determined. When the AWP of the weld pool is within a certain range and the values of LWR and ACA are close to their maximum and minimum respectively, the penetration is in good condition. A mathematical model with the weld pool geometry parameters as independent variables and the back-bead width (the indicator of the penetration state) as a dependent variable was established based on multivariable linear regression analysis, and relevant statistical tests were carried out. Multivariable linear regression equations for the weld pool geometry parameters and the back-bead width were deduced according to the variations in the current and speed, and the equations can be used to estimate the penetration of backing welding. The study provides a solution to penetration estimation of GMA backing welding based on automatic vision sensing.

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