朱彦军:Welding deviation detection method based on weld pool image contour features论文

朱彦军:Welding deviation detection method based on weld pool image contour features论文

本文主要研究内容

作者朱彦军,吴志生,李科,杨培新(2019)在《Welding deviation detection method based on weld pool image contour features》一文中研究指出:Automatic on-line detection of welding deviation based on machine vision is one of the key technologies of arc welding robot tracking welding,in which obtaining high quality weld pool image and accurate welding deviation detection algorithm are two important steps of tracking welding.Through the research and analysis of the weld pool image of gas metal arc welding(GMAW),it was found that the weld pool contains abundant welding information.First,the average gray value of the weld pool image can reflect the interference degree of arc to weld pool image and the heat input of welding process.Secondly,the tip of the weld pool image contour can reflect the center of the groove gap.Finally,the horizontal distance between the center coordinate of the wire contour and the tip coordinate of the weld pool image contour can reflect the welding deviation.On the basis of analyzing the characteristics of weld pool image,this paper proposes a new method of weld seam deviation detection,which includes the collection of weld pool image,image preprocessing,contour extraction and deviation calculation.The results of the tests and analyses showed that the maximum error of the on-line welding deviation obtained was about 2 pixels(0.17 mm) when the welding speed was ≤60 cm/min,and the algorithm was stable enough to meet the requirements of real-time deviation detection for I-groove butt welding.The method can be applied to the on-line automatic welding deviation detection of arc welding robot.

Abstract

Automatic on-line detection of welding deviation based on machine vision is one of the key technologies of arc welding robot tracking welding,in which obtaining high quality weld pool image and accurate welding deviation detection algorithm are two important steps of tracking welding.Through the research and analysis of the weld pool image of gas metal arc welding(GMAW),it was found that the weld pool contains abundant welding information.First,the average gray value of the weld pool image can reflect the interference degree of arc to weld pool image and the heat input of welding process.Secondly,the tip of the weld pool image contour can reflect the center of the groove gap.Finally,the horizontal distance between the center coordinate of the wire contour and the tip coordinate of the weld pool image contour can reflect the welding deviation.On the basis of analyzing the characteristics of weld pool image,this paper proposes a new method of weld seam deviation detection,which includes the collection of weld pool image,image preprocessing,contour extraction and deviation calculation.The results of the tests and analyses showed that the maximum error of the on-line welding deviation obtained was about 2 pixels(0.17 mm) when the welding speed was ≤60 cm/min,and the algorithm was stable enough to meet the requirements of real-time deviation detection for I-groove butt welding.The method can be applied to the on-line automatic welding deviation detection of arc welding robot.

论文参考文献

  • [1].Welding Deviation Detection Algorithm Based on Extremum of Molten Pool Image Contour[J]. ZOU Yong,JIANG Lipei,LI Yunhua,XUE Long,HUANG Junfen,HUANG Jiqiang.  Chinese Journal of Mechanical Engineering.2016(01)
  • [2].Deviation Prevention Ability of Rollers in Continuous Annealing Furnace and Application[J]. ZHANG Yan, YANG Quan, HE An-rui, YAO Xi-jiang, GUO De-fu (National Engineering Research Center of Advanced Rolling, University of Science and Technology Beijing, Beijing 100083, China).  Journal of Iron and Steel Research(International).2012(12)
  • [3].Deformation behavior of A6063 tube with initial thickness deviation in free hydraulic bulging[J]. 杨连发,郭成,邓洋.  Transactions of Nonferrous Metals Society of China.2006(S3)
  • [4].The Stress Analysis for Notched Specimen of Brittle Material under Plane Dead Loading[J]. Zhu Qifang He Yaozu General Research Institute for Non-ferrous Metals,Beijing.  Rare Metals.1989(04)
  • [5].A Statistical Model of Quantitative Relationship between Striation Spacings and Fatigue Crack Growth Rates[J]. 杨京俊,柯伟.  Journal of Materials Science & Technology.1989(06)
  • [6].Angle-deviation optical profilometer[J]. 谭振台,詹远生,林振勤,邱铭宏.  Chinese Optics Letters.2011(01)
  • [7].Mechanism Modeling and Simulation Based on Dimensional Deviation[J]. 王亚斌,刘明杰,谭惠民.  Journal of Beijing Institute of Technology.2008(04)
  • [8].New separation algorithm for touching grain kernels based on contour segments and ellipse fitting[J]. Cheol-Woo PARK,Sang-Ryong LEE,Choon-Young LEE.  Journal of Zhejiang University-Science C(Computers & Electronics).2011(01)
  • [9].Interpolation-based contour error estimation and componentbased contouring control for five-axis CNC machine tools[J]. LI XiangFei,ZHAO Huan,ZHAO Xin,DING Han.  Science China(Technological Sciences).2018(11)
  • [10].Comprehensive contour prediction model of work rolls in hot wide strip mill[J]. Xiaodong Wang, Quan Yang, Anrui He, and Renzhong Wang National Engineering Research Center for Advanced Rolling Technology, University of Science and Technology Beijing, Beijing 100083, China.  Journal of University of Science and Technology Beijing.2007(03)
  • 论文详细介绍

    论文作者分别是来自China Welding的朱彦军,吴志生,李科,杨培新,发表于刊物China Welding2019年02期论文,是一篇关于,China Welding2019年02期论文的文章。本文可供学术参考使用,各位学者可以免费参考阅读下载,文章观点不代表本站观点,资料来自China Welding2019年02期论文网站,若本站收录的文献无意侵犯了您的著作版权,请联系我们删除。

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