Open Access Open Access  Restricted Access Subscription or Fee Access

Performance Evaluation of Vision Inspection System for MIG Welding Defects

G. Senthil Kumar, U. Natarajan, G. Sankaranarayanan

Abstract


Metal Inert Gas (MIG) welding is one of the major metal joining process used to fabricate many engineered artifacts and structure such as cars, ships, space shuttles and pipe lines. Flaws resulted from welding operations are detrimental to the integrity of the fabricated artifacts or structure. Although the welding process is carried out as manually or automatically, flaws are formed during the welding operations.These flaws include lack of fusion, porosities, cracks, lack of penetration, excess weld, insufficient weld, inclusions, gas holes etc. To maintain the desirable level of structural integrity, welds must be inspected according to the established standards. In this paper, a machine vision system is introduced to extract the various features of the MIG welded joint by capturing image through CCD camera with proper illumination, and then various image processing techniques and classifier is used to calssify the defects accoriding to the international standards .This vision system is connected to the host computer and classification is done by artificial neural network based on predefined one. In this proposed method, a comparison is made between the accuracy of the single image by turn on four zones LEDs of the illumination at a time with the accuracy of the multiple images by the zones LEDs are turned on, one after the other This proposed method enables overall accuracy of the four zones of the images as 95% from the 40 samples of the welded images and finally parameters are used to evaluate the performance of the proposed system.

Keywords


MIG Welding,Welding Defects, Vision System, Feature Extraction.

Full Text:

PDF

References


T. Warren Liao (2009) Improving the accuracy of computer-aided radiographic weld inspection by feature selection. NDT&E International 42:229-239.

H.I.Shafeek,E.S.Gadelmawla,A.A.Abdel-Shafy, I.M.Elewa(2004) Assessment of welding defects for gas pipeline radiographs using computer vision. NDT&E International 37:291-299.

H.I.Shafeek, E.S.adelmawla, A.A.Abdel-Shafy, I.M.Elewa(2004),Automatic inspection of gas pipeline welding defects using an expert vision system . NDT&E International 37:301-307.

Tae-HyeonKim,Tai-HoonCho,Young Shik Moon,Sung Han Park(1999) Visual inpection system for the classification of solder joints. Pattern Recognition 32: 565-575.

T.Warren Liao and jiawei Ni (1996). An automated radiographic NDT system, for weld inspection: part I- Weld extraction. NDT &E International, Vol. 29, No 3, pp 157-162, 1996.

T.W Liao and Y.M.Li (2000). An automated radiographic NDT system for weld inspection: part II- Flaw Detection. NDT &E International, Vol. 31 No 3, pp 183-192, 1998.

G.Wang and T.W Liao (2002) Automatic identification of different types of welding defects in radiographic images. NDT &E International, Vol. 35, pp 519-528, 2002.

S. Jagannathan(1997) Automatic inspection of wave soldered joints using neural networks.Journal of Manufacturing Systems. Vol.16/No.6.

Jagannathan.S(1990) Intelligent Inspection of wave soldered Joints - Technical Report. Journal of Manufacturing Systems. Vol.11/No.2

RomeuR.da Silva, Luiz P.Caloba, Marcio H.S.Siqueira, Joao M.S.Rebello(2004), Pattern recognition of weld defects detected by radiographic test. NDT&E International, Vol.37,pp 461-470.

Yan wang, Yi sun, Peng Lu, Hao wang(2008), Detection of line weld defects based on multiple threshold and support vector machine. NDT&E International, vol.41, pp:517-524.

Miguel Carrasco, Domingo Merry (2010) Automatic multiple view inspection using geometrical tracking andfeature analysis in aluminum wheels. Machine Vision and Applications.

M Sonka, H Hilavac and R Boyle, (1998) Image processing, Analysis and Machine Vision, Second Edition. PWS Publishing (USA).

Romeu R.da silva, Marcio H.S.Siqueira(2005) estimated accuracy of classification of defects detected in welded joints by radiographic tests. NDT &E International, Vol. 38, pp 335-343, 2005.

Rafael vilar, juran Zapata, Ramon Ruiz(2009), An automatic system of classification of weld defects in radiographic images. NDT&E, Vol.42, pp 467-476,2009.

Xin Wang, Brain Stephen Wang and Ching Seong Tan (2010), recognition of welding defects in Radigraphic images by using Support Vector Machine classifer. Research journal of Applied Sciences, Engineering and Technology2(3):295-301.

D.Mery, M.A.Berti(2003), Automatic detection of welding defects using texture features. Insight vol.45 No:10, october2003.




DOI: http://dx.doi.org/10.36039/AA042011014

Refbacks

  • There are currently no refbacks.


Creative Commons License
This work is licensed under a Creative Commons Attribution 3.0 License.