Intelligent quality estimation system using primary circuit variables of RSW

저항점용접 1차 공정변수를 이용한 지능형 용접품질 판단 시스템

  • 조용준 (한양대학교 정밀기계공학과 대학원) ;
  • 이세헌 (한양대학교 기계공학부) ;
  • 신현일 (현대자동차 울산공장 차체기술 계획팀) ;
  • 배경민 (현대자동차 울산공장 차체기술 계획팀) ;
  • 권태용 (현대자동차 울산공장 차체기술 계획팀)
  • Published : 1999.10.01

Abstract

The dynamic resistance monitoring is one of the important issues in that in-process and real time quality assurance of resistance spot weld is needed to increase the product reliability. Secondary dynamic resistance patterns, as a real manner, are hard to adapt those factors in real time and in-plant system. In the present study, a new dynamic resistance detecting method is presented as a practical manner of weld quality assurance at the primary circuit. By the correlation analysis, it is found that the primary dynamic resistance patterns are basically similar to those of the secondary. Various dynamic resistance indices are characterized with the primary curve. And quality of the weld, like the tensile shear strength, is estimated using adaptive neuro-fuzzy estimation system which is consisted of the Sugeno fuzzy algorithm. Through the fuzzy clustering and parameter optimization, real time weld quality assurance system with less efforts is proposed.

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