Pattern Recognition of Dynamic Resistance and Real Time Quality Estimation

동저항 패턴 인식 및 실시간 품질 평가

  • 조용준 (한양대학교 정밀기계공학과 대학원) ;
  • 이세헌 (한양대학교 기계공학부)
  • Published : 2000.04.01

Abstract

Quality estimation of the weld has been one of the important issues in RSW which is a main process of the sheep metal fabrication in auto-body industry, It was well known that among the various welding process variables, dynamic resistance has a close relation with nugget formation. With this variable, it is possible to estimate the weld quality in real time. In this study, a new quality estimation algorithm is developed with the primary dynamic resistance measured at welding machine timer. For this, feature recognition method of Hopfield neural network is used. Primary resistance patterns are vectorized and classified with five patterns. The network trained by these patterns recognizes the dynamic resistance pattern and estimates the weld quality Because the process variable monitored at the primary circuit is used, it is possible to apply this system to real time application without any consideration of electrode wear or shunt effect.

Keywords