Development of Inference Algorithm for Bead Geometry in GMAW using Neuro-Fuzzy

Neuro-Fuzzy를 이용한 GMA 용접의 비드형상 추론 알고리즘 개발

  • 김면희 (경북대 대학원 기계공학과) ;
  • 이종혁 (경북대 대학원 기계공학과) ;
  • 이태영 (구미 1대학 자동차기계공학전공) ;
  • 이상룡 (경북대 공과대학 기계공학부)
  • Published : 2002.05.01

Abstract

In GMAW(Gas Metal Arc Welding) process, bead geometry (penetration, bead width and height) is a criterion to estimate welding quality. Bead geometry is affected by welding current, arc voltage and travel speed, shielding gas, CTWB (contact- tip to workpiece distance) and so on. In this paper, welding process variables were selected as welding current, arc voltage and travel speed. And bead geometry was reasoned from the chosen welding process variables using negro-fuzzy algorithm. Neural networks was applied to design FL(fuzzy logic). The parameters of input membership functions and those of consequence functions in FL were tuned through the method of learning by backpropagation algorithm. Bead geometry could be reasoned from welding current, arc voltage, travel speed on FL using the results learned by neural networks.

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