밀링공정의 적응모델링과 공구마모 검출을 위한 신경회로망의 적용

Adaptive Milling Process Modeling and Nerual Networks Applied to Tool Wear Monitoring

  • 고태조 (포항공과대학 대학원 기계공학과) ;
  • 조동우 (포항공과대학 기계공학과)
  • Ko, Tae-Jo ;
  • Cho, Dong-Woo
  • 발행 : 1994.02.01

초록

This paper introduces a new monitoring technique which utilizes an adaptive signal processing for feature generation, coupled with a multilayered merual network for pattern recognition. The cutting force signal in face milling operation was modeled by a low order discrete autoregressive model, shere parameters were estimated recursively at each sampling instant using a parameter adaptation algorithm based on an RLS(recursive least square) method with discounted measurements. The influences of the adaptation algorithm parameters as well as some considerations for modeling on the estimation results are discussed. The sensitivity of the extimated model parameters to the tool state(new and worn tool)is presented, and the application of a multilayered neural network to tool state monitoring using the previously generated features is also demonstrated with a high success rate. The methodology turned out to be quite suitable for in-process tool wear monitoring in the sense that the model parameters are effective as tool state features in milling operation and that the classifier successfully maps the sensors data to correct output decision.

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