A Study on Fault Detection and Diagnosis of Gear Damages - A Comparison between Wavelet Transform Analysis and Kullback Discrimination Information -

기어의 이상검지 및 진단에 관한 연구 -Wavelet Transform해석과 KDI의 비교-

  • Kim, Tae-Gu (Department of Occupational Health & Safety Engineering, Inje University) ;
  • Kim, Kwang-Il (Department of Occupational Health & Safety Engineering, Inje University)
  • 김태구 (인제대학교 산업안전보건학과) ;
  • 김광일 (인제대학교 산업안전보건학과)
  • Received : 1999.10.26
  • Accepted : 2000.05.16
  • Published : 2000.06.30

Abstract

This paper presents the approach involving fault detection and diagnosis of gears using pattern recognition and Wavelet transform. It describes result of the comparison between KDI (Kullback Discrimination Information) with the nearest neighbor classification rule as one of pattern recognition methods and Wavelet transform to know a way to detect and diagnosis of gear damages experimentally. To model the damages 1) Normal (no defect), 2) one tooth is worn out, 3) All teeth faces are worn out 4) One tooth is broken. The vibration sensor was attached on the bearing housing. This produced the total time history data that is 20 pieces of each condition. We chose the standard data and measure distance between standard and tested data. In Wavelet transform analysis method, the time series data of magnitude in specified frequency (rotary and mesh frequency) were earned. As a result, the monitoring system using Wavelet transform method and KDI with nearest neighbor classification rule successfully detected and classified the damages from the experimental data.

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