Classification of Normal/Abnormal Conditions for Small Reciprocating Compressors using Wavelet Transform and Artificial Neural Network

웨이브렛변환과 인공신경망 기법을 이용한 소형 왕복동 압축기의 상태 분류

  • 임동수 (부경대학교 대학원 기계공학과) ;
  • 안경룡 (부경대학교 대학원 음향진동공학과) ;
  • 양보석 (부경대학교 기계공학부) ;
  • 안병하 (LG 전자(주) 디지털 어플라이언스 연구소)
  • Published : 2000.11.16

Abstract

The monitoring and diagnostics of the rotating machinery have been received considerable attention for many years. The objectives are to classify the machinery condition and to find out the cause of abnormal condition. This paper describes a signal classification method for diagnosing the rotating machinery using the artificial neural network and the wavelet transform. In order to extract salient features, the wavelet transform are used from primary noise signals. Since the wavelet transform decomposes raw time-waveform signals into two respective parts in the time space and frequency domain, more and better features can be obtained easier than time-waveform analysis. In the training phase for classification, self-organizing feature map(SOFM) and learning vector quantization(LVQ) are applied, and the accuracies of them are compared with each other. This paper is focused on the development of an advanced signal classifier to automatise the vibration signal pattern recognition. This method is verified by small reciprocating compressors, for refrigerator and normal and abnormal conditions are classified with high flexibility and reliability.

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