Grinding wheel condition monitoring with Hidden Markov model-based clustering methods

T. Warren Liao, Guogang Hua, J. Qu, P. J. Blau

Research output: Contribution to journalArticlepeer-review

41 Scopus citations

Abstract

Hidden Markov model (HMM) is well known for sequence modeling and has been used for condition monitoring. However, HMM-based clustering methods are developed only recently. This article proposes a HMM-based clustering method for monitoring the condition of grinding wheel used in grinding operations. The proposed method first extract features from signals based on discrete wavelet decomposition using a moving window approach. It then generates a distance (dissimilarity) matrix using HMM. Based on this distance matrix several hierarchical and partitioning-based clustering algorithms are applied to obtain clustering results. The proposed methodology was tested with feature sequences extracted from acoustic emission signals. The results show that clustering accuracy is dependent upon cutting condition. Higher material removal rate seems to produce more discriminatory signals/features than lower material removal rate. The effect of window size, wavelet decomposition level, wavelet basis, clustering algorithm, and data normalization were also studied.

Original languageEnglish
Pages (from-to)511-538
Number of pages28
JournalMachining Science and Technology
Volume10
Issue number4
DOIs
StatePublished - Dec 1 2006

Keywords

  • Clustering algorithm
  • Condition monitoring
  • Dissimilarity measure
  • Grinding wheel
  • Hidden Markov model
  • Sequence data

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