DocumentCode :
264397
Title :
Rolling element bearing fault detection using density-based clustering
Author :
Jing Tian ; Azarian, Michael H. ; Pecht, Michael
Author_Institution :
Center for Adv. Life Cycle Eng., Univ. of MarylandMaryland, College Park, MD, USA
fYear :
2014
fDate :
22-25 June 2014
Firstpage :
1
Lastpage :
7
Abstract :
Fault detection is a critical task in condition-based maintenance of rolling element bearings. In many applications unsupervised learning techniques are preferred in fault detection due to the lack of training data. Unsupervised learning techniques such as k-means clustering are most widely used in machinery health monitoring. These methods face two challenges: firstly, they cannot cluster non-convex data, which may have arbitrary shape; secondly, no rule has been established for these techniques to find a fault threshold. This paper introduces a fault detection methodology based on density clustering to address these challenges. This methodology assumes that data from healthy bearings is located in regions with a high density and data from faulty bearings is located in low density regions. By finding boundaries of these regions, which may be non-convex, data from faulty bearings can be identified. In this paper the value of the density for healthy bearings and faulty bearings is evaluated. The rate of change of the density from healthy to faulty is identified as a fault threshold. The methodology is validated by experimental data. This methodology can be applied to applications where faulty data are too difficult or costly to acquire. Also it can be used in applications where fault thresholds are difficult to determine.
Keywords :
condition monitoring; fault diagnosis; mechanical engineering computing; pattern clustering; rolling bearings; unsupervised learning; condition-based maintenance; density-based clustering; fault detection methodology; fault threshold; k-means clustering; machinery health monitoring; rolling element bearing fault detection; unsupervised learning techniques; Clustering algorithms; Fault detection; Feature extraction; Monitoring; Principal component analysis; Training data; Vibrations; density-based clustering; fault detection; fault threshold; rolling element bearing;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Prognostics and Health Management (PHM), 2014 IEEE Conference on
Conference_Location :
Cheney, WA
Type :
conf
DOI :
10.1109/ICPHM.2014.7036387
Filename :
7036387
Link To Document :
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