This paper presents a novel method to enhance the detection and diagnosis of low-speed rolling-element bearing faults based on discrete wavelet packet analysis (DWPA). The method involves the automatic extraction of wavelet packets containing bearing faultrelated features from the discrete wavelet p
A COMPARISON OF AUTOREGRESSIVE MODELING TECHNIQUES FOR FAULT DIAGNOSIS OF ROLLING ELEMENT BEARINGS
β Scribed by D.C. Baillie; J. Mathew
- Publisher
- Elsevier Science
- Year
- 1996
- Tongue
- English
- Weight
- 543 KB
- Volume
- 10
- Category
- Article
- ISSN
- 0888-3270
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β¦ Synopsis
The paper introduces the concept of fault diagnosis using an observer bank of autoregressive time series models. The concept was applied experimentally to diagnose a number of induced faults in a rolling element bearing using the measured time series vibration signal. Three distinct techniques of autoregressive modeling were compared for their performance and reliability under conditions of various signal lengths. The results indicate that backpropagation neural networks generally outperformed the radial basis functions and the traditional linear autoregressive models. This modeling technique for fault diagnosis was found to require much shorter lengths of vibration data than traditional pattern classification techniques used in the field of machine condition monitoring.
π SIMILAR VOLUMES
There is a wide variety of condition monitoring techniques currently in use for the diagnosis and prediction of machinery faults, but little attention has been paid to the occurrence and detection of chaotic behaviour in time series vibration signals. This paper introduces some of the basic concepts