Train axle bearing fault detection using a feature selection scheme based multi-scale morphological filter
Abstract
This paper presents a novel signal processing scheme, feature selection based multi-scale morphological filter (MMF), for train axle bearing fault detection. In this scheme, more than 30 feature indicators of vibration signals are calculated for axle bearings with different conditions and the features which can reflect fault characteristics more effectively and representatively are selected using the max-relevance and min-redundancy principle. Then, a filtering scale selection approach for MMF based on feature selection and grey relational analysis is proposed. The feature selection based MMF method is tested on diagnosis of artificially created damages of rolling bearings of railway trains. Experimental results show that the proposed method has a superior performance in extracting fault features of defective train axle bearings. In addition, comparisons are performed with the kurtosis criterion based MMF and the spectral kurtosis criterion based MMF. The proposed feature selection based MMF method outperforms these two methods in detection of train axle bearing faults.
- Publication:
-
Mechanical Systems and Signal Processing
- Pub Date:
- February 2018
- DOI:
- 10.1016/j.ymssp.2017.09.007
- Bibcode:
- 2018MSSP..101..435L
- Keywords:
-
- Morphology filter;
- Scale;
- Feature selection;
- Grey relational grade;
- Axle bearing;
- Railway