Abstract
A study is presented on the application of particle swarm optimization (PSO) combined with other computational intelligence (CI) techniques for bearing fault detection in machines. The performance of two CI based classifiers, namely, artificial neural networks (ANNs) and support vector machines (SVMs) are compared. The time domain vibration signals of a rotating machine with normal and defective bearings are processed for feature extraction. The extracted features from original and preprocessed signals are used as inputs to the classifiers for detection of machine condition. The classifier parameters, e.g., the number of nodes in the hidden layer for ANNs and the kernel parameters for SVMs are selected along with input features using PSO algorithms. The classifiers are trained with a subset of the experimental data for known machine conditions and are tested using the remaining set of data. The procedure is illustrated using the experimental vibration data of a rotating machine. The roles of the number of features, PSO parameters and CI classifiers on the detection success are investigated. Results are compared with other techniques such as genetic algorithm (GA) and principal component analysis (PCA). The PSO based approach gave a test classification success rate of 98.6-100% which were comparable with GA and much better than with PCA. The results show the effectiveness of the selected features and the classifiers in the detection of the machine condition.
Original language | English |
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Pages (from-to) | 308-316 |
Number of pages | 9 |
Journal | Engineering Applications of Artificial Intelligence |
Volume | 22 |
Issue number | 2 |
DOIs | |
State | Published - Mar 2009 |
Scopus Subject Areas
- Control and Systems Engineering
- Artificial Intelligence
- Electrical and Electronic Engineering
Keywords
- Computational intelligence
- Feature selection
- Machinery condition monitoring
- Signal processing
- Swarm intelligence