Title :
One-class Bearing Fault Detection using Negative Clone Selection Algorithm
Author :
Xinmin, Tao ; Baoxiang, Du ; Yong, Xu
Author_Institution :
Harbin Eng. Univ., Harbin
Abstract :
In order to solve the problems that in bearing fault detection application, only normal samples are available for training purposes, a one-class fault detection based on negative clone selection algorithm (NCSA) is investigated in this paper. NCSA with only normal samples for training is used to generate probabilistically a set of fault detectors that can detect any abnormalities in bearings. By incorporating the self-adaptive clone-mutation operator and the clone mature operator into conventional real-valued negative selection algorithm, the performance of convergence of the proposed approach is significantly improved and thus accuracy of detection is strongly enhanced. This paper analyzes the behavior of the classifier based on parameter selection and number of normal training samples. Furthermore, Comparison of the performance of detection of NCSA with different detector´s numbers is also experimented. Finally, the proposed approach is compared against other detection techniques such as MLP (multi-layer perception), etc. the experiments demonstrate that the proposed approach outperforms other methods with some concluding remarks.
Keywords :
electric machine analysis computing; fault diagnosis; machine bearings; multilayer perceptrons; multilayer perception; negative clone selection algorithm; one-class bearing fault detection; parameter selection; self-adaptive clone-mutation operator; Cloning; Condition monitoring; Detectors; Fault detection; Fault diagnosis; Feature extraction; Genetic mutations; Industrial Electronics Society; Notice of Violation; Signal processing algorithms;
Conference_Titel :
Industrial Electronics Society, 2007. IECON 2007. 33rd Annual Conference of the IEEE
Conference_Location :
Taipei
Print_ISBN :
1-4244-0783-4
DOI :
10.1109/IECON.2007.4460003