Title :
Bearing-fault diagnosis using non-local means algorithm and empirical mode decomposition-based feature extraction and two-stage feature selection
Author :
Mien Van ; Hee-Jun Kang
Author_Institution :
Grad. Sch. of Electr. Eng., Univ. of Ulsan, Ulsan, South Korea
Abstract :
Bearing-fault-diagnosis problem can be conceived as a pattern recognition problem, which includes three main phases: feature extraction, feature selection and feature classification. Thus, to improve the performance of the whole bearing-fault-diagnosis system, the performance of each phase must be improved. The aim of this study is threefold. First, in the feature extraction step, a new feature extraction technique based on non-local-means de-noising and empirical mode decomposition is developed to more accurately obtain fault-characteristic information. Second, in the feature selection phase, a novel two-stage feature selection, hybrid distance evaluation technique (DET)-particle swarm optimisation (PSO), is proposed by combining DET and PSO to select the superior combining feature subset that discriminates well among classes. Third, in the classification phase, a comparison among three types of popular classifiers: K-nearest neighbours, probabilistic neural network and support-vector machine is done to figure out the sensitivity of each classifier corresponding to the irrelevant and redundant features and the curse of dimensionality; then, find out a most suitable classifier incorporating with feature selection phase. The experimental results for the vibration signal of the bearing are shown to verify the effectiveness of the proposed fault-diagnosis scheme.
Keywords :
decomposition; fault diagnosis; feature extraction; feature selection; machine bearings; mechanical engineering computing; neural nets; particle swarm optimisation; probability; signal classification; support vector machines; DET; PSO; bearing-fault-diagnosis problem; distance evaluation technique; empirical mode decomposition; fault-characteristic information; feature classification; feature extraction technique; k-nearest neighbour; nonlocal-means denoising algorithm; particle swarm optimisation; pattern recognition problem; probabilistic neural network; support-vector machine; two-stage feature selection; vibration signal;
Journal_Title :
Science, Measurement & Technology, IET
DOI :
10.1049/iet-smt.2014.0228