Sparse filtering based intelligent fault diagnosis using IPSO-SVM

Intelligent fault diagnosis has became a focus of fault diagnosis, which can quickly and efficiently process collected signals and obtain high accurate diagnosis results. Traditionally, intelligent fault diagnosis subjects to a lot of prior knowledge. In this work, a novel method based on the sparse features is proposed. The sparse features directly are extracted from raw mechanical vibration signals using unsupervised learning. Conventionally, Support Vector Machine optimized by Improved Particle Swarm (IPSO-SVM) is used to classify the health condition based on the sparse features for each sample. By introducing improved parameters into PSO algorithm, the global search ability of the PSO algorithm is enhanced. The proposed method is validated by a case of rolling element bearings datasets. In the experiments, we set up fifteen datasets to verify the proposed method. The results show that the proposed method can provide a simple and accurate fault diagnosis for bearing multi-faults.

[1]  Pavan Kumar Kankar,et al.  Bearing fault diagnosis based on multi-scale permutation entropy and adaptive neuro fuzzy classifier , 2015 .

[2]  Zhiwen Liu,et al.  Multi-fault classification based on wavelet SVM with PSO algorithm to analyze vibration signals from rolling element bearings , 2013, Neurocomputing.

[3]  Robert B. Randall,et al.  Rolling element bearing diagnostics using the Case Western Reserve University data: A benchmark study , 2015 .

[4]  Tan Yee Fan,et al.  A Tutorial on Support Vector Machine , 2009 .

[5]  Peter E. William,et al.  Identification of bearing faults using time domain zero-crossings , 2011 .

[6]  Chih-Jen Lin,et al.  A comparison of methods for multiclass support vector machines , 2002, IEEE Trans. Neural Networks.

[7]  Vladimir N. Vapnik,et al.  The Nature of Statistical Learning Theory , 2000, Statistics for Engineering and Information Science.

[8]  Christopher J. C. Burges,et al.  A Tutorial on Support Vector Machines for Pattern Recognition , 1998, Data Mining and Knowledge Discovery.

[9]  Feng Jia,et al.  An Intelligent Fault Diagnosis Method Using Unsupervised Feature Learning Towards Mechanical Big Data , 2016, IEEE Transactions on Industrial Electronics.

[10]  Yitao Liang,et al.  A novel bearing fault diagnosis model integrated permutation entropy, ensemble empirical mode decomposition and optimized SVM , 2015 .

[11]  Fenineche Hocine,et al.  Electric Motor Bearing Diagnosis Based on Vibration Signal Analysis and Artificial Neural Networks Optimized by the Genetic Algorithm , 2014 .

[12]  P. K. Kankar,et al.  A multiscale permutation entropy based approach to select wavelet for fault diagnosis of ball bearings , 2015 .

[13]  Aditya Sharma,et al.  Feature extraction and fault severity classification in ball bearings , 2016 .

[14]  Wenliao Du,et al.  Wavelet leaders multifractal features based fault diagnosis of rotating mechanism , 2014 .

[15]  Jiquan Ngiam,et al.  Sparse Filtering , 2011, NIPS.

[16]  Youren Wang,et al.  A novel approach of analog circuit fault diagnosis using support vector machines classifier , 2011 .

[17]  James Kennedy,et al.  Particle swarm optimization , 2002, Proceedings of ICNN'95 - International Conference on Neural Networks.

[18]  Shih-Wei Lin,et al.  Particle swarm optimization for parameter determination and feature selection of support vector machines , 2008, Expert Syst. Appl..