Recent advances on SVM based fault diagnosis and process monitoring in complicated industrial processes

With the advancement of industrial systems, fault monitoring and diagnosis methods based on the data-driven attract much attention in recent years. This kind of methods are widely used in engineering projects, especially in those big and complicated machines, whose conditions are difficult to obtain from straight view. They can provide the administrator with effective fault information in initial phase and therefore reduce the loss caused by faults. This paper reviews the research and development of fault diagnosis and monitoring approach based on support vector machine (SVM). While many other methods, such as expert system and artificial neural network, have been used in fault monitoring and diagnosis, SVM shows its advantage in generalization performance and in case of small sample. Therefore, it should attract more attention.

[1]  Han Jiguang,et al.  Wind turbine fault diagnosis method based on diagonal spectrum and clustering binary tree SVM , 2013 .

[2]  K. I. Ramachandran,et al.  Feature selection using Decision Tree and classification through Proximal Support Vector Machine for fault diagnostics of roller bearing , 2007 .

[3]  Haifeng Li,et al.  Fault Diagnosis for Reciprocating Air Compressor Valve Using P-V Indicator Diagram and SVM , 2010, 2010 Third International Symposium on Information Science and Engineering.

[4]  Marwan A. Simaan,et al.  Detection of ventricular suction in an implantable rotary blood pump using support vector machines , 2011, 2011 Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

[5]  Sheng-wei Fei,et al.  Fault diagnosis of power transformer based on support vector machine with genetic algorithm , 2009, Expert Syst. Appl..

[6]  Mahdi Aliyari Shoorehdeli,et al.  Multi-fault diagnosis of ball bearing based on features extracted from time-domain and multi-class support vector machine(MSVM) , 2010, 2010 IEEE International Conference on Systems, Man and Cybernetics.

[7]  C. L. Nascimento,et al.  Prognostics of aircraft bleed valves using a SVM classification algorithm , 2012, 2012 IEEE Aerospace Conference.

[8]  Tao Liu,et al.  Fault diagnosis of a mine hoist using PCA and SVM techniques , 2008 .

[9]  Steven X. Ding,et al.  An Integrated Design Framework of Fault-Tolerant Wireless Networked Control Systems for Industrial Automatic Control Applications , 2013, IEEE Transactions on Industrial Informatics.

[10]  Laibin Zhang,et al.  Research on fault diagnosis for reciprocating compressor valve using information entropy and SVM method , 2009 .

[11]  Nishchal K. Verma,et al.  An optimized fault diagnosis method for reciprocating air compressors based on SVM , 2011, 2011 IEEE International Conference on System Engineering and Technology.

[12]  S. X. Yang,et al.  An Adaptive Approach Based on KPCA and SVM for Real-Time Fault Diagnosis of HVCBs , 2011, IEEE Transactions on Power Delivery.

[13]  V. Ebrahimipour,et al.  A flexible algorithm for fault diagnosis in a centrifugal pump with corrupted data and noise based on ANN and support vector machine with hyper-parameters optimization , 2013, Appl. Soft Comput..

[15]  Steven W. Su,et al.  Online Support Vector Machine Applicationfor Model Based Fault Detection and Isolationof HVAC System , 2011 .

[16]  Shen Yin,et al.  Performance Monitoring for Vehicle Suspension System via Fuzzy Positivistic C-Means Clustering Based on Accelerometer Measurements , 2015, IEEE/ASME Transactions on Mechatronics.

[17]  Jie Yang,et al.  Feature Selection Using Support Vector Machine , 2004 .

[18]  Ruxu Du,et al.  Model-based Fault Detection and Diagnosis of HVAC systems using Support Vector Machine method , 2007 .

[19]  Anoushiravan Farshidianfar,et al.  Rolling element bearings multi-fault classification based on the wavelet denoising and support vector machine , 2007 .

[20]  Okyay Kaynak,et al.  Big Data for Modern Industry: Challenges and Trends [Point of View] , 2015, Proc. IEEE.

[21]  Commander Sunil Tyagi A Comparative Study of SVM Classifiers and Artificial Neural Networks Application for Rolling Element Bearing Fault Diagnosis using Wavelet Transform Preprocessing , 2008 .

[22]  Vladimir Vapnik,et al.  An overview of statistical learning theory , 1999, IEEE Trans. Neural Networks.

[23]  Okyay Kaynak,et al.  An LWPR-Based Data-Driven Fault Detection Approach for Nonlinear Process Monitoring , 2014, IEEE Transactions on Industrial Informatics.

[24]  Shen Yin,et al.  Intelligent Particle Filter and Its Application to Fault Detection of Nonlinear System , 2015, IEEE Transactions on Industrial Electronics.

[25]  Marwan A. Simaan,et al.  A Suction Detection System for Rotary Blood Pumps Based on the Lagrangian Support Vector Machine Algorithm , 2013, IEEE Journal of Biomedical and Health Informatics.

[26]  Guang Wang,et al.  Quality-Related Fault Detection Approach Based on Orthogonal Signal Correction and Modified PLS , 2015, IEEE Transactions on Industrial Informatics.

[27]  Steven W. Su,et al.  Robust fault tolerant application for HVAC system based on combination of online SVM and ANN black box model , 2013, 2013 European Control Conference (ECC).

[28]  Bo-Suk Yang,et al.  Combination of independent component analysis and support vector machines for intelligent faults diagnosis of induction motors , 2007, Expert Syst. Appl..

[29]  Fulei Chu,et al.  Application of support vector machine based on pattern spectrum entropy in fault diagnostics of rolling element bearings , 2011 .

[30]  Karim Salahshoor,et al.  Fault detection and diagnosis of an industrial steam turbine using fusion of SVM (support vector machine) and ANFIS (adaptive neuro-fuzzy inference system) classifiers , 2010 .

[31]  Konstantinos C. Gryllias,et al.  A Support Vector Machine approach based on physical model training for rolling element bearing fault detection in industrial environments , 2012, Eng. Appl. Artif. Intell..

[32]  Bo-Suk Yang,et al.  Support vector machine in machine condition monitoring and fault diagnosis , 2007 .

[33]  Ruiming Fang,et al.  Application of MCSA and SVM to Induction Machine Rotor Fault Diagnosis , 2006, 2006 6th World Congress on Intelligent Control and Automation.

[34]  K. I. Ramachandran,et al.  A comparative study on classification of features by SVM and PSVM extracted using Morlet wavelet for fault diagnosis of spur bevel gear box , 2008, Expert Syst. Appl..

[35]  Huijun Gao,et al.  Data-Based Techniques Focused on Modern Industry: An Overview , 2015, IEEE Transactions on Industrial Electronics.

[36]  Dong-Whan Choi,et al.  Defect diagnostics of SUAV gas turbine engine using hybrid SVM-artificial neural network method , 2009 .

[37]  Steven W. Su,et al.  Intelligent outlier detection for HVAC system fault detection , 2012 .

[38]  Hamid Reza Karimi,et al.  Data-driven design of robust fault detection system for wind turbines , 2014 .

[39]  M. Karakose,et al.  Artificial immune based support vector machine algorithm for fault diagnosis of induction motors , 2007, 2007 International Aegean Conference on Electrical Machines and Power Electronics.

[40]  S. V. Dudul,et al.  Induction machine fault detection using support vector machine based classifier , 2009 .

[41]  Abdelkader Chaari,et al.  Support vector machine based decision for mechanical fault condition monitoring in induction motor using an advanced Hilbert-Park transform. , 2012, ISA transactions.

[42]  Jong-Duk Son,et al.  Fault diagnosis of low speed bearing based on relevance vector machine and support vector machine , 2009, Expert Syst. Appl..

[43]  Huijun Gao,et al.  Passivity-preserving model reduction with finite frequency H∞ approximation performance , 2014, Autom..

[44]  Reza Roshanfekr,et al.  A new approach for fault detection of broken rotor bars in induction motor based on support vector machine , 2010, 2010 18th Iranian Conference on Electrical Engineering.

[45]  Marti A. Hearst Trends & Controversies: Support Vector Machines , 1998, IEEE Intell. Syst..

[46]  Junyan Yang,et al.  Intelligent fault diagnosis of rolling element bearing based on SVMs and fractal dimension , 2007 .

[47]  Stanislaw Osowski,et al.  Support vector machine for fault diagnosis of the broken rotor bars of squirrel-cage induction motor , 2010, Neural Computing and Applications.

[48]  Kaixiang Peng,et al.  A Novel Scheme for Key Performance Indicator Prediction and Diagnosis With Application to an Industrial Hot Strip Mill , 2013, IEEE Transactions on Industrial Informatics.

[49]  Vladimir Cherkassky,et al.  The Nature Of Statistical Learning Theory , 1997, IEEE Trans. Neural Networks.

[50]  Wei He,et al.  A novel scheme for fault detection of reciprocating compressor valves based on basis pursuit, wave matching and support vector machine , 2012 .

[51]  Gian Antonio Susto,et al.  A One-Class SVM Based Tool for Machine Learning Novelty Detection in HVAC Chiller Systems , 2014 .

[52]  Khmais Bacha,et al.  Power transformer fault diagnosis based on dissolved gas analysis by support vector machine , 2012 .

[53]  K. I. Ramachandran,et al.  Fault diagnosis of spur bevel gear box using artificial neural network (ANN), and proximal support vector machine (PSVM) , 2010, Appl. Soft Comput..

[54]  Davood Dehestani HVAC Model Based Fault Detection by Incremental Online Support Vector Machine , 2013 .

[55]  Xu Yang,et al.  Robust PLS approach for KPI-related prediction and diagnosis against outliers and missing data , 2014, Int. J. Syst. Sci..

[56]  Vladimir Vapnik,et al.  Statistical learning theory , 1998 .

[57]  G. Panda,et al.  Fault Classification and Section Identification of an Advanced Series-Compensated Transmission Line Using Support Vector Machine , 2007, IEEE Transactions on Power Delivery.

[58]  Jingwen Tian,et al.  Fault Detection of Oil Pump Based on Classify Support Vector Machine , 2007, 2007 IEEE International Conference on Control and Automation.

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

[60]  Okyay Kaynak,et al.  Improved PLS Focused on Key-Performance-Indicator-Related Fault Diagnosis , 2015, IEEE Transactions on Industrial Electronics.

[61]  Z. Lachiri,et al.  Broken rotor bar diagnosis in induction machines through stationary wavelet packet transform and multiclass wavelet SVM , 2013 .

[62]  Li Xuemei,et al.  Novel HVAC fan machinery fault diagnosis method based on KPCA and SVM , 2009, 2009 International Conference on Industrial Mechatronics and Automation.

[63]  Long-Sheng Chen,et al.  Using SVM based method for equipment fault detection in a thermal power plant , 2011, Comput. Ind..

[64]  Bo-Suk Yang,et al.  Wavelet support vector machine for induction machine fault diagnosis based on transient current signal , 2008, Expert Syst. Appl..

[65]  Steven X. Ding,et al.  A Review on Basic Data-Driven Approaches for Industrial Process Monitoring , 2014, IEEE Transactions on Industrial Electronics.

[66]  P. Konar,et al.  Bearing fault detection of induction motor using wavelet and Support Vector Machines (SVMs) , 2011, Appl. Soft Comput..

[67]  V. Sugumaran,et al.  Fault diagnostics of roller bearing using kernel based neighborhood score multi-class support vector machine , 2008, Expert Syst. Appl..

[68]  Ming Shao,et al.  HVAC Fault Diagnosis System Using Rough Set Theory and Support Vector Machine , 2009, 2009 Second International Workshop on Knowledge Discovery and Data Mining.

[69]  Xiaoyuan Zhang,et al.  Multi-fault diagnosis for rolling element bearings based on ensemble empirical mode decomposition and optimized support vector machines , 2013 .

[70]  C. Koley,et al.  Wavelet aided SVM classifier for stator inter-turn fault monitoring in induction motors , 2010, IEEE PES General Meeting.

[71]  Kristin P. Bennett,et al.  Support vector machines: hype or hallelujah? , 2000, SKDD.