A novel fault diagnosis method based on optimal relevance vector machine

Abstract Fault diagnosis is always a crucial and challenging technology in industry, which contains huge amount of variables need to be measured and analyzed. A high-efficiency fault diagnosis method can reduce the economic loss drastically. This paper presents a new fault diagnosis method based on relevance vector machine (RVM) to deal with the small sample data. Particle swam optimization (PSO) algorithm and differential evolution (DE) algorithm are employed together to optimize the parameters of RVM, which strengthen the classification ability and provide strong potential in prediction fault. Then, a novel fault diagnosis method DEPSO–RVM is obtained, which has the advantages of high accuracy and low false positive rate. Furthermore, the proposed method DEPSO–RVM is accomplished with two representative test data TE process and ethylene cracking furnace process. Besides, in order to compare the performance of DEPSO–RVM, SVM, DEPSO–SVM and PSO–RVM are applied to Tennessee Eastman process and ethylene cracking furnace process as well as the basis of comparison. The results show the validity of the proposed method on TE process and ethylene cracking furnace process and give a reference on industry process.

[1]  Ruey-Maw Chen,et al.  Using novel particle swarm optimization scheme to solve resource-constrained scheduling problem in PSPLIB , 2010, Expert Syst. Appl..

[2]  Xiaodong Li,et al.  This article has been accepted for inclusion in a future issue. IEEE TRANSACTIONS ON EVOLUTIONARY COMPUTATION 1 Locating and Tracking Multiple Dynamic Optima by a Particle Swarm Model Using Speciation , 2022 .

[3]  Yingwei Zhang,et al.  Quality-related fault detection approach based on dynamic kernel partial least squares , 2016 .

[4]  Chengye Zhao,et al.  Melt index prediction based on fuzzy neural networks and PSO algorithm with online correction strategy , 2012 .

[5]  E. F. Vogel,et al.  A plant-wide industrial process control problem , 1993 .

[6]  Xiaodong Wang,et al.  Classification of data from electronic nose using relevance vector machines , 2009 .

[7]  Shiming He,et al.  An adaptive pseudospectral method for constrained dynamic optimization problems in chemical engineering , 2016 .

[8]  Adam P. Piotrowski,et al.  Swarm Intelligence and Evolutionary Algorithms: Performance versus speed , 2017, Inf. Sci..

[9]  Bo Zhang,et al.  Collaborative Tracking Control of Dual Linear Switched Reluctance Machines Over Communication Network With Time Delays , 2017, IEEE Transactions on Cybernetics.

[10]  Damien Paire,et al.  Nonlinear Performance Degradation Prediction of Proton Exchange Membrane Fuel Cells Using Relevance Vector Machine , 2016, IEEE Transactions on Energy Conversion.

[11]  Cristian R. Rojas,et al.  Relevance Singular Vector Machine for Low-Rank Matrix Reconstruction , 2016, IEEE Transactions on Signal Processing.

[12]  Ali R. Yildiz,et al.  Hybrid Taguchi-differential evolution algorithm for optimization of multi-pass turning operations , 2013, Appl. Soft Comput..

[13]  Ignacio E. Grossmann,et al.  Scheduling of cracking production process with feedstocks and energy constraints , 2016, Comput. Chem. Eng..

[14]  Lifeng Xi,et al.  Evolving artificial neural networks using an improved PSO and DPSO , 2008, Neurocomputing.

[15]  S. Selvaperumal,et al.  Fault Detection and Classification with Optimization Techniques for a Three-Phase Single-Inverter Circuit , 2016 .

[16]  Arthur K. Kordon,et al.  Fault diagnosis based on Fisher discriminant analysis and support vector machines , 2004, Comput. Chem. Eng..

[17]  Dan Roth,et al.  The Importance of Syntactic Parsing and Inference in Semantic Role Labeling , 2008, CL.

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

[19]  Kewen Xia,et al.  Landslide Susceptibility Mapping Based on Particle Swarm Optimization of Multiple Kernel Relevance Vector Machines: Case of a Low Hill Area in Sichuan Province, China , 2016, ISPRS Int. J. Geo Inf..

[20]  Bo-Suk Yang,et al.  Fault diagnosis of low speed bearing based on acoustic emission signal and multi-class relevance vector machine , 2009 .

[21]  Leo H. Chiang,et al.  Process monitoring using causal map and multivariate statistics: fault detection and identification , 2003 .

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

[23]  Qunxiong Zhu,et al.  Multi-objective operation optimization of ethylene cracking furnace based on AMOPSO algorithm , 2016 .

[24]  Corinna Cortes,et al.  Support-Vector Networks , 1995, Machine Learning.

[25]  D. Lefebvre,et al.  FDI based on WD combined With PEM and RBF networks : Application to the diagnosis of TECP reactor , 2010, 18th Mediterranean Conference on Control and Automation, MED'10.

[26]  Neeraj Sen,et al.  Fault diagnosis for linear systems via multifrequency measurements , 1979 .

[27]  Elhoussin Elbouchikhi,et al.  Cascaded H-Bridge Multilevel Inverter System Fault Diagnosis Using a PCA and Multiclass Relevance Vector Machine Approach , 2015, IEEE Transactions on Power Electronics.

[28]  Jie Zhang Batch Process Modelling and Optimal Control Based on Neural Network Models , 2005 .

[29]  Rainer Storn,et al.  Differential Evolution – A Simple and Efficient Heuristic for global Optimization over Continuous Spaces , 1997, J. Glob. Optim..

[30]  Sheng Chen,et al.  Noise-resistant joint diagonalization independent component analysis based process fault detection , 2015, Neurocomputing.

[31]  Zhi-huan Song,et al.  Process Monitoring Based on Independent Component Analysis - Principal Component Analysis ( ICA - PCA ) and Similarity Factors , 2007 .

[32]  Samir Kouro,et al.  Editorial Special Issue on Modular Multilevel Converters, 2015 , 2015 .

[33]  Yuan Yao,et al.  Multivariate fault isolation via variable selection in discriminant analysis , 2015 .

[34]  James W. Cooper,et al.  Automatically extracting cancer disease characteristics from pathology reports into a Disease Knowledge Representation Model , 2009, J. Biomed. Informatics.

[35]  Yan-Lin He,et al.  Soft-sensing model development using PLSR-based dynamic extreme learning machine with an enhanced hidden layer , 2016 .

[36]  Zhao Xiaoqiang,et al.  An improved KPCA algorithm of chemical process fault diagnosis based on RVM , 2013, Proceedings of the 32nd Chinese Control Conference.

[37]  Lajos Hanzo,et al.  Symmetric RBF Classifier for Nonlinear Detection in Multiple-Antenna-Aided Systems , 2008, IEEE Transactions on Neural Networks.

[38]  Chao Ren,et al.  Optimal parameters selection for BP neural network based on particle swarm optimization: A case study of wind speed forecasting , 2014, Knowl. Based Syst..

[39]  Chi-Man Vong,et al.  Sparse Bayesian extreme learning committee machine for engine simultaneous fault diagnosis , 2016, Neurocomputing.

[40]  P. N. Suganthan,et al.  Differential Evolution Algorithm With Strategy Adaptation for Global Numerical Optimization , 2009, IEEE Transactions on Evolutionary Computation.

[41]  Chaochang Chiu,et al.  Intelligent aircraft maintenance support system using genetic algorithms and case-based reasoning , 2004 .

[42]  George Eastman House,et al.  Sparse Bayesian Learning and the Relevan e Ve tor Ma hine , 2001 .

[43]  Christos Georgakis,et al.  Plant-wide control of the Tennessee Eastman problem , 1995 .

[44]  Gary D. Bader,et al.  An improved method for scoring protein-protein interactions using semantic similarity within the gene ontology , 2010, BMC Bioinformatics.

[45]  P. Purkait,et al.  Investigation of an expert system for the condition assessment of transformer insulation based on dielectric response measurements , 2004, IEEE Transactions on Power Delivery.

[46]  Wenhan Zhu,et al.  Bacillus anthracis genome organization in light of whole transcriptome sequencing , 2010, BMC Bioinformatics.

[47]  Alejandro F. Frangi,et al.  Two-dimensional PCA: a new approach to appearance-based face representation and recognition , 2004 .

[48]  Yang Liu,et al.  Compressive sparse principal component analysis for process supervisory monitoring and fault detection , 2017 .

[49]  Moisès Graells,et al.  Enhanced plant fault diagnosis based on the characterization of transient stages , 2012, Comput. Chem. Eng..

[50]  Lijie Wang,et al.  Adaptive Fuzzy Control for Nonstrict-Feedback Systems With Input Saturation and Output Constraint , 2017, IEEE Transactions on Systems, Man, and Cybernetics: Systems.

[51]  David J. C. MacKay,et al.  The Evidence Framework Applied to Classification Networks , 1992, Neural Computation.

[52]  Hongbo Xu,et al.  An intelligent fault identification method of rolling bearings based on LSSVM optimized by improved PSO , 2013 .

[53]  Hong Jiang,et al.  Prediction of the Melt Index Based on the Relevance Vector Machine with Modified Particle Swarm Optimization , 2012 .

[54]  Michael E. Tipping Sparse Bayesian Learning and the Relevance Vector Machine , 2001, J. Mach. Learn. Res..

[55]  Barry M. Wise,et al.  A Theoretical Basis for the use of Principal Component Models for Monitoring Multivariate Processes , 1990 .

[56]  Tiina M. Komulainen,et al.  Fault detection and isolation of an on-line analyzer for an ethylene cracking process , 2008 .

[57]  K. Davis,et al.  Dopamine in schizophrenia: a review and reconceptualization. , 1991, The American journal of psychiatry.

[58]  Jian-Xin Xu,et al.  Multiple Exponential Recombination for Differential Evolution. , 2017, IEEE transactions on cybernetics.

[59]  Yiping Feng,et al.  Integrated short‐term scheduling and production planning in an ethylene plant based on Lagrangian decomposition , 2016 .

[60]  Janez Brest,et al.  Self-Adapting Control Parameters in Differential Evolution: A Comparative Study on Numerical Benchmark Problems , 2006, IEEE Transactions on Evolutionary Computation.

[61]  Yu Liu,et al.  A fault diagnosis approach for diesel engines based on self-adaptive WVD, improved FCBF and PECOC-RVM , 2016, Neurocomputing.

[62]  Bo-Suk Yang,et al.  Intelligent prognostics for battery health monitoring based on sample entropy , 2011, Expert Syst. Appl..