Fault diagnosis of an industrial once-through benson boiler by utilizing adaptive neuro-fuzzy inference system

Nowadays, the increasing request to have more electric power and the growing complexity of advanced thermal power systems, make it ever more important to improve the performance and reliability of the systems. Hence, an attention is concentrated on fault diagnosis systems to compensate the adverse effects automatically, under conditions of noisy measurement. In order to improve the proficiency of process monitoring and increase accuracy of fault diagnosis (FD) for the once-through Benson type boiler, this article proposed a data driven method based on the configuration of six adaptive neuro fuzzy inference systems (ANFIS). In the proposed structure, due to strong interaction between measurements each ANFIS classifier has been developed to diagnose one particular fault. Finally to evaluate the effectiveness and performance of the proposed FD system against 6 major faults of once-through Benson type boiler under conditions of noisy measurement, different set of test scenarios have been performed.

[1]  Khalil Ranjbar,et al.  Failure analysis of boiler cold and hot reheater tubes , 2007 .

[2]  Muhammad Riaz,et al.  An improved PCA method with application to boiler leak detection. , 2005, ISA transactions.

[3]  Jyh-Shing Roger Jang,et al.  ANFIS: adaptive-network-based fuzzy inference system , 1993, IEEE Trans. Syst. Man Cybern..

[4]  Qinglin Guo,et al.  Data mining based on improved neural network and its application in fault diagnosis of steam turbine , 2008, 2008 7th World Congress on Intelligent Control and Automation.

[5]  Inseok Hwang,et al.  A Survey of Fault Detection, Isolation, and Reconfiguration Methods , 2010, IEEE Transactions on Control Systems Technology.

[6]  Richard D. Braatz,et al.  Fault Detection and Diagnosis in Industrial Systems , 2001 .

[7]  Moon,et al.  A Boiler-Thrbine System Control Using a Fuzzy Auto-Regressive Moving Average (FARMA) Model , 1989 .

[8]  Raghunathan Rengaswamy,et al.  A review of process fault detection and diagnosis: Part I: Quantitative model-based methods , 2003, Comput. Chem. Eng..

[9]  Chee Peng Lim,et al.  A modified fuzzy min-max neural network with rule extraction and its application to fault detection and classification , 2008, Appl. Soft Comput..

[10]  Ali Ghaffari,et al.  A simulated model for a once-through boiler by parameter adjustment based on genetic algorithms , 2007, Simul. Model. Pract. Theory.

[11]  Yu Zhao,et al.  Application of SOM neural network in fault diagnosis of the steam turbine regenerative system , 2002, Proceedings. International Conference on Machine Learning and Cybernetics.

[12]  Mohd Azlan Hussain,et al.  Fault diagnosis of Tennessee Eastman process with multi- scale PCA and ANFIS , 2013 .

[13]  A. Ghaffari,et al.  An Optimization Approach Based on Genetic Algorithm for Modeling Benson Type Boiler , 2007, 2007 American Control Conference.

[14]  David Mautner Himmelblau,et al.  Fault detection and diagnosis in chemical and petrochemical processes , 1978 .

[15]  Erik Dotzauer,et al.  Bayesian network-based early-warning for leakage in recovery boilers , 2008 .

[16]  Ali Ghaffari,et al.  Steam turbine model , 2008, Simul. Model. Pract. Theory.

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

[18]  Karim Salahshoor,et al.  Fault detection and diagnosis of an industrial steam turbine using a distributed configuration of adaptive neuro-fuzzy inference systems , 2011, Simul. Model. Pract. Theory.

[19]  U. C. Moon,et al.  A Boiler-Thrbine System Control Using a Fuzzy Auto-Regressive Moving Average (FARMA) Model , 2002, IEEE Power Engineering Review.

[20]  Khaled J. Habib,et al.  Investigation of tubing failure of super-heater boiler from Kuwait Desalination Electrical Power Plant , 2005 .