Optimal Kernel Parameter Setting for Faults Detection with Stochastic Methods and Data Preprocessing

In this paper an indirect optimization criterion for parameter setting the kernel-based fault detection process is applied. The procedure analyzed involves the data preprocessing through the Kernel Independent Component Analysis (KICA) method, and the fault detection by using a classifier based on the Kernel Fuzzy C-means (KFCM) algorithm to reduce the classification errors. The main objective of the paper is the adjustment of the kernel parameters to obtain the best possible performance in the fault detection. To achieve this, two different metaheuristic algorithms are used: Differential Evolution and Particle Swarm Optimization. The proposed approach was evaluated by using the Tennessee Eastman (TE) process benchmark.

[1]  Russell C. Eberhart,et al.  A new optimizer using particle swarm theory , 1995, MHS'95. Proceedings of the Sixth International Symposium on Micro Machine and Human Science.

[2]  Orestes Llanes-Santiago,et al.  Enhanced dynamic approach to improve the detection of small-magnitude faults , 2016 .

[3]  Xian Fu,et al.  Kernel-based fuzzy c-means clustering algorithm based on genetic algorithm , 2016, Neurocomputing.

[4]  Janos Gertler,et al.  Fault Detection and Diagnosis , 2008, Encyclopedia of Systems and Control.

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

[6]  R. Storn,et al.  Differential Evolution - A simple and efficient adaptive scheme for global optimization over continuous spaces , 2004 .

[7]  Tom Fawcett,et al.  An introduction to ROC analysis , 2006, Pattern Recognit. Lett..

[8]  Su-Qun Cao,et al.  A Bearing Intelligent Fault Diagnosis Method Based on Cluster Analysis , 2012 .

[9]  Orestes Llanes-Santiago,et al.  An approach for Fault Diagnosis based on bio-inspired strategies , 2010, IEEE Congress on Evolutionary Computation.

[10]  Jian Xiao,et al.  A novel chaotic particle swarm optimization based fuzzy clustering algorithm , 2012, Neurocomputing.

[11]  Anhua Chen,et al.  Kernel Function and Parameters Optimization in KICA for Rolling Bearing Fault Diagnosis , 2013, J. Networks.

[12]  Zhiqiang Ge,et al.  Improved kernel PCA-based monitoring approach for nonlinear processes , 2009 .

[13]  Orestes Llanes-Santiago,et al.  A variant of the particle swarm optimization for the improvement of fault diagnosis in industrial systems via faults estimation , 2014, Eng. Appl. Artif. Intell..

[14]  Orestes Llanes-Santiago,et al.  Optimizing kernel methods to reduce dimensionality in fault diagnosis of industrial systems , 2015, Comput. Ind. Eng..