A T-S fuzzy model identification approach based on evolving MIT2-FCRM and WOS-ELM algorithm

Abstract Inter type-2 fuzzy model has been confirmed to be more effective in Takagi–Sugeno (T–S) fuzzy model identification compared to type-1 fuzzy model. It is indisputable that some algorithms based on inter type-2 fuzzy model have already been developed and shown remarkable modeling performance. To further improve the modeling accuracy, the optimization methods and the neural network are taken into consideration. In this paper, an evolving modified inter type-2 fuzzy c-regression model (MIT2-FCRM) algorithm based on gravitational search algorithm (GSA) and a consequent parameter identification method based on extreme learning machine algorithm with forgetting factor for processing online sequences (namely WOS-ELM) were proposed. Then a novel approach for T–S fuzzy modeling was presented, in which, the coefficients of the upper and lower hyperplanes were obtained by evolving MIT2-FCRM algorithm based on GSA, a hyper-plane-shaped membership function (MF) was utilized to identify the antecedent parameters of the T–S fuzzy model, and WOS-ELM was employed to identify the consequent parameters. The modeling results of six examples indicate that the proposed approach is superior to other studies in terms of identification accuracy, compact fuzzy rules and noise resistance ability.

[1]  Euntai Kim,et al.  A Simple Identified Sugeno-Type Fuzzy Model via Double Clustering , 1998, Inf. Sci..

[2]  Magne Setnes,et al.  GA-fuzzy modeling and classification: complexity and performance , 2000, IEEE Trans. Fuzzy Syst..

[3]  Michio Sugeno,et al.  Fuzzy identification of systems and its applications to modeling and control , 1985, IEEE Transactions on Systems, Man, and Cybernetics.

[4]  Abdelkader Chaari,et al.  A novel fuzzy c-regression model algorithm using a new error measure and particle swarm optimization , 2012, Int. J. Appl. Math. Comput. Sci..

[5]  Haigang Zhang,et al.  Online sequential ELM algorithm with forgetting factor for real applications , 2017, Neurocomputing.

[6]  I. A. Khodashinskii,et al.  Identification of fuzzy systems using a continuous ant colony algorithm , 2012 .

[7]  Gwilym M. Jenkins,et al.  Time series analysis, forecasting and control , 1972 .

[8]  Yupu Yang,et al.  Differential evolution and quantum-inquired differential evolution for evolving Takagi-Sugeno fuzzy models , 2011, Expert Syst. Appl..

[9]  Sreenatha G. Anavatti,et al.  PALM: An Incremental Construction of Hyperplanes for Data Stream Regression , 2018, IEEE Transactions on Fuzzy Systems.

[10]  Jianzhong Zhou,et al.  Parameters identification of hydraulic turbine governing system using improved gravitational search algorithm , 2011 .

[11]  Chin-Teng Lin,et al.  An online self-constructing neural fuzzy inference network and its applications , 1998, IEEE Trans. Fuzzy Syst..

[12]  Mohammad-Javad Khanjani,et al.  Uplift capacity prediction of suction caisson in clay using a hybrid intelligence method (GMDH-HS) , 2016 .

[13]  Abdelkader Chaari,et al.  Design of a robust interval-valued type-2 fuzzy c-regression model for a nonlinear system with noise and outliers , 2018, Soft Comput..

[14]  Xueli An,et al.  A new T-S fuzzy-modeling approach to identify a boiler-turbine system , 2010, Expert Syst. Appl..

[15]  Ivanoe De Falco,et al.  Facing classification problems with Particle Swarm Optimization , 2007, Appl. Soft Comput..

[16]  Nan Zhang,et al.  A T–S Fuzzy Model Identification Approach Based on a Modified Inter Type-2 FRCM Algorithm , 2018, IEEE Transactions on Fuzzy Systems.

[17]  Jian Xiao,et al.  Hydraulic turbine governing system identification using T-S fuzzy model optimized by chaotic gravitational search algorithm , 2013, Eng. Appl. Artif. Intell..

[18]  Chia-Feng Juang,et al.  Data-Driven Interval Type-2 Neural Fuzzy System With High Learning Accuracy and Improved Model Interpretability , 2013, IEEE Transactions on Cybernetics.

[19]  Héctor Pomares,et al.  Multiobjective Optimization and Comparison of Nonsingleton Type-1 and Singleton Interval Type-2 Fuzzy Logic Systems , 2013, IEEE Transactions on Fuzzy Systems.

[20]  Hossein Nezamabadi-pour,et al.  GSA: A Gravitational Search Algorithm , 2009, Inf. Sci..

[21]  Nikola K. Kasabov,et al.  DENFIS: dynamic evolving neural-fuzzy inference system and its application for time-series prediction , 2002, IEEE Trans. Fuzzy Syst..

[22]  Sheng-De Wang,et al.  Fuzzy system modeling using linear distance rules , 1999, Fuzzy Sets Syst..

[23]  Yusuf Oysal,et al.  Fuzzy Wavelet Neural Network Models for Prediction and Identification of Dynamical Systems , 2010, IEEE Transactions on Neural Networks.

[24]  Lotfi A. Zadeh,et al.  The concept of a linguistic variable and its application to approximate reasoning-III , 1975, Inf. Sci..

[25]  Jerry M. Mendel,et al.  Interval Type-2 Fuzzy Logic Systems Made Simple , 2006, IEEE Transactions on Fuzzy Systems.

[26]  Rudolf Kruse,et al.  Neuro-fuzzy systems for function approximation , 1999, Fuzzy Sets Syst..

[27]  A. Bagis Fuzzy rule base design using tabu search algorithm for nonlinear system modeling. , 2008, ISA transactions.

[28]  Mohammad Hossein Fazel Zarandi,et al.  A new cluster validity measure based on general type-2 fuzzy sets: Application in gene expression data clustering , 2014, Knowl. Based Syst..

[29]  R.J. Hathaway,et al.  Switching regression models and fuzzy clustering , 1993, IEEE Trans. Fuzzy Syst..

[30]  Bo Fu,et al.  T–S Fuzzy Model Identification With a Gravitational Search-Based Hyperplane Clustering Algorithm , 2012, IEEE Transactions on Fuzzy Systems.

[31]  James C. Bezdek,et al.  Pattern Recognition with Fuzzy Objective Function Algorithms , 1981, Advanced Applications in Pattern Recognition.

[32]  Jerry M. Mendel,et al.  Computing derivatives in interval type-2 fuzzy logic systems , 2004, IEEE Transactions on Fuzzy Systems.

[33]  Michio Sugeno,et al.  A fuzzy-logic-based approach to qualitative modeling , 1993, IEEE Trans. Fuzzy Syst..

[34]  Xueli An,et al.  T-S fuzzy model identification based on a novel fuzzy c-regression model clustering algorithm , 2009, Eng. Appl. Artif. Intell..

[35]  Korris Fu-Lai Chung,et al.  Multilevel fuzzy relational systems: structure and identification , 2002, Soft Comput..

[36]  Bin Luo,et al.  Novel adaptive hybrid rule network based on TS fuzzy rules using an improved quantum-behaved particle swarm optimization , 2015, Neurocomputing.

[37]  Sung-Kwun Oh,et al.  Identification of fuzzy systems by means of an auto-tuning algorithm and its application to nonlinear systems , 2000, Fuzzy Sets Syst..

[38]  Marzuki Khalid,et al.  Optimization of fuzzy model using genetic algorithm for process control application , 2011, J. Frankl. Inst..

[39]  Youyi Wang,et al.  Type-1 and Type-2 effective Takagi-Sugeno fuzzy models for decentralized control of multi-input-multi-output processes , 2017 .

[40]  Chia-Feng Juang,et al.  A Type-2 Self-Organizing Neural Fuzzy System and Its FPGA Implementation , 2008, IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics).

[41]  Mohammad Hossein Fazel Zarandi,et al.  A new indirect approach to the type-2 fuzzy systems modeling and design , 2013, Inf. Sci..

[42]  Mahardhika Pratama,et al.  Evolving Type-2 Fuzzy Classifier , 2016, IEEE Transactions on Fuzzy Systems.

[43]  George E. Tsekouras,et al.  On the use of the weighted fuzzy c-means in fuzzy modeling , 2005, Adv. Eng. Softw..

[44]  Leandro dos Santos Coelho,et al.  Fuzzy Identification Based on a Chaotic Particle Swarm Optimization Approach Applied to a Nonlinear Yo-yo Motion System , 2007, IEEE Transactions on Industrial Electronics.

[45]  Stephen L. Chiu,et al.  Selecting Input Variables for Fuzzy Models , 1996, J. Intell. Fuzzy Syst..

[46]  G. N. Pillai,et al.  Regularized extreme learning adaptive neuro-fuzzy algorithm for regression and classification , 2017, Knowl. Based Syst..

[47]  Yinghua Lin,et al.  A new approach to fuzzy-neural system modeling , 1995, IEEE Trans. Fuzzy Syst..

[48]  Ahmad M. El-Nagar,et al.  Online learning based on adaptive learning rate for a class of recurrent fuzzy neural network , 2019, Neural Computing and Applications.

[49]  Chung-Chun Kung,et al.  Affine Takagi-Sugeno fuzzy modelling algorithm by fuzzy c-regression models clustering with a novel cluster validity criterion , 2007 .

[50]  Mohammad Hossein Fazel Zarandi,et al.  A type-2 fuzzy c-regression clustering algorithm for Takagi-Sugeno system identification and its application in the steel industry , 2012, Inf. Sci..

[51]  Jerry M. Mendel,et al.  Simplified Interval Type-2 Fuzzy Logic Systems , 2013, IEEE Transactions on Fuzzy Systems.