A GA-based fuzzy modeling approach for generating TSK models

被引:73
|
作者
Papadakis, SE [1 ]
Theocharis, JB [1 ]
机构
[1] Aristotle Univ Thessaloniki, Dept Elect & Comp Engn, Elect & Comp Div, Power Syst Lab, Thessaloniki 54006, Greece
关键词
fuzzy modeling; genetic algorithms; multi-objective optimization;
D O I
10.1016/S0165-0114(01)00227-5
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
This paper proposes a new genetic-based modeling method for building simple and well-defined TSK models with scatter-type input partitions. Our approach manages all attributes characterizing the structure of a TSK model, simultaneously. Particularly, it determines the number of rules, the input partition, the participating inputs in each rule and the consequent parameters. The model building process is divided into two phases. In phase one, the structure learning task is formulated as a multi-objective optimization problem which is resolved using a novel genetic-based structure learning (GBSL) scheme. Apart from the mean square error (MSE) and the number of rules, three additional criteria are introduced in the fitness function for measuring the quality of the partitions. Optimization of these measures leads to models with representative rules, small overlapping and efficient data cover. In order to obtain models with accurate data fitting and good local performance, the consequent parameters are determined using a local MSE function while the overall model is evaluated on the basis of a global MSE function. The search capabilities of the suggested structure learning scheme are significantly enhanced by including a highly effective local search operator implemented by a micro-genetic algorithm and four problem-specific operators. Finally, a genetic-based parameter learning (GBPL) scheme is suggested in phase two, which performs fine-tuning of the initial models obtained after structure learning. The performance of the proposed modeling approach is evaluated using a static example and a well-known dynamic benchmark problem. Simulation results demonstrate that our models outperform those suggested by other methods with regard to simplicity, model structure, and accuracy. (C) 2001 Elsevier Science B.V. All rights reserved.
引用
收藏
页码:121 / 152
页数:32
相关论文
共 50 条
  • [21] A GA-BASED APPROACH FOR EPIPOLAR GEOMETRY ESTIMATION
    Khaled, Nehal
    Hemayed, Elsayed E.
    Fayek, Magda B.
    INTERNATIONAL JOURNAL OF PATTERN RECOGNITION AND ARTIFICIAL INTELLIGENCE, 2013, 27 (08)
  • [22] A class decomposition approach for GA-based classifiers
    Guan, SU
    Zhu, FM
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2005, 18 (03) : 271 - 278
  • [23] A GA-based NN approach for makespan estimation
    Li, Shujuan
    Li, Yan
    Liu, Yong
    Xu, Yuefei
    APPLIED MATHEMATICS AND COMPUTATION, 2007, 185 (02) : 1003 - 1014
  • [24] GA-based approach to discover meaningful biclusters
    Aguilar-Ruiz, Jesus S.
    Divina, Federico
    GECCO 2005: GENETIC AND EVOLUTIONARY COMPUTATION CONFERENCE, VOLS 1 AND 2, 2005, : 473 - 474
  • [25] TSK-fuzzy modeling based on ε-insensitive learning
    Leski, JM
    IEEE TRANSACTIONS ON FUZZY SYSTEMS, 2005, 13 (02) : 181 - 193
  • [26] Operation allocation in automated manufacturing system using GA-based approach with multifidelity models
    Chan, F. T. S.
    Chaube, A.
    Mohan, V.
    Arora, V.
    Tiwari, M. K.
    ROBOTICS AND COMPUTER-INTEGRATED MANUFACTURING, 2010, 26 (05) : 526 - 534
  • [27] GA-based approaches to linguistic modeling of nonlinear functions
    Ishibuchi, H
    Takeuchi, D
    Nakashima, T
    JOINT 9TH IFSA WORLD CONGRESS AND 20TH NAFIPS INTERNATIONAL CONFERENCE, PROCEEDINGS, VOLS. 1-5, 2001, : 1229 - 1234
  • [28] Design and implementation of GA-based fuzzy system on FPGA chip
    Wong, Ching-Chang
    Lin, Yu-Han
    CYBERNETICS AND SYSTEMS, 2008, 39 (01) : 79 - 107
  • [29] A GA-based Framework for Mining High Fuzzy Utility Itemsets
    Wu, Jimmy Ming-Tai
    Lin, Jerry Chun-Wei
    Fournier-Viger, Philippe
    Wiktorski, Tomasz
    Hong, Tzung-Pei
    Pirouz, Matin
    2019 IEEE INTERNATIONAL CONFERENCE ON BIG DATA (BIG DATA), 2019, : 2708 - 2715
  • [30] Robot learning with GA-based fuzzy reinforcement learning agents
    Zhou, CJ
    INFORMATION SCIENCES, 2002, 145 (1-2) : 45 - 68