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Fuzzy Systems Design: Direct and Indirect Approaches.

Angelov, Plamen and Xydeas, C (2006) Fuzzy Systems Design: Direct and Indirect Approaches. Soft Computing, 10 (9). pp. 836-849. ISSN 1432-7643

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Abstract

A systematic classification of the data-driven approaches for design of fuzzy systems is given in the paper. The possible ways to solve this modelling and identification problem are classified on the basis of the optimisation techniques used for this purpose. One algorithm for each of the two basic categories of design methods is presented and its advantages and disadvantages are discussed. Both types of algorithms are self-learning and do not require interaction during the process of fuzzy model design. They perform adaptation of both the fuzzy model structure (rule-base) and the parameters. The indirect approach exploits the dual nature of Takagi-Sugeno (TS) models and is based on recently introduced recursive clustering combined with Kalman filtering-based procedure for recursive estimation of the parameter of the local sub-models. Both algorithms result in finding compact and transparent fuzzy models. The direct approach solves the optimisation problem directly, while the indirect one decomposes the original problem into on-line clustering and recursive estimation problems and finds a sub-optimal solution in real-time. The later one is computationally very efficient and has a range of potential applications in real-time process control, moving images recognition, autonomous systems design etc. It is extended in this paper for the case of multi-input–multi-output (MIMO systems). Both approaches have been tested with real data from an engineering process. (c) Springer

Item Type: Article
Journal or Publication Title: Soft Computing
Additional Information: The original publication is available at www.springerlink.com
Uncontrolled Keywords: Fuzzy models design - Takagi-Sugeno and Mamdani fuzzy models - On-line clustering - Recursive least squares estimation - Genetic algorithms ; DCS-publications-id ; art-743 ; DCS-publications-credits ; dsp-fa ; DCS-publications-personnel-id ; 82 ; 24
Subjects: Q Science > QA Mathematics > QA75 Electronic computers. Computer science
Departments: Faculty of Science and Technology > School of Computing & Communications
ID Code: 925
Deposited By: Dr. Plamen Angelov
Deposited On: 15 Jan 2008 16:46
Refereed?: Yes
Published?: Published
Last Modified: 21 Mar 2014 10:24
Identification Number:
URI: http://eprints.lancs.ac.uk/id/eprint/925

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