Discrete Interval Type 2 Fuzzy System Models Using Uncertainty in Learning Parameters
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Date
2007
Authors
Türkşen, İsmail Burhan
Journal Title
Journal ISSN
Volume Title
Publisher
IEEE-Inst Electrical Electronics Engineers Inc
Open Access Color
Green Open Access
No
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Publicly Funded
No
Abstract
-Fuzzy system modeling (FSM) is one of the most prominent tools that can be used to identify the behavior of highly nonlinear systems with uncertainty. Conventional FSM techniques utilize type 1 fuzzy sets in order to capture the uncertainty in the system. However, since type 1 fuzzy sets express the belongingness of a crisp value x' of a base variable x in a fuzzy set A by a crisp membership value mu(A)(x'), they cannot fully capture the uncertainties due to imprecision in identifying membership functions. Higher types of fuzzy sets can be a remedy to address this issue. Since, the computational complexity of operations on fuzzy sets are increasing with the increasing type of the fuzzy set, the use-of type 2 fuzzy sets and linguistic logical connectives drew a considerable amount of attention in the realm of fuzzy system modeling in the last two decades. In this paper, we propose a black-box methodology that can identify robust type 2. Takagi-Sugeno, Mizumoto and Linguistic fuzzy system models with high predictive power. One of the essential problems of type 2 fuzzy system models is computational complexity. In order to remedy this problem, discrete interval valued type 2 fuzzy system models are proposed with type reduction. In the proposed fuzzy system modeling methods, fuzzy C-means (FCM) clustering algorithm is used in order to identify the system structure. The proposed discrete interval valued type 2 fuzzy system models are generated by a learning parameter of FCM, known as the level of membership, and its variation over a specific set of values which generate the uncertainty associated with the system structure.
Description
Keywords
fuzzy system models, fuzzy inference systems, fuzzy clustering, type 2 fuzzy system models, level of fuzziness, fuzzy system models, level of fuzziness, fuzzy inference systems, fuzzy clustering, type 2 fuzzy system models
Turkish CoHE Thesis Center URL
Fields of Science
0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology
Citation
WoS Q
Q1
Scopus Q
Q1

OpenCitations Citation Count
95
Source
IEEE Transactions On Fuzzy Systems
Volume
15
Issue
1
Start Page
90
End Page
106
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Citations
CrossRef : 88
Scopus : 103
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Mendeley Readers : 40
SCOPUS™ Citations
103
checked on Dec 18, 2025
Web of Science™ Citations
88
checked on Dec 18, 2025
Page Views
598
checked on Dec 18, 2025
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OpenAlex FWCI
15.51559
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