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An evolutionary approach to fuzzy rule-based model synthesis using indices for rules

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An evolutionary approach to fuzzy rule-based model synthesis using indices for rules. / Angelov, Plamen.
In: Fuzzy Sets and Systems, Vol. 137, No. 3, 01.08.2003, p. 325-338.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

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Angelov P. An evolutionary approach to fuzzy rule-based model synthesis using indices for rules. Fuzzy Sets and Systems. 2003 Aug 1;137(3):325-338. doi: 10.1016/S0165-0114(02)00331-7

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Angelov, Plamen. / An evolutionary approach to fuzzy rule-based model synthesis using indices for rules. In: Fuzzy Sets and Systems. 2003 ; Vol. 137, No. 3. pp. 325-338.

Bibtex

@article{4793ccb313834ca6b9a6d8df0d1bdd15,
title = "An evolutionary approach to fuzzy rule-based model synthesis using indices for rules",
abstract = "An approach to fuzzy rule-based model (FRB) synthesis from data based on evolutionary algorithm using indices of the rules is presented in the paper. The resulting models are transparent and existing knowledge could easily be incorporated at the initialisation stage. The main difference between the proposed approach and the previous ones is the treatment of a small part of the complete rule set only, which allows an interpretable resulting model to be achieved and the dimension of chromosome considered in the evolutionary algorithm to be significantly reduced. A specific encoding mechanism is presented considering only the rules, which actually participate in the model. They are represented by their indices and membership functions{\textquoteright} parameters. It allows treatment of the problem of structure and parameter identification with practically meaningful dimensions (tens of fuzzy linguistic terms and fuzzy linguistic variables), while most of the other approaches indirectly suppose a small number of inputs and linguistic terms. As a result, the synthesised fuzzy model is significantly more transparent then other black-box types of models like neural networks, polynomial models and also FRB models considering the complete rule set, since a partial set of fuzzy rules (normally some tens) is easy to be inspected and explained. At the same time, this model is significantly more flexible than first principle models. This approach is applied to modelling of components of heating ventilating and air-conditioning systems and validated with real experimental data. It has potential applications in simulation, control and fault detection and diagnosis. (c) Elsevier",
keywords = "DCS-publications-id, art-464, DCS-publications-personnel-id, 82",
author = "Plamen Angelov",
note = "The final, definitive version of this article has been published in the Journal, Fuzzy Sets and Systems 137 (3), 2003, {\textcopyright} ELSEVIER.",
year = "2003",
month = aug,
day = "1",
doi = "10.1016/S0165-0114(02)00331-7",
language = "English",
volume = "137",
pages = "325--338",
journal = "Fuzzy Sets and Systems",
issn = "0165-0114",
publisher = "Elsevier",
number = "3",

}

RIS

TY - JOUR

T1 - An evolutionary approach to fuzzy rule-based model synthesis using indices for rules

AU - Angelov, Plamen

N1 - The final, definitive version of this article has been published in the Journal, Fuzzy Sets and Systems 137 (3), 2003, © ELSEVIER.

PY - 2003/8/1

Y1 - 2003/8/1

N2 - An approach to fuzzy rule-based model (FRB) synthesis from data based on evolutionary algorithm using indices of the rules is presented in the paper. The resulting models are transparent and existing knowledge could easily be incorporated at the initialisation stage. The main difference between the proposed approach and the previous ones is the treatment of a small part of the complete rule set only, which allows an interpretable resulting model to be achieved and the dimension of chromosome considered in the evolutionary algorithm to be significantly reduced. A specific encoding mechanism is presented considering only the rules, which actually participate in the model. They are represented by their indices and membership functions’ parameters. It allows treatment of the problem of structure and parameter identification with practically meaningful dimensions (tens of fuzzy linguistic terms and fuzzy linguistic variables), while most of the other approaches indirectly suppose a small number of inputs and linguistic terms. As a result, the synthesised fuzzy model is significantly more transparent then other black-box types of models like neural networks, polynomial models and also FRB models considering the complete rule set, since a partial set of fuzzy rules (normally some tens) is easy to be inspected and explained. At the same time, this model is significantly more flexible than first principle models. This approach is applied to modelling of components of heating ventilating and air-conditioning systems and validated with real experimental data. It has potential applications in simulation, control and fault detection and diagnosis. (c) Elsevier

AB - An approach to fuzzy rule-based model (FRB) synthesis from data based on evolutionary algorithm using indices of the rules is presented in the paper. The resulting models are transparent and existing knowledge could easily be incorporated at the initialisation stage. The main difference between the proposed approach and the previous ones is the treatment of a small part of the complete rule set only, which allows an interpretable resulting model to be achieved and the dimension of chromosome considered in the evolutionary algorithm to be significantly reduced. A specific encoding mechanism is presented considering only the rules, which actually participate in the model. They are represented by their indices and membership functions’ parameters. It allows treatment of the problem of structure and parameter identification with practically meaningful dimensions (tens of fuzzy linguistic terms and fuzzy linguistic variables), while most of the other approaches indirectly suppose a small number of inputs and linguistic terms. As a result, the synthesised fuzzy model is significantly more transparent then other black-box types of models like neural networks, polynomial models and also FRB models considering the complete rule set, since a partial set of fuzzy rules (normally some tens) is easy to be inspected and explained. At the same time, this model is significantly more flexible than first principle models. This approach is applied to modelling of components of heating ventilating and air-conditioning systems and validated with real experimental data. It has potential applications in simulation, control and fault detection and diagnosis. (c) Elsevier

KW - DCS-publications-id

KW - art-464

KW - DCS-publications-personnel-id

KW - 82

U2 - 10.1016/S0165-0114(02)00331-7

DO - 10.1016/S0165-0114(02)00331-7

M3 - Journal article

VL - 137

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EP - 338

JO - Fuzzy Sets and Systems

JF - Fuzzy Sets and Systems

SN - 0165-0114

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ER -