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Computer Research and Modeling, 2019, Volume 11, Issue 3, Pages 477–492
DOI: https://doi.org/10.20537/2076-7633-2019-11-3-477-492
(Mi crm724)
 

This article is cited in 10 scientific papers (total in 10 papers)

MODELS IN PHYSICS AND TECHNOLOGY

Neuro-fuzzy model of fuzzy rules formation for objects state evaluation in conditions of uncertainty

A. C. Katasev

Kazan National Research Technical University named after A. N. Tupolev, 10 K. Marx st., Kazan, 420111, Russia
References:
Abstract: This article solves the problem of constructing a neuro-fuzzy model of fuzzy rules formation and using them for objects state evaluation in conditions of uncertainty. Traditional mathematical statistics or simulation modeling methods do not allow building adequate models of objects in the specified conditions. Therefore, at present, the solution of many problems is based on the use of intelligent modeling technologies applying fuzzy logic methods. The traditional approach of fuzzy systems construction is associated with an expert attraction need to formulate fuzzy rules and specify the membership functions used in them. To eliminate this drawback, the automation of fuzzy rules formation, based on the machine learning methods and algorithms, is relevant. One of the approaches to solve this problem is to build a fuzzy neural network and train it on the data characterizing the object under study. This approach implementation required fuzzy rules type choice, taking into account the processed data specificity. In addition, it required logical inference algorithm development on the rules of the selected type. The algorithm steps determine the number and functionality of layers in the fuzzy neural network structure. The fuzzy neural network training algorithm developed. After network training the formation fuzzy-production rules system is carried out. Based on developed mathematical tool, a software package has been implemented. On its basis, studies to assess the classifying ability of the fuzzy rules being formed have been conducted using the data analysis example from the UCI Machine Learning Repository. The research results showed that the formed fuzzy rules classifying ability is not inferior in accuracy to other classification methods. In addition, the logic inference algorithm on fuzzy rules allows successful classification in the absence of a part of the initial data. In order to test, to solve the problem of assessing oil industry water lines state fuzzy rules were generated. Based on the 303 water lines initial data, the base of 342 fuzzy rules was formed. Their practical approbation has shown high efficiency in solving the problem.
Keywords: neuro-fuzzy model, fuzzy neural network, fuzzy production rule, knowledge base formation, object state evaluation.
Funding agency Grant number
Ministry of Science and Higher Education of the Russian Federation 8.6141.2017/8.9.
The work was supported by the Russian Federation Ministry of Education and Science, project No. 8.6141.2017/8.9.
Received: 19.10.2018
Revised: 02.05.2019
Accepted: 30.05.2019
Document Type: Article
UDC: 004.94
Language: Russian
Citation: A. C. Katasev, “Neuro-fuzzy model of fuzzy rules formation for objects state evaluation in conditions of uncertainty”, Computer Research and Modeling, 11:3 (2019), 477–492
Citation in format AMSBIB
\Bibitem{Kat19}
\by A.~C.~Katasev
\paper Neuro-fuzzy model of fuzzy rules formation for objects state evaluation in conditions of uncertainty
\jour Computer Research and Modeling
\yr 2019
\vol 11
\issue 3
\pages 477--492
\mathnet{http://mi.mathnet.ru/crm724}
\crossref{https://doi.org/10.20537/2076-7633-2019-11-3-477-492}
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  • https://www.mathnet.ru/eng/crm724
  • https://www.mathnet.ru/eng/crm/v11/i3/p477
  • This publication is cited in the following 10 articles:
    Citing articles in Google Scholar: Russian citations, English citations
    Related articles in Google Scholar: Russian articles, English articles
    Computer Research and Modeling
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    Abstract page:500
    Full-text PDF :192
    References:25
     
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