2016
DOI: 10.1515/acsc-2016-0022
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Membership Functions for Fuzzy Focal Elements

Abstract: The paper presents a study on data-driven diagnostic rules, which are easy to interpret by human experts. To this end, the Dempster-Shafer theory extended for fuzzy focal elements is used. Premises of the rules (fuzzy focal elements) are provided by membership functions which shapes are changing according to input symptoms. The main aim of the present study is to evaluate common membership function shapes and to introduce a rule elimination algorithm. Proposed methods are first illustrated with the popular Iri… Show more

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Cited by 9 publications
(3 citation statements)
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“…The detailed shape of these functions depends on the parameters associated with the parameters and state variables of the ISD system. We recommend using the Gaussian or the generalized bell membership function (Porębski and Straszecka 2016). Another element of the discussed fuzzy model of the needs system is a need weighting function, depicted by a dashed line in Fig.…”
Section: Model Of Needsmentioning
confidence: 99%
“…The detailed shape of these functions depends on the parameters associated with the parameters and state variables of the ISD system. We recommend using the Gaussian or the generalized bell membership function (Porębski and Straszecka 2016). Another element of the discussed fuzzy model of the needs system is a need weighting function, depicted by a dashed line in Fig.…”
Section: Model Of Needsmentioning
confidence: 99%
“…To do so, eight different membership functions (MF), including, Triangular (trimf) [39], Trapezoidal (trapmf), Generalized bellshaped (gbellmf) [40], Gaussian (gaussmf), Gaussian combination (gauss2mf) [41], Pi-shaped (pimf) [42], Difference between two sigmoidal membership functions (dsigmf) [43], and Product of two sigmoidal membership (dsigmf) [44] , where σ and c are the Standard Deviation (SD) and mean parameters, respectively. The III.To assess the effectiveness of the parameter t sc on performance of the controller, two controllers were built with the same structure and membership functions; however, the controller was firstly built without inputting t sc and then t sc was fed to the controller.…”
Section: B Controller Designmentioning
confidence: 99%
“…where A l i is the system input language variables and B l i is the system output language variables. The specific fuzzy adjustment rules 28 are designed as follows:…”
Section: Representation Of the Fuzzy Rule Librarymentioning
confidence: 99%