4.7 Article

Modification of the Best-Worst and MABAC methods: A novel approach based on interval-valued fuzzy-rough numbers

Journal

EXPERT SYSTEMS WITH APPLICATIONS
Volume 91, Issue -, Pages 89-106

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.eswa.2017.08.042

Keywords

Multi-criteria analysis; Fuzzy sets; Rough numbers; Best-Worst method; MABAC

Funding

  1. Ministry for Science and Technology (Republic of Serbia) [TR 36017, VA-TT/4/17-19]
  2. Ministry of Defence (Republic of Serbia)
  3. University of defence in Belgrade

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This paper presents a new approach for the treatment of uncertainty which is based on interval-valued fuzzy-rough numbers (IVFRN). It is shown that by integrating the rough approach with the traditional fuzzy approach, the subjectivity that exists when defining the borders of fuzzy sets is eliminated. IVFRN make decision making possible using only the internal knowledge in the operative data available to the decision makers. In this way objective uncertainties are used and there is no need to rely on models of assumptions. Instead of different external parameters in the application of IVFRN, the structure of the given data is used. On this basis an original multi-criteria model was developed based on an IVFRN approach. In this multi-criteria model the traditional steps of the BWM (Best-Worst method) and MABAC (Multi-Attributive Border Approximation area Comparison) methods are modified. The model was tested and validated on a study of the optimal selection of fire fighting helicopters. Testing demonstrated that the model based on IVFRN enabled more objective expert evaluation of the criteria in comparison with traditional fuzzy and rough approaches. A sensitivity analysis of the IVFRN BWM-MABAC model was carried out by means of 57 scenarios, the results of which showed a high degree of stability. The results of the IVFRN model were validated by comparing them with the results of the fuzzy and rough extension of the MABAC, COPRAS and VIKOR models. (C) 2017 Elsevier Ltd. All rights reserved.

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