4.6 Article

Probabilistic linguistic multiple attribute group decision making for location planning of electric vehicle charging stations based on the generalized Dice similarity measures

Journal

ARTIFICIAL INTELLIGENCE REVIEW
Volume 54, Issue 6, Pages 4137-4167

Publisher

SPRINGER
DOI: 10.1007/s10462-020-09950-2

Keywords

Multiple attribute group decision making; Probabilistic linguistic term set; Dice similarity measures; Generalized Dice similarity measures; Site selection; Electric vehicle charging stations

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This study focuses on the location planning of electric vehicle charging stations, introducing novel probabilistic linguistic similarity measures and decision models based on these measures. A practical case demonstrates the effectiveness and advantages of these methods.
The location of the electric vehicle charging station is deemed to be a multiple attribute group decision making (MAGDM) issue involving many experts and many conflicting attributes. In practical MAGDM issues, the information of uncertain and fuzzy cognitive decision is well-depicted by linguistic term sets (LTSs). These LTSs could be simply shifted into the probabilistic linguistic sets (PLTSs). In such paper, we design some novel probabilistic linguistic weighted Dice similarity measures (PLWDSM) and the probabilistic linguistic weighted generalized Dice similarity measures (PLWGDSM). Subsequently, the PLWGDSM-based MAGDM methods are presented under PLTSs. In the end, a practical case which concerns about the location planning of electric vehicle charging stations is offered to demonstrate the proposed PLWGDSM's applicability and advantages.

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