Article ID Journal Published Year Pages File Type
382574 Expert Systems with Applications 2014 11 Pages PDF
Abstract

•This study improved the general spatial flood vulnerability approach using fuzzy TOPSIS based on α-cut level sets.•It can reduce the uncertainty inherent in even fuzzy multi-criteria decision making process.•Two results from fuzzy TOPSIS and modified fuzzy TOPSIS were compared.

This study aims to improve the general flood vulnerability approach using fuzzy TOPSIS based on α-cut level sets which can reduce the uncertainty inherent in even fuzzy multi-criteria decision making process. Since fuzzy TOPSIS leads to a crisp closeness for each alternative, it is frequently argued that fuzzy weights and fuzzy ratings should be in fuzzy relative closeness. Therefore, this study used a modified α-cut level set based fuzzy TOPSIS to develop a spatial flood vulnerability approach for Han River in Korea, considering various uncertainties in weights derivation and crisp data aggregation. Two results from fuzzy TOPSIS and modified fuzzy TOPSIS were compared. Some regions which showed no or small ranking changes have their centro-symmetric distributions, while other regions whose rankings varied dynamically, have biased (anti-symmetric) distributions. It can be concluded that α-cut level set based fuzzy TOPSIS produce more robust prioritization since more uncertainties can be considered. This method can be applied to robust spatial vulnerability or decision making in water resources management.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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