计算机科学
模糊数
模糊集
CVAR公司
多目标优化
去模糊化
隶属函数
最优化问题
作者
Hideki Katagiri,Takeshi Uno,Kosuke Kato,Hiroshi Tsuda,Hiroe Tsubaki
标识
DOI:10.1016/j.eswa.2012.07.064
摘要
This paper considers multiobjective linear programming problems (MOLPP) where random fuzzy variables are contained in objective functions and constraints. A new decision making model optimizing possibilistic value at risk (pVaR) is proposed by incorporating the concept of value at risk (VaR) into possibility theory. It is shown that the original MOLPPs involving random fuzzy variables are transformed into deterministic problems. An interactive algorithm is presented to derive a satisficing solution for a decision maker (DM) from among a set of Pareto optimal solutions. Each Pareto optimal solution that is a candidate of the satisficing solution is exactly obtained by using convex programming techniques. A simple numerical example is provided to show the applicability of the proposed methodology to real-world problems with multiple objectives in uncertain environments.
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