Bector-Chandra Type Duality in Linear Programming Under Fuzzy Environment Using Hyperbolic Tangent Membership Functions

Pratiksha Saxena, Ravi Jain
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引用次数: 3

Abstract

Multi-objective optimization has been applied in many fields of science, including engineering, economics and logistics where optimal decisions need to be taken in the presence of trade-offs between two or more conflicting objectives. One approach to optimize a multi-objective mathematical model is to employ utility functions for the objectives. Recent studies on utility-based multi-objective optimization concentrates on considering just one utility function for each objective. But, in reality, it is not reasonable to have a unique utility function corresponding to each objective function. Here, a constrained multi-objective mathematical model is considered in which several utility functions are associated for each objective. All of these utility functions are uncertain and in fuzzy form, so a fuzzy probabilistic approach is incorporated to investigate the uncertainty of the utility functions for each objective. Meanwhile, the total utility function of the problem will be a fuzzy nonlinear mathematical model. Since there are not any conventional approaches to solve such a model, a defuzzification method to change the total utility function to a crisp nonlinear model is employed. Also, a maximum technique is applied to defuzzify the conditional utility functions. This action results in changing the total utility function to a crisp single objective nonlinear model and will simplify the optimization process of the total utility function. The effectiveness of the proposed approach is shown by solving a test problem.
利用双曲正切隶属函数求解模糊环境下线性规划的Bector-Chandra对偶性
多目标优化已应用于许多科学领域,包括工程、经济和物流,其中需要在两个或多个相互冲突的目标之间进行权衡的情况下做出最优决策。优化多目标数学模型的一种方法是对目标使用效用函数。目前基于效用的多目标优化研究主要集中在每个目标只考虑一个效用函数。但是,在现实中,每个目标函数都有一个唯一的效用函数是不合理的。本文考虑了一个约束多目标数学模型,其中每个目标都有几个效用函数相关联。所有这些效用函数都是不确定的和模糊的形式,因此采用模糊概率方法来研究每个目标的效用函数的不确定性。同时,该问题的总效用函数将是一个模糊的非线性数学模型。由于没有任何传统的方法来求解这种模型,因此采用去模糊化方法将总效用函数变为清晰的非线性模型。同时,利用极大值技术对条件效用函数进行去模糊化。这使得总效用函数变成了一个清晰的单目标非线性模型,简化了总效用函数的优化过程。通过解决一个测试问题,证明了该方法的有效性。
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