Development of Fuzzy Multi-Objective Stochastic Fractional Programming Models

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引用次数: 1

Abstract

In this chapter, two methodologies for solving multi-objective linear fractional stochastic programming problems containing fuzzy numbers (FNs) and fuzzy random variables (FRVs) associated with the system constraints are developed. In the model formulation process, the fuzzy probabilistic constraints are converted into equivalent fuzzy constraints by applying chance constrained programming (CCP) technique in a fuzzily defined probabilistic decision-making situation. Then two techniques, -cut and defuzzification methods, are used to convert the model into the corresponding deterministic model. In the method of using -cut for FNs, the tolerance level of FNs is considered, and the constraints are reduced to constraints with interval coefficients. Alternatively, in using defuzzification method, FNs are replaced by their defuzzified values. Consequently, the constraints are modified into constraints in deterministic form. In the next step, the constraints with interval coefficients are customized into its equivalent form by using the convex combination of each interval. If the parameters of the objectives are triangular FNs, then on the basis of their tolerance ranges each objective is decomposed into three objectives with crisp coefficients. Then each objective is solved independently to find their best and worst values and those values are used to construct membership function of each objective. Finally, the compromise solution of multi-objective linear fractional CCP problems is obtained by applying any of the approaches: priority-based fuzzy goal programming (FGP) method, Zimmermann's approach, -connective process, or minimum bounded sum operator technique. To demonstrate the efficiency of the above-described techniques, two illustrative examples, studied previously, are solved, and the solutions are compared with the existing methodology.
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模糊多目标随机分式规划模型的发展
在本章中,提出了两种求解包含模糊数和模糊随机变量的多目标线性分式随机规划问题的方法。在模型构建过程中,在模糊定义的概率决策情境下,应用机会约束规划(CCP)技术将模糊概率约束转化为等效模糊约束。然后利用裁剪和去模糊化两种技术将模型转换为相应的确定性模型。在对FNs使用-cut的方法中,考虑了FNs的容差水平,并将约束简化为区间系数约束。或者,在使用去模糊化方法时,fn被去模糊化后的值所取代。因此,约束被修改为确定性形式的约束。在接下来的步骤中,使用每个区间的凸组合将具有区间系数的约束定制为其等效形式。如果物镜参数为三角形FNs,则根据其公差范围将每个物镜分解为三个具有清晰系数的物镜。然后对每个目标进行独立求解,求出最佳和最差值,并用这些值构造每个目标的隶属度函数。最后,应用基于优先级的模糊目标规划(FGP)方法、Zimmermann方法、连接过程或最小有界和算子技术中的任意一种方法,得到了多目标线性分数阶CCP问题的折衷解。为了证明上述技术的有效性,对前面研究过的两个示例进行了求解,并将其与现有方法进行了比较。
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