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FGP Approach Based on Stanojevic's Normalization Technique for Multi-level Multi-objective Linear Fractional Programming Problem with Fuzzy Parameters

机译:基于STANOJEVIC的模糊参数的多级多目标线性分数规划问题的FGP方法

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This paper aims to present a Fuzzy Goal Programming (FGP) method taking the help of Taylor series approximation and normalization technique due to Stanojevic to solve multi-level multi-objective linear fractional programming problem with fuzzy parameters (MLMOLFPP-FP). Firstly, a crisp model of the problem is developed using level sets followed by the construction of membership functions which are non-linear in nature. These are then linearized using first order Taylor series approximation and normalization technique [1]. The normalization technique ensures that the obtained linear membership functions have their range within the permissible limit of [0, lj. The compromise solution for each level is calculated through FGP method. Each level decision maker imposes some preference bounds on the decision variable associated with him/her to avoid decision deadlock. Finally, the original MLMOLFPP-FP is reduced into a linear programming problem (LPP) through FGP technique where the highest degree of the membership goals is attained by minimizing the negative deviational variables. Euclidean distance function helps us to select the best FGP model from the two FGP models described to solve the MLMOLFPP-FP.
机译:本文旨在提出一种模糊目标规划(FGP)方法,借鉴泰勒级近似和归一化技术,由于斯坦诺·杰维奇解决了模糊参数(MLMOLFPP-FP)的多级多客线性线性分数规划问题。首先,使用级别集开发了一个清晰的问题模型,然后开发了隶属于非线性的隶属函数的构建。然后使用一阶泰勒序列近似和归一化技术进行线性化[1]。归一化技术确保所获得的线性隶属函数在[0,LJ的允许极限内具有它们的范围。通过FGP方法计算每个级别的折衷解决方案。每个级别决策者对与他/她相关的决策变量上的一些偏好界限,以避免决策僵局。最后,通过FGP技术将原始MLMOLFPP-FP减少到线性编程问题(LPP)中,通过最小化负偏差变量来实现隶属度目标的最高程度。欧几里德距离功能有助于我们从描述的两个FGP模型中选择最佳的FGP模型来解决MLMOLFPP-FP。

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