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The supplier selection problem of a manufacturing company using the weighted multi-choice goal programming and MINMAX multi-choice goal programming

机译:使用加权多项选择目标规划和MINMAX多项选择目标规划的制造公司的供应商选择问题

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This paper presents two methods of decision making, Weighted multi-choice goal programming (MCGP) and MINMAX MCGP. With the proposed Weighted MCGP method, decision makers can set different weights w, for each goal with linguistic terms, such as high, average and low, which can be transformed into trapezoidal fuzzy numbers. Meanwhile, with the proposed MINMAX MCGP method, this study also let decision makers set the satisfaction membership function for each goal according to their preference in order to eliminate the effect of different scales in each goal.This paper also investigates the relationship between Weighted multi-choice goal programming and MINMAX multi-choice goal programming. According to the sensitivity analysis, decision makers can get the solution with the minimum aggregate deviation for all multiple goals from the Weighted multi-choice goal programming. Meanwhile, decision makers can get the solution with the most balanced solution between all multiple goals from the MINMAX multi-choice goal programming method. The weight variable is introduced to the above two methods to provide decision-makers with a mechanism to evaluate the discrepancy between the maximum aggregate achievement and the most balanced solution, enabling decision-makers to reach the preferable decision for their situation. A real-world problem of supplier selection by the purchasing and sales managers of a manufacturing company is used to illustrate the differing solutions given by the two models. (C) 2019 Elsevier Inc. All rights reserved.
机译:本文介绍了两种决策方法:加权多选目标规划(MCGP)和MINMAX MCGP。使用建议的加权MCGP方法,决策者可以为每个目标设置不同的权重w,并使用语言术语(例如高,平均和低)将其转换为梯形模糊数。同时,通过提出的MINMAX MCGP方法,本研究还让决策者根据自己的偏好设置每个目标的满意度隶属度函数,以消除每个目标中不同尺度的影响。本文还研究了加权多指标之间的关系。选择目标编程和MINMAX多选择目标编程。根据敏感性分析,决策者可以从加权多项选择目标规划中获得所有多个目标的最小汇总偏差的解决方案。同时,决策者可以从MINMAX多选择目标编程方法中获得所有多个目标之间最平衡的解决方案。将权重变量引入上述两种方法中,以为决策者提供一种机制,以评估最大的总体成就与最平衡的解决方案之间的差异,从而使决策者能够针对自己的情况做出更好的决策。制造公司的采购和销售经理在选择供应商时遇到的现实问题用来说明两种模型给出的不同解决方案。 (C)2019 Elsevier Inc.保留所有权利。

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