Hierarchical Group Compromise Ranking Methodology Based on Euclidean–Hausdorff Distance Measure Under Uncertainty: An Application to Facility Location Selection Problem

Q2 Engineering
S. Mousavi, H. Gitinavard, B. Vahdani, N. Foroozesh
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引用次数: 4

Abstract

Proposing a hierarchical group compromise method can be regarded as a one of major multi-attributes decision-making tool that can be introduced to rank the possible alternatives among conflict criteria. Decision makers’ (DMs’) judgments are considered as imprecise or fuzzy in complex and hesitant situations. In the group decision making, an aggregation of DMs’ judgments and fuzzy group compromise ranking is more capable and powerful than the classical compromise ranking. This research extends a new hierarchical group compromise ranking methodology under a hesitant fuzzy (HF)environment to handle uncertainty, in which for the margin of error, the DMs could assign the opinions in several membership degrees for an element. The hesitant fuzzy set (HFS)is taken into account for the process of the proposed hierarchical group compromise ranking methodology, namely HFHG-CR, and for avoiding the data loss, the DMs’ opinions with risk preferences are considered for each step separately. Also, the Euclidean–Hausdorff distance measure is utilized in a new proposed index for calculating the average group score, worst group score and compromise measure regarding each DM. A new ranking index is presented for final compromise solution for the evaluation. Proposed HFHG-CR methodology is applied to a practical example for a facility location selection problem, i.e. cross-dock location problem, to show the validation and application.
不确定条件下基于欧几里得-豪斯多夫距离测度的分层群体妥协排序方法在设施选址问题中的应用
提出一种分层的群体妥协方法可以看作是一种主要的多属性决策工具,它可以在冲突准则中对可能的备选方案进行排序。在复杂和犹豫的情况下,决策者的判断被认为是不精确或模糊的。在群体决策中,将决策者的判断与模糊群体妥协排序相结合的方法比经典妥协排序方法更有效。本文扩展了一种新的犹豫模糊环境下的层次群体妥协排序方法,以处理不确定性,在该方法中,决策者可以为一个元素分配不同隶属度的意见。在提出的分级群体妥协排序方法(HFHG-CR)的过程中,考虑了犹豫模糊集(HFS),并在每一步中分别考虑具有风险偏好的dm意见,以避免数据丢失。同时,利用欧几里得-豪斯多夫距离测度,提出了一种新的指标,用于计算每个DM的平均组分、最差组分和妥协测度,并提出了一种新的排名指标,用于评价最终妥协解。最后,将提出的HFHG-CR方法应用于一个设施选址问题,即交叉码头选址问题,以说明该方法的有效性和应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Optimization in Industrial Engineering
Journal of Optimization in Industrial Engineering Engineering-Industrial and Manufacturing Engineering
CiteScore
2.90
自引率
0.00%
发文量
0
审稿时长
32 weeks
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