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首页> 外文期刊>Annals of Operations Research >A novel supplier selection method that integrates the intuitionistic fuzzy weighted averaging method and a soft set with imprecise data
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A novel supplier selection method that integrates the intuitionistic fuzzy weighted averaging method and a soft set with imprecise data

机译:结合直觉模糊加权平均法和不精确数据的软集的新型供应商选择方法

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摘要

Along with advances in technology and the advent of the information age, supply chain competition will become the core strategy of enterprises that are in pursuit of a competitive advantage. Supplier selection and evaluation are key issues in the success of a competitive enterprise. Supplier selection for an enterprise is a typicalmulticriteria decision-making problemthat includes qualitative and quantitative criteria. However, some input information can be missing or nonexistent in selecting suppliers, rendering it more difficult to choose the best supplier. To this end, the traditional supplier selection approach does not consider the ordered weights of the values of attributes, causing biased conclusions. Moreover, there is a significant amount of fuzzy and intuitionistic fuzzy information in real-world situations, for which the traditional approach in choosing the best supplier becomes no longer applicable. To solve these issues, this study proposes a novel supplier selection method, integrating the intuitionistic fuzzy weighted averaging method and the soft set with imprecise data, in identifying the best supplier in a supply chain. To illustrate our proposed method, a numerical example of the supplier selection problem is adopted. This paper also compares the results of the fuzzy weighted averaging, intuitionistic fuzzy weighted averaging, and intuitionistic fuzzy dependent aggregation operator methods in dealing with missing or nonexistent data. Based on our results, the proposed method is reasonable, effective, and better reflects real-world situations with regard to supplier selection.
机译:随着技术的进步和信息时代的到来,供应链竞争将成为追求竞争优势的企业的核心战略。供应商的选择和评估是竞争企业成功的关键问题。企业的供应商选择是一个典型的多准则决策问题,其中包括定性和定量准则。但是,在选择供应商时某些输入信息可能会丢失或不存在,从而使选择最佳供应商更加困难。为此,传统的供应商选择方法不考虑属性值的排序权重,从而导致结论有偏差。此外,在现实世界中存在大量的模糊和直觉模糊信息,因此选择最佳供应商的传统方法不再适用。为了解决这些问题,本研究提出了一种新颖的供应商选择方法,将直觉模糊加权平均方法和带有不精确数据的软集相结合,以确定供应链中的最佳供应商。为了说明我们提出的方法,采用了供应商选择问题的数值示例。本文还比较了模糊加权平均,直觉模糊加权平均和直觉模糊依赖聚合算子方法在处理缺失或不存在数据时的结果。根据我们的结果,提出的方法是合理,有效的,并且可以更好地反映供应商选择方面的实际情况。

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