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首页> 外文期刊>Journal of Enterprise Information Management >A decision-support approach under uncertainty for evaluating reverse logistics capabilities of healthcare providers in Iran
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A decision-support approach under uncertainty for evaluating reverse logistics capabilities of healthcare providers in Iran

机译:评估伊朗医疗保健提供者逆向物流能力的不确定性下的决策支持方法

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摘要

Purpose This paper aims to assess and prioritize manufacturing companies in the healthcare industry based on critical success factors (CSFs) of their reverse logistics (RL). The research involves seven medical device companies located in the Tehran Province, Iran. Design/methodology/approach To identify and prioritize companies based on CSFs of RL, the study proposes a three-phase decision-making framework that integrates the Delphi method, the best-worst method (BWM) and the Additive Ratio Assessment (ARAS) method with Z-numbers. The weights required for this method are obtained by a variant of the BWM based on Z-numbers, denoted as Z-numbers Best-Worst Method, or ZBWM. Since decision-makers face an uncertain environment, Z-numbers, which are a kind of fuzzy numbers, are applied. Findings First, after customizing CSFs by the Delphi method and obtaining 15 CSFs of RL, these are ranked by the hybrid BWM-ARAS method with Z-numbers. Results reveal which company appears to perform best with respect to their RL implementations. Based on this result, healthcare device companies should choose the highest priority company based on the selected RL CSFs and results from using the BWM-ARAS method with Z-numbers. Originality/value The contribution of this paper is using a hybrid ARAS-BWM method based on Z-numbers. Each of these methods has some merits compared to other similar methods. The combination of these methods contributes a new approach for prioritizing companies based on RL CSFs with high accuracy and reliability.
机译:目的本文旨在根据医疗行业制造企业逆向物流(RL)的关键成功因素(CSF)对其进行评估和优先排序。这项研究涉及位于伊朗德黑兰省的七家医疗器械公司。设计/方法/方法基于RL的CSF,本研究提出了一个三阶段决策框架,将德尔菲法、最佳-最差法(BWM)和加性比率评估法(ARAS)与Z数相结合。该方法所需的权重由基于Z数的BWM变量获得,表示为Z数最佳最差法或ZBWM。由于决策者面临一个不确定的环境,Z数是一种模糊数。结果首先,在通过德尔菲法定制CSF并获得RL的15个CSF后,通过混合BWM-ARAS方法和Z数对其进行排序。结果显示哪家公司在RL实现方面表现最好。基于这一结果,医疗设备公司应根据所选的RL CSF和使用BWM-ARAS方法和Z编号得出的结果,选择优先级最高的公司。原创性/价值本文的贡献是使用基于Z数的混合ARAS-BWM方法。与其他类似方法相比,这些方法都有一些优点。这些方法的结合为基于RL CSF的公司排序提供了一种新方法,具有较高的准确性和可靠性。

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