A Novel Integrated Fuzzy-Rough MCDM Model for Assessment of Barriers Related to Smart Logistics Applications and Demand Forecasting Method in the COVID-19 Period

Željko Stević, Selçuk Korucuk, Çağlar Karamaşa, Ezgi Demir, E. Zavadskas
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引用次数: 4

Abstract

During the pandemic period, smart logistics applications have rapidly changed the way organizations do business in order to provide competitive products and services while still remaining flexible. Smart logistics applications and demand forecasting, which have an important place in ensuring customer satisfaction and increasing competitive advantage, came to the fore even more in this period. However, smart logistics applications are often bogged down by several barriers, and then there is the need to choose the most ideal demand forecasting method despite these barriers. The main purpose of this study is to assess the barriers to the smart logistics applications in companies that receive and provide logistics services with corporate identity in Ordu Province, and to choose the most ideal demand forecasting method during the COVID-19 period. This study has the characteristic of a roadmap that helps the construction of smart logistics transformation applications by detecting barriers related to smart logistics applications and determining the most ideal demand forecasting alternative in logistics sector. Fuzzy FUCOM (FUll COnsistency Method)-based interval rough EDAS (Evaluation based on Distance from Average Solution) methodology was used to weight the barriers and to rank and choose the most ideal demand forecasting method during COVID-19 period, respectively.
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新冠肺炎时期智能物流应用障碍评估的模糊-粗糙集成MCDM模型及需求预测方法
在疫情期间,智能物流应用迅速改变了组织开展业务的方式,以便在提供有竞争力的产品和服务的同时保持灵活性。智能物流应用和需求预测在确保客户满意度和增加竞争优势方面发挥着重要作用,在这一时期更加突出。然而,智能物流的应用往往会受到一些障碍的阻碍,然后需要在这些障碍中选择最理想的需求预测方法。本研究的主要目的是评估在Ordu省接收和提供具有企业身份的物流服务的公司中智能物流应用的障碍,并选择最理想的COVID-19期间需求预测方法。本研究具有路线图的特点,通过检测与智能物流应用相关的障碍,确定物流领域最理想的需求预测替代方案,帮助构建智能物流转型应用。采用基于Fuzzy FUCOM (fully COnsistency Method)的区间粗糙EDAS (Evaluation based on Distance from Average Solution)方法对障碍进行加权,并对新冠肺炎期间最理想的需求预测方法进行排序和选择。
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