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Multi-attribute decision making on reverse logistics based on DEA-TOPSIS: A study of the Shanghai End-of-life vehicles industry

机译:基于DEA-TOPSIS的逆向物流多属性决策:上海报废汽车产业研究

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This study analyzes the effect of multi-attribute decision making (MADM) on the efficiency of the end-of life vehicle (ELV) reverse logistics industry in the context of the circular economy to improve resource utilization efficiency.In this paper, the DEA-TOPSIS method, based on a prediction model of Triple Exponential Smoothing (TES), is adopted for multi-attribute decision making with a view to improving industry efficiency, Data Envelopment Analysis (DEA) is used to calculate the input and output indicators' efficiency values and the slack movements of the indicators of input and output decision-making unit's (DMU's) base with TES as the decision-making basis. Meanwhile, the Technique for Order Preference by Similarity to Ideal Solutions (TOPSIS) is used to rank alternative decision-making schemes. Moreover, the ordering is also carried out using the Additive Weighting, Weighted Product and Elimination et Choice Translating Reality (ELECTRE) method. In this study, the DEA-TOPSIS method is used to make multi-attribute decisions about industry efficiency.Taking Shanghai's ELV industry as an example, this study utilizes 2017 data from seven member enterprises of the Shanghai End-of-life Vehicle Professional Committee; it uses the DEA-TOPSIS method based on TES to conduct an empirical study on multi-attribute decision making to improve efficiency and analyze efficiency improvement through alternative decision-making schemes. The findings show that the DEA-TOPSIS method based on TES is effective for multi-attribute decision-making to improve the ELV reverse logistics industry's efficiency.The multi-attribute decision-making in this paper facilitates the management and investment decision making of the ELV recycling industry. It also provides an effective solution for managers and researchers in the ELV industry to improve its efficiency. (C) 2019 Elsevier Ltd. All rights reserved.
机译:本研究分析了循环经济背景下的多属性决策(MADM)对报废车辆(ELV)逆向物流行业效率的影响,以提高资源利用效率。为了提高行业效率,采用基于三重指数平滑(TES)预测模型的TOPSIS方法进行多属性决策,并使用数据包络分析(DEA)计算输入和输出指标的效率值以TES为决策依据的输入输出决策单元(DMU)指标的松弛运动。同时,类似于理想解决方案的订单偏好技术(TOPSIS)用于对备选决策方案进行排名。此外,还可以使用加法加权,加权乘积和消除等选择转换现实(ELECTRE)方法来执行排序。本研究采用DEA-TOPSIS方法对产业效率进行多属性决策。以上海ELV产业为例,本研究利用了上海市报废汽车专业委员会七家成员企业的2017年数据。它使用基于TES的DEA-TOPSIS方法对多属性决策进行实证研究,以提高效率并通过替代决策方案分析效率的提高。研究结果表明,基于TES的DEA-TOPSIS方法可有效提高ELV逆向物流业的多属性决策效率。本文的多属性决策有助于ELV的管理和投资决策回收业。它还为ELV行业的管理人员和研究人员提供了提高其效率的有效解决方案。 (C)2019 Elsevier Ltd.保留所有权利。

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