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Assessing sustainability performance of global supply chains: An input-output modeling approach

机译:评估全球供应链的可持续性绩效:输入输出建模方法

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摘要

Measuring the sustainability performance of supply chains is fundamental to sustainable supply chain management. Sustainability performance is usually evaluated from multiple aspects within the triple bottom line framework. With globalization, supply chains have also been characterized by the complex and global natures. Ignoring the multidimensional and transnational features imposes challenges on the performance assessment of global supply chains (GSCs). To resolve this issue, we propose an input-output modeling approach based on the multi-region input-output (MRIO) model and the data envelopment analysis (DEA) technique, which is able to account for the multidimensional characteristic of supply chains in a global context. Two indices are introduced to measure the status and evolvement of environmental sustainability performance of GSCs. We apply the proposed approach to empirically examine the environmental performance of GSCs of the manufacturing sectors in 16 major economies during 2005-2014. The average environmental inefficiency of the economies was considerable, and roughly 40% of the pollution could potentially be reduced along GSCs. Overall the environmental performance of GSCs averagely rose by 20.6% during the study period with fluctuations and regional/sectoral heterogeneities observed. (C) 2020 Elsevier B.V. All rights reserved.
机译:衡量供应链的可持续性性能是可持续供应链管理的基础。可持续性性能通常从三重底线框架内的多个方面进行评估。通过全球化,供应链也被复杂和全球性质的特征。忽略多维和跨国特征对全球供应链的性能评估(GSC)造成挑战。要解决此问题,我们提出了一种基于多区域输入输出(MRIO)模型的输入 - 输出建模方法和数据包络分析(DEA)技术,能够考虑供应链中的多维特性全球背景。引入了两种指标,以衡量环境可持续性性能的状态和演变的GSC。我们在2005 - 2014年期间申请拟议的审查制造业GSC的环境绩效,在16个主要经济体中审查制造业的环境绩效。经济的平均环境低效率是相当大的,大约40%的污染可能会沿着GSC减少。总体而言,GSC的环境表现在研究期间,观察到波动和区域/部门异质性的研究期间,GSC的环境性能平均增长了20.6%。 (c)2020 Elsevier B.v.保留所有权利。

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