Department of Diplomacy, National Chengchi University, Taipei 11605, Taiwan.
Department of International Business Administration, Chinese Culture University, Taipei 11114, Taiwan.
Int J Environ Res Public Health. 2023 Feb 24;20(5):4044. doi: 10.3390/ijerph20054044.
To achieve the goal of limiting global warming to 1.5 °C above preindustrial levels, net-zero emissions targets were proposed to assist countries in planning their long-term reduction. Inverse Data Envelopment Analysis (DEA) can be used to determine optimal input and output levels without sacrificing the set environmental efficiency target. However, treating countries as having the same capability to mitigate carbon emissions without considering their different developmental stages is not only unrealistic but also inappropriate. Therefore, this study incorporates a meta-concept into inverse DEA. This study adopts a three-stage approach. In the first stage, a meta-frontier DEA method is adopted to assess and compare the eco-efficiency of developed and developing countries. In the second stage, the specific super-efficiency method is adopted to rank the efficient countries specifically focused on carbon performance. In the third stage, carbon dioxide emissions reduction targets are proposed for the developed and developing countries separately. Then, a new meta-inverse DEA method is used to allocate the emissions reduction target to the inefficient countries in each of the specific groups. In this way, we can find the optimal CO reduction amount for the inefficient countries with unchanged eco-efficiency levels. The implications of the new meta-inverse DEA method proposed in this study are twofold. The method can identify how a DMU can reduce undesirable outputs without sacrificing the set eco-efficiency target, which is especially useful in achieving net-zero emissions since this method provides a roadmap for decision-makers to understand how to allocate the emissions reduction targets to different units. In addition, this method can be applied to heterogeneous groups where they are assigned to different emissions reduction targets.
为了实现将全球气温升幅控制在工业化前水平以上 1.5°C 的目标,提出了净零排放目标,以帮助各国规划长期减排计划。逆数据包络分析(DEA)可用于在不牺牲既定环境效率目标的情况下,确定最佳的投入和产出水平。然而,将各国视为具有相同的减排能力,而不考虑其不同的发展阶段,不仅不现实,而且也不合适。因此,本研究将元概念纳入逆 DEA 中。本研究采用三阶段方法。在第一阶段,采用元前沿 DEA 方法评估和比较发达国家和发展中国家的生态效率。在第二阶段,采用特定的超效率方法,专门针对碳绩效对有效国家进行排名。在第三阶段,分别为发达国家和发展中国家提出二氧化碳减排目标。然后,使用新的元逆 DEA 方法为每个特定组中的非有效国家分配减排目标。通过这种方式,我们可以在不改变生态效率水平的情况下,为非有效国家找到最佳的 CO 减排量。本研究提出的新元逆 DEA 方法的意义有两点。该方法可以确定 DMU 如何在不牺牲既定生态效率目标的情况下减少不良产出,这在实现净零排放方面特别有用,因为该方法为决策者提供了一个理解如何将减排目标分配给不同单位的路线图。此外,该方法可应用于异质组中,为它们分配不同的减排目标。