A Novel $δ$-SBM-OPA Approach for Policy-Driven Analysis of Carbon Emission Efficiency under Uncertainty in the Chinese Industrial Sector

Shutian Cui, Renlong Wang, Xiaoyan Li
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Abstract

Regional differences in carbon emission efficiency arise from disparities in resource distribution, industrial structure, and development level, which are often influenced by government policy preferences. However, currently, most studies fail to consider the impact of government policy preferences and data uncertainty on carbon emission efficiency. To address the above limitations, this study proposes a hybrid model based on $\delta$-slack-based model ($\delta$-SBM) and ordinal priority approach (OPA) for measuring carbon emission efficiency driven by government policy preferences under data uncertainty. The proposed $\delta$-SBM-OPA model incorporates constraints on the importance of input and output variables under different policy preference scenarios. It then develops the efficiency optimization model with Farrell frontiers and efficiency tapes to deal with the data uncertainty in input and output variables. This study demonstrates the proposed model by analyzing industrial carbon emission efficiency of Chinese provinces in 2021. It examines the carbon emission efficiency and corresponding clustering results of provinces under three types of policies: economic priority, environmental priority, and technological priority, with varying priority preferences. The results indicate that the carbon emission efficiency of the 30 provinces can mainly be categorized into technology-driven, development-balanced, and transition-potential types, with most provinces achieving optimal efficiency under the technology-dominant preferences across all policy scenarios. Ultimately, this study suggests a tailored roadmap and crucial initiatives for different provinces to progressively and systematically work towards achieving the low carbon goal.
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用于中国工业部门不确定性条件下碳排放效率政策驱动分析的新型 $δ$-SBM-OPA 方法
碳排放效率的地区差异源于资源分布、产业结构和发展水平的差异,而这些差异往往受到政府政策偏好的影响。然而,目前大多数研究都没有考虑政府政策偏好和数据不确定性对碳排放效率的影响。针对上述局限性,本研究提出了一种基于$\delta$-slack-based 模型($\delta$-SBM)和顺序优先法(OPA)的混合模型,用于测量数据不确定性下政府政策偏好驱动的碳排放效率。所提出的 $\delta$-SBM-OPA 模型纳入了不同政策偏好情景下输入和输出变量重要性的约束条件。然后,它利用 Farrellfrontiers 和效率带开发了效率优化模型,以应对投入和产出变量数据的不确定性。本研究通过分析 2021 年中国各省的工业碳排放效率来验证所提出的模型。研究考察了在经济优先、环境优先和技术优先三类政策下,不同优先偏好省份的碳排放效率和相应的聚类结果。研究结果表明,30 个省份的碳排放效率主要可分为技术驱动型、发展平衡型和过渡潜力型,在所有政策情景下,大多数省份都能在技术主导偏好下实现最优效率。
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