🌙

引入随机数据包络分析模型评估欧洲国家循环经济绩效:迈向可持续性的路径

Introducing stochastic data envelopment analysis models for evaluating circular economy performance in European countries: pathways towards sustainability

OR Spectrum · 2026
被引 1 · 同刊同年前 5%
ABS 3

中文导读

本文提出一种结合网络数据包络分析和机会约束规划的新方法,利用2013-2020年26个欧洲国家数据评估循环经济效率,发现废物处理效率对整体绩效起决定性作用,为政策制定者提供改进循环经济的实证框架。

Abstract

This paper addresses a critical gap in circular economy (CE) research by introducing a novel methodological framework that integrates Network Data Envelopment Analysis (NDEA) with a chance-constrained programming. The proposed approach captures the interrelated dynamics of economic production and waste treatment subsystems, while accounting for stochastic variables and data uncertainties to provide robust CE efficiency estimates. Using data from 26 European (EU) countries from 2013 to 2020, our results reveal that achieving CE efficiency requires a balanced focus on economic production and waste management. Although strong economic output can support circularity, waste treatment efficiency often plays a decisive role in determining overall CE performance. Moreover, we find that economic size does not necessarily translate into circular efficiency, whilst large economies may face challenges with effective waste management and resource recovery despite their economic status. The proposed approach offers policymakers and practitioners a robust empirical framework to guide CE improvements, particularly in regions where environmental practices lag behind economic achievements. Stronger incentives and regulatory measures are recommended to enhance circular activities within the EU and foster greater circular efficiency across countries.

循环经济数据包络分析可持续性资源效率欧洲经济