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Eco-efficiency of centralized wastewater treatment plants in industrial parks: A slack-based data envelopment analysis

机译:工业园区集中废水处理厂的生态效率:基于休闲的数据包络分析

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摘要

China has more than 2500 industrial parks that are above the provincial level and contribute more than half of the GDP of China. Centralized wastewater treatment plants (CWWTPs) are one of the most important environmental infrastructures of these industrial parks, and their performance and efficiency usually directly influences the pollutants discharged and the surrounding water environment. Data envelopment analysis (DEA) is a method that has been increasingly popular for assessing the efficiency of wastewater and wastewater treatment plants (WWTPs) in recent decades. In this study, a slack-based DEA (SBM-DEA) model, which includes five input variables and four output variables, is applied to assess the eco-efficiency of 281 CWWTPs in 126 national-level industrial parks (NIPs). Sensitivity analysis is used to identify the most sensitive input and output variables. Next, a Pearson correlation analysis is used to evaluate the correlations between the eco-efficiency factors and some implicit factors, which are not selected as input and output variables but may have an underlying impact on the eco-efficiency of CWWTPs. Then, the uncertainty and limitations of the DEA method, in terms of its ability to assess the efficiency of CWWTPs, are discussed. Finally, the conclusion is presented and some policy suggestions are proposed to improve the eco-efficiency of CWWTPs in NIPs. The key findings will have referential significance of improving eco-efficiencies of industrial parks around the world.
机译:中国拥有超过2500多个工业园区,高于省级,贡献了中国国内生产总值的一半。集中的废水处理厂(CWWTPS)是这些工业园区最重要的环境基础设施之一,其性能和效率通常直接影响排放的污染物和周围的水环境。数据包络分析(DEA)是一种近几十年来评估废水和废水处理厂(WWTPS)的效率越来越流行的方法。在本研究中,应用包括五个输入变量和四个输出变量的基于休闲的DEA(SBM-DEA)模型,以评估126个国家级工业园区(NIPS)中281 CWWTPS的生态效率。灵敏度分析用于识别最敏感的输入和输出变量。接下来,使用Pearson相关性分析来评估生态效率因素与一些隐含因子之间的相关性,这些因素未被选择为输入和输出变量,但可能对CWWTPS的生态效率产生潜在影响。然后,讨论了DEA方法的不确定性和局限,就其评估CWWTPS的效率而言,DEA方法。最后,提出了结论,提出了一些政策建议,以提高尼斯中CWWTP的生态效率。关键发现将有提高世界各地工业园区生态效率的参考意义。

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