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A novel methodology based on LCA + DEA to detect eco-efficiency shifts in wastewater treatment plants

机译:基于LCA + DEA的新颖方法可检测废水处理厂的生态效率变化

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摘要

The high-frequency on-line measurements coming from sensors installed in wastewater treatment plants (WWTPs) can be used for alert systems and decision support tools. Given the complexity of WWTPs, many authors developed efficient techniques for plant assessment. By contrast, few contributions are focussed on the identification of regime shifts in WWTPs on short-term, even if the early detection of occurring inefficiencies is a relevant information for plant managers. In order to fill this gap, the present paper uses a daily LCA + DEA analysis in order to monitor the potential deterioration of the eco-efficiency.This approach consists of an original combination of environmental life cycle assessment (LCA), data envelopment analysis (DEA), time series analysis and statistical tests. The main innovation in DEA algorithm consists of the set of decision-making units (DMUs), here composed of the 1-day operation datasets of a single WWTP. The results show a good performance in the regime shifts classification, for which the receiving operating characteristic (ROC) analysis returned a score of 0.8 (in a range 0–1).
机译:来自废水处理厂(WWTP)中安装的传感器的高频在线测量可用于警报系统和决策支持工具。鉴于污水处理厂的复杂性,许多作者开发了有效的植物评估技术。相比之下,即使尽早发现发生的效率低下对于工厂管理者而言是一个重要的信息,但很少有研究将重点放在短期内确定污水处理厂的制度转变上。为了填补这一空白,本文采用每日LCA + DEA分析来监测生态效率的潜在恶化。此方法由环境生命周期评估(LCA)和数据包络分析( DEA),时间序列分析和统计测试。 DEA算法的主要创新包括一组决策单元(DMU),此处由单个WWTP的1天操作数据集组成。结果显示出在状态转换分类中的良好性能,为此,接收操作特征(ROC)分析返回0.8的分数(范围为0-1)。

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