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通过 SWMM-贝叶斯耦合方法识别污水管网中的非法排放。

Identification of illicit discharges in sewer networks by an SWMM-Bayesian coupled approach.

机构信息

School of Civil and Environmental Engineering, Ningbo University, Ningbo 315211, China.

School of Civil and Environmental Engineering, Ningbo University, Ningbo 315211, China E-mail:

出版信息

Water Sci Technol. 2024 Aug;90(3):951-967. doi: 10.2166/wst.2024.233. Epub 2024 Jul 11.

DOI:10.2166/wst.2024.233
PMID:39141044
Abstract

Illicit discharges into sewer systems are a widespread concern within China's urban drainage management. They can result in unforeseen environmental contamination and deterioration in the performance of wastewater treatment plants. Consequently, pinpointing the origin of unauthorized discharges in the sewer network is crucial. This study aims to evaluate an integrative method that employs numerical modeling and statistical analysis to determine the locations and characteristics of illicit discharges. The Storm Water Management Model (SWMM) was employed to track water quality variations within the sewer network and examine the concentration profiles of exogenous pollutants under a range of scenarios. The identification technique employed Bayesian inference fused with the Markov chain Monte Carlo sampling method, enabling the estimation of probability distributions for the position of the suspected source, the discharge magnitude, and the commencement of the event. Specifically, the cases involving continuous release and multiple sources were examined. For single-point source identification, where all three parameters are unknown, concentration profiles from two monitoring sites in the path of pollutant transport and dispersion are necessary and sufficient to characterize the pollution source. For the identification of multiple sources, the proposed SWMM-Bayesian strategy with improved sampling is applied, which significantly improves the accuracy.

摘要

非法排放进入污水系统是中国城市排水管理中一个普遍存在的问题。它们可能导致不可预见的环境污染和污水处理厂性能下降。因此,确定污水管网中未经授权排放的来源至关重要。本研究旨在评估一种综合方法,该方法采用数值建模和统计分析来确定非法排放的位置和特征。采用暴雨管理模型(SWMM)来跟踪污水管网内的水质变化,并在一系列场景下检查外源污染物的浓度分布。所采用的识别技术是将贝叶斯推理与马尔可夫链蒙特卡罗抽样方法融合,从而可以估计可疑源位置、排放规模和事件开始的概率分布。具体来说,研究了连续释放和多个源的情况。对于单点源识别,其中所有三个参数都未知,需要并足以从污染物输运和扩散路径上的两个监测点的浓度分布来表征污染源。对于多个源的识别,应用了具有改进抽样的 SWMM-贝叶斯策略,这显著提高了准确性。

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本文引用的文献

1
Locating illicit discharges in storm sewers in urban areas using multi-parameter source tracking: Field validation of a toolbox composite index to prioritize high risk areas.利用多参数源追踪技术定位城市雨水管网中的非法排放:一种工具盒综合指数的现场验证,用于优先考虑高风险区域。
Sci Total Environ. 2022 Mar 10;811:152060. doi: 10.1016/j.scitotenv.2021.152060. Epub 2021 Nov 30.
2
A Bayesian-SWMM coupled stochastic model developed to reconstruct the complete profile of an unknown discharging incidence in sewer networks.开发了一种贝叶斯-SWMM 耦合随机模型,用于重建排水管网中未知排放事件的完整分布。
J Environ Manage. 2021 Nov 1;297:113211. doi: 10.1016/j.jenvman.2021.113211. Epub 2021 Jul 17.
3
New approach for point pollution source identification in rivers based on the backward probability method.
基于反向概率法的河流点污染源识别新方法。
Environ Pollut. 2018 Oct;241:759-774. doi: 10.1016/j.envpol.2018.05.093. Epub 2018 Jun 13.
4
A reliable sewage quality abnormal event monitoring system.可靠的污水水质异常事件监测系统。
Water Res. 2017 Sep 15;121:248-257. doi: 10.1016/j.watres.2017.05.040. Epub 2017 May 20.
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Performance evaluation for three pollution detection methods using data from a real contamination accident.基于真实污染事故数据的三种污染检测方法的性能评估。
J Environ Manage. 2015 Sep 15;161:385-391. doi: 10.1016/j.jenvman.2015.07.026. Epub 2015 Jul 24.
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An almost-parameter-free harmony search algorithm for groundwater pollution source identification.一种几乎无参数的和声搜索算法,用于地下水污染源识别。
Water Sci Technol. 2013;68(11):2359-66. doi: 10.2166/wst.2013.499.
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Water Res. 2013 Sep 1;47(13):4630-8. doi: 10.1016/j.watres.2013.04.018. Epub 2013 Apr 22.