采用 SWMM-Bayesian 耦合方法识别下水道网络中的非法排放物

Liyuan Yang, Biao Huang, Jiachun Liu
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引用次数: 0

摘要

非法排入下水道系统是中国城市排水管理中的一个普遍问题。它们可能导致不可预见的环境污染和污水处理厂性能的下降。因此,准确定位下水道网络中未经授权排放的源头至关重要。本研究旨在评估一种综合方法,该方法利用数值建模和统计分析来确定非法排放的位置和特征。研究采用了雨水管理模型(SWMM)来跟踪下水道网络内的水质变化,并检查一系列情况下的外源污染物浓度曲线。识别技术采用了贝叶斯推断法与马尔科夫链蒙特卡罗抽样法相结合的方法,从而能够估算出可疑污染源的位置、排放规模以及事件开始的概率分布。具体而言,研究了涉及连续排放和多排放源的情况。对于单点污染源的识别,在所有三个参数都未知的情况下,从污染物传输和扩散路径上的两个监测点获取浓度曲线对于确定污染源的特征是必要且充分的。对于多污染源的识别,采用了改进采样的 SWMM-Bayesian 策略,大大提高了准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of illicit discharges in sewer networks by an SWMM-Bayesian coupled approach
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.
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