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首页> 外文期刊>Journal of Water Resources Planning and Management >Real-Time Identification of Possible Contamination Sources Using Network Backtracking Methods
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Real-Time Identification of Possible Contamination Sources Using Network Backtracking Methods

机译:使用网络回溯方法实时识别可能的污染源

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摘要

In case of contamination intrusion in water distribution systems, water quality sensor data can be used to determine the location and time of the contamination source. One approach to contamination source identification is finding the source location that minimizes the difference between modeled and measured water quality. However, this is an inherently ill-posed mathematical problem, due to the shortage of measurements compared to source parameters, and regularization methods are required to force identification of a unique solution. An alternative practical method is developed in this paper to identify all possible locations and times that explain contamination incidents detected by the water quality sensors. Since sensors cannot detect the quantitative concentration of a contaminant, this method only requires a binary sensor status over time. A particle backtracking algorithm is used to identify the water flow paths and travel times leading to each sensor measurement. Those locations and times that are connected to positive sensor measurements, but are not connected to negative measurements, are the possible sources, assuming no false positiveegative readings and an accurate hydraulic model. The method also forms the basis for incorporating important concerns about hydraulic and sensor uncertainty, which are likely to enlarge the set of possible sources.
机译:万一供水系统中有污染物侵入,可以使用水质传感器数据来确定污染源的位置和时间。一种识别污染源的方法是找到使模拟水质与测量水质之间的差异最小的水源位置。但是,由于与源参数相比缺乏测量,这是一个固有的不适定的数学问题,并且需要使用正则化方法来强制标识唯一的解决方案。本文提出了一种替代的实用方法,以识别所有可能的位置和时间,以解释由水质传感器检测到的污染事件。由于传感器无法检测到污染物的定量浓度,因此该方法仅需要随着时间的推移呈二进制传感器状态。粒子回溯算法用于识别导致每次传感器测量的水流路径和行进时间。假设没有错误的正/负读数和准确的液压模型,那些与正传感器测量值相关但未与负测量值连接的位置和时间是可能的来源。该方法还为合并有关液压和传感器不确定性的重要问题奠定了基础,这些问题可能会扩大可能的来源。

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