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首页> 外文期刊>Journal of Water Resources Planning and Management >Data Mining to Identify Contaminant Event Locations in Water Distribution Systems
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Data Mining to Identify Contaminant Event Locations in Water Distribution Systems

机译:数据挖掘以识别供水系统中的污染物事件位置

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摘要

To respond to growing concerns related to potential contamination ingress via backflow and/or terrorist threats to drinking water, a data mining approach is developed. Use of this data mining approach, in conjunction with a maximum likelihood procedure provides the means to identify the location and time of an intrusion event, based on limited sensor data. Uncertainties in water demand, sensor measurement, and modeling, are demonstrated to be highly relevant and necessary to be considered in the contamination identification problem. The effectiveness of the data mining method is demonstrated using a case study network where it takes only 3 min to identify a multiple injection event using five sensors in a 285 node water distribution network, including consideration of the aforementioned sources of uncertainty. The effectiveness of the method ensures the ability for a rapid-response to an abnormal event, and consequently, minimizes exposure risks of water consumers.
机译:为了应对与通过回流和/或恐怖分子对饮用水的威胁而导致的潜在污染进入有关的日益增长的担忧,开发了一种数据挖掘方法。结合最大似然程序使用此数据挖掘方法,可提供一种基于有限的传感器数据识别入侵事件的位置和时间的方法。需水量,传感器测量和模型的不确定性被证明是高度相关的,在污染识别问题中必须加以考虑。使用案例研究网络证明了数据挖掘方法的有效性,该案例研究仅需3分钟即可使用285个节点的供水网络中的五个传感器来识别多次注入事件,其中包括对上述不确定性因素的考虑。该方法的有效性确保了对异常事件的快速响应的能力,并且因此使水消耗者的暴露风险最小化。

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