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Machine-Learning-Based Risk Assessment Method for Leak Detection and Geolocation in a Water Distribution System

机译:配水系统中基于机器学习的泄漏评估和地理位置风险评估方法

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摘要

Current leak detection practice in a water distribution system consists of monitoring the distributed volume in a district metering area (DMA) and the consumption measured with automated meter reading (AMR) at the building connections. The detection of the occurrence of a potential leak in a DMA is established through a systematic continuous comparison of the real-time distributed volume and the consumption for this DMA and/or, in the absence of AMR, the comparison of the monitored distributed volume and a reference curve based upon past monitoring records of the distributed volume under similar operational conditions. The purpose of this research was to develop, test, validate, and illustrate the application of the machine-learning-based risk assessment method for early detection of high likelihood leaks, their geolocation, and the detection accuracy assessment in the water distribution system of the SUNRISE demonstration site at the University of Lille, France. It illustrates that the proposed algorithm, integrated with a GIS-based spatial flow data analysis, efficiently supports early detection, likelihood severity assessment, and geolocation of leak sources.
机译:配水系统中当前的泄漏检测实践包括监视区域计量区(DMA)中的分布量以及在建筑物连接处使用自动抄表(AMR)测量的消耗量。通过系统地连续比较实时分布式卷和该DMA的消耗量,和/或在没有AMR的情况下,比较监视的分布式卷和介质,可以确定DMA中是否存在潜在泄漏。基于过去在类似操作条件下对分配量的监视记录的参考曲线。这项研究的目的是开发,测试,验证和说明基于机器学习的风险评估方法在早期检测高可能性泄漏,其地理位置以及在供水系统的配水系统中进行检测准确性评估的应用。法国里尔大学的SUNRISE示范点。它说明了所提出的算法与基于GIS的空间流数据分析相集成,可以有效地支持早期检测,可能性严重性评估以及泄漏源的地理位置。

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