Detection and pre-localization of anomalous consumption events in water distribution networks through automated, pressure-based methodology

IF 4.5 3区 工程技术 Q1 WATER RESOURCES
Filippo Mazzoni, Valentina Marsili, Stefano Alvisi, Marco Franchini
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Abstract

Anomalous water-consumption events (AEs) can significantly impact the functioning of water distribution networks, and their prompt identification can improve the service provided by water utilities. This study proposes a new methodology for AE detection and pre-localization in water distribution networks relying exclusively on pressure-data collected in the field, which are exploited to evaluate differential-pressure trends for all possible pressure-sensors couples located in the WDN. In greater detail, AEs are detected and pre-localized by analysing differential-pressure trends over time. The level of deviation of these trends from the standard is considered to provide information about (i) AE alert levels and (ii) the area of the network where the AE is most likely to occur. The application of the methodology to two real case studies featuring different characteristics in terms of residential and industrial users demonstrated method effectiveness in detecting and pre-localizing individual and simultaneous AEs of different magnitude and occurring at different times of the day, providing useful information about the presence of AEs without the need for hydraulic models, and allowing the evaluation of their effects in terms of piezometric head alteration in the different areas of the system.

Abstract Image

通过基于压力的自动方法检测和预定位配水管网中的异常消耗事件
异常耗水事件(AEs)会严重影响配水管网的运行,及时识别异常耗水事件可以改善供水公司提供的服务。本研究提出了一种在配水管网中进行 AE 检测和预定位的新方法,该方法完全依赖于现场收集的压力数据,并利用这些数据来评估配水管网中所有可能的压力传感器耦合的压差趋势。更详细地说,AE 是通过分析压差随时间变化的趋势来检测和预定位的。这些趋势与标准的偏差程度可提供以下信息:(i) AE 警报级别;(ii) 最有可能发生 AE 的网络区域。将该方法应用于两个实际案例研究,这两个案例研究在居民用户和工业用户方面具有不同的特点,结果表明该方法能够有效地检测和预先定位在一天中不同时间发生的不同规模的单个和同时的 AE,无需水力模型即可提供有关 AE 存在的有用信息,并能够评估其在系统不同区域压水头变化方面的影响。
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来源期刊
Water Resources and Industry
Water Resources and Industry Social Sciences-Geography, Planning and Development
CiteScore
8.10
自引率
5.90%
发文量
23
审稿时长
75 days
期刊介绍: Water Resources and Industry moves research to innovation by focusing on the role industry plays in the exploitation, management and treatment of water resources. Different industries use radically different water resources in their production processes, while they produce, treat and dispose a wide variety of wastewater qualities. Depending on the geographical location of the facilities, the impact on the local resources will vary, pre-empting the applicability of one single approach. The aims and scope of the journal include: -Industrial water footprint assessment - an evaluation of tools and methodologies -What constitutes good corporate governance and policy and how to evaluate water-related risk -What constitutes good stakeholder collaboration and engagement -New technologies enabling companies to better manage water resources -Integration of water and energy and of water treatment and production processes in industry
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