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首页> 外文期刊>Journal of Water Resources Planning and Management >Time Series Data Decomposition-Based Anomaly Detection and Evaluation Framework for Operational Management of Smart Water Grid
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Time Series Data Decomposition-Based Anomaly Detection and Evaluation Framework for Operational Management of Smart Water Grid

机译:基于时间序列数据分解的异常检测和智能水网操作管理的评估框架

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With the increasing adoption of advanced meter infrastructure (AMI), smarter sensors, and temporary and/or permanent data loggers, it is imperative to leverage data analytics methods with hydraulic modeling to improve the quality and efficiency of water service. One important task is to timely detect and evaluate anomaly events so that corresponding actions can be taken to prevent and mitigate the impact of possible water service disruption, which may be caused by the anomaly incidents including but not limited to pipe bursts and unauthorized water usages. In this paper, a comprehensive analysis framework is developed for anomaly event detection and evaluation by developing an integrated solution, which is implemented in multiple components including: (1) data-preprocess or cleansing to eliminate and correct error data records; (2) decomposition of time series data to ensure data stationarity; (3) outlier detection by statistical process control methods with stationary time series; (4) classification of system anomaly events by either correlation analysis of high-flow events with low-pressure events or high-flow outliers with low-pressure outliers; and (5) quantitative evaluation of the system anomaly events with field reported leak incidents. The solution framework has been applied to the water supply zone that is permanent monitored with the flow meter at the inlet and 12 pressure stations throughout the zone with more than 8,000 pipes. Analysis has been conducted with one-year monitoring data and 106 historical leak records, which are employed to validate 526 detected anomaly events. Among them, a 75% true positive rate has been achieved and 90% of 106 field events have been successfully detected with a lead time of more than 24 h. The results obtained indicate that the developed solution method is effective at facilitating the operational management of a smart water grid by maximizing the return of investment in continuously monitoring water distribution networks.
机译:随着先进仪表基础设施(AMI),更智能的传感器和临时和/或永久性数据记录器的采用越来越多,它必须利用水力建模的数据分析方法来提高水服务的质量和效率。一个重要的任务是及时检测和评估异常事件,以便可以采取相应的行动来预防和减轻可能的水服务中断的影响,这可能是由异常事件引起的,包括但不限于管道爆发和未经授权的水用。在本文中,开发了一种全面的分析框架,用于通过开发集成解决方案来开发异常事件检测和评估,这些解决方案是在多个组件中实现的,包括:(1)数据预处理或清洁以消除和正确的错误数据记录; (2)时间序列数据的分解,以确保数据实向性; (3)通过静止时间序列统计过程控制方法的异常检测; (4)系统异常事件的分类通过具有低压异常的低压事件或高流量异常值的高流动事件的相关分析; (5)对现场报告泄漏事件的系统异常事件的定量评估。解决方案框架已应用于供水区,该水供应区永久监测在入口处的流量计和12个压力站的流量计,具有超过8,000个管道。通过一年的监测数据和106个历史泄漏记录进行了分析,这些泄漏记录被用于验证526个检测到的异常事件。其中,已经实现了75%的真正阳性率,并且已经成功地检测到90%的现场事件中的90%以上超过24小时。所获得的结果表明,通过最大化连续监测水分配网络的投资回报,开发的解决方案方法有效地促进了智能水网格的运行管理。

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