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Detection of Anomalies in Water Networks by Functional Data Analysis

机译:通过功能数据分析检测供水网络中的异常

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摘要

A functional data analysis (FDA) based methodology for detecting anomalous flows in urban water networks is introduced. Primary hydraulic variables are recorded in real-time by telecontrol systems, so they are functional data (FD). In the first stage, the data are validated (false data are detected) and reconstructed, since there could be not only false data, but also missing and noisy data. FDA tools are used such as tolerance bands for FD and smoothing for dense and sparse FD. In the second stage, functional outlier detection tools are used in two phases. In Phase I, the data are cleared of anomalies to ensure that data are representative of the in-control system. The objective of Phase II is system monitoring. A new functional outlier detection method is also proposed based on archetypal analysis. The methodology is applied and illustrated with real data. A simulated study is also carried out to assess the performance of the outlier detection techniques, including our proposal. The results are very promising.
机译:介绍了一种基于功能数据分析(FDA)的方法来检测城市供水网络中的异常流量。主要液压变量由远程控制系统实时记录,因此它们是功能数据(FD)。在第一阶段,对数据进行验证(检测到错误数据)并对其进行重建,因为不仅可能存在错误数据,而且还会存在丢失和嘈杂的数据。使用FDA工具,例如用于FD的公差带以及用于密集和稀疏FD的平滑处理。在第二阶段,功能性离群值检测工具分两个阶段使用。在第一阶段,清除数据中的异常以确保数据代表控制系统。第二阶段的目标是系统监视。在原型分析的基础上,提出了一种新的功能离群值检测方法。该方法已应用并通过实际数据进行了说明。还进行了模拟研究,以评估异常检测技术(包括我们的建议)的性能。结果是非常有希望的。

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