Water Meter Replacement Recommendation for Municipal Water Distribution Networks using Ensemble Outlier Detection Methods

F. Kaveh-Yazdy, S. Zarifzadeh
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引用次数: 1

Abstract

Due to their structure and usage condition, water meters face degradation, breaking, freezing, and leakage problems. There are various studies intended to determine the appropriate time to replace degraded ones. Earlier studies have used several features, such as user meteorological parameters, usage conditions, water network pressure, and structure of meters to detect failed water meters. This article proposes a recommendation framework that uses registered water consumption values as input data and provides meter replacement recommendations. This framework takes time series of registered consumption values and preprocesses them in two rounds to extract effective features. Then, multiple un-/semi-supervised outlier detection methods are applied to the processed data and assigns outlier/normal labels to them. At the final stage, a hypergraph-based ensemble method receives the labels and combines them to discover the suitable label. Due to the unavailability of ground truth labeled data for meter replacement, we compare our method with respect to its FPR and two internal metrics: Dunn index and Davies-Bouldin Index. Results of our comparative experiments show that the proposed framework detects more compact clusters with smaller variance.
使用集合异常值检测方法的城市配水网络水表更换建议
由于其结构和使用条件,水表面临退化、断裂、冻结和泄漏问题。有各种研究旨在确定更换退化产品的适当时间。早期的研究使用了一些特征,如用户气象参数、使用条件、供水管网压力和水表结构来检测故障水表。本文提出了一个建议框架,该框架使用注册的用水量值作为输入数据,并提供了水表更换建议。该框架获取注册消费值的时间序列,并分两轮对其进行预处理,以提取有效特征。然后,将多种非监督/半监督的异常值检测方法应用于处理后的数据,并为其分配异常值/正态标签。在最后阶段,基于超图的集成方法接收标签并将其组合以发现合适的标签。由于无法获得用于电表更换的地面实况标记数据,我们将我们的方法与其FPR和两个内部指标:Dunn指数和Davies-Bouldin指数进行了比较。我们的比较实验结果表明,所提出的框架检测到的簇更紧凑,方差更小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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