Modeling and clustering water demand patterns from real-world smart meter data

Nicolas Cheifetz, Zineb Noumir, A. Samé, A. Sandraz, C. Féliers, V. Heim
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引用次数: 23

Abstract

Abstract. Nowadays, drinking water utilities need an acute comprehension of the water demand on their distribution network, in order to efficiently operate the optimization of resources, manage billing and propose new customer services. With the emergence of smart grids, based on automated meter reading (AMR), a better understanding of the consumption modes is now accessible for smart cities with more granularities. In this context, this paper evaluates a novel methodology for identifying relevant usage profiles from the water consumption data produced by smart meters. The methodology is fully data-driven using the consumption time series which are seen as functions or curves observed with an hourly time step. First, a Fourier-based additive time series decomposition model is introduced to extract seasonal patterns from time series. These patterns are intended to represent the customer habits in terms of water consumption. Two functional clustering approaches are then used to classify the extracted seasonal patterns: the functional version of K-means, and the Fourier REgression Mixture (FReMix) model. The K-means approach produces a hard segmentation and K representative prototypes. On the other hand, the FReMix is a generative model and also produces K profiles as well as a soft segmentation based on the posterior probabilities. The proposed approach is applied to a smart grid deployed on the largest water distribution network (WDN) in France. The two clustering strategies are evaluated and compared. Finally, a realistic interpretation of the consumption habits is given for each cluster. The extensive experiments and the qualitative interpretation of the resulting clusters allow one to highlight the effectiveness of the proposed methodology.
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从真实世界的智能电表数据建模和聚类水需求模式
摘要如今,饮用水公用事业公司需要敏锐地了解其配电网的用水需求,以便有效地运营资源优化、管理计费并提出新的客户服务。随着基于自动抄表(AMR)的智能电网的出现,更细粒度的智能城市现在可以更好地了解消费模式。在这种背景下,本文评估了一种从智能电表产生的用水量数据中识别相关使用情况的新方法。该方法是使用消耗时间序列完全数据驱动的,消耗时间序列被视为每小时时间步长观察到的函数或曲线。首先,引入了一种基于傅立叶的加性时间序列分解模型,从时间序列中提取季节模式。这些模式旨在代表客户在用水量方面的习惯。然后使用两种函数聚类方法对提取的季节模式进行分类:K-means的函数版本和傅立叶回归混合(FReMix)模型。K-means方法产生了一个硬分割和K个具有代表性的原型。另一方面,FReMix是一个生成模型,它还产生K个轮廓以及基于后验概率的软分割。所提出的方法应用于部署在法国最大的配水网络(WDN)上的智能电网。对两种聚类策略进行了评价和比较。最后,对每个集群的消费习惯进行了现实的解释。广泛的实验和对所产生的聚类的定性解释使人们能够强调所提出的方法的有效性。
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来源期刊
Drinking Water Engineering and Science
Drinking Water Engineering and Science Environmental Science-Water Science and Technology
CiteScore
3.90
自引率
0.00%
发文量
3
审稿时长
40 weeks
期刊最新文献
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