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Analysis of Urban Residential Water Consumption Based on Smart Meters and Fuzzy Clustering

机译:基于智能水表和模糊聚类的城市居民用水量分析

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摘要

The traditional water consumption models were mainly focused on the spatial scale of city or district, on the time scale of year or month, and with data precision of 0.1 m3. As the Internet of Thing (IoT) technology develops rapidly, the smart meters for water-supply are gradually popularized. In the year 2013, Guangzhou City of China established a demonstration area of smart water-supply, in which the residential water consumption data can be collected for every 15 minutes, and the data precision is 0.001 m3. Such high precision data provide us an opportunity to conduct an in-depth research of water consumption habits and patterns, as well as the relationship between water consumption pattern and family structure, job type or life style. It will also bring big impact on the management of residential community, and the plan and supply of urban residential water. This paper proposes an unsupervised clustering algorithm for analyzing urban residential water consumption data collected by smart meters. This algorithm is adaptive at daily time scale and can divide the residents by family structure, job type or life style. In addition, this paper lays a foundation for a further research of the key factors that affect water consumption demands and patterns, as well as for the research of water consumption forecasting model.
机译:传统的用水量模型主要集中在城市或地区的空间规模,年或月的时间尺度上,数据精度为0.1 m3。随着物联网(IoT)技术的飞速发展,用于供水的智能电表逐渐普及。 2013年,中国广州市建立了智能供水示范区,可以每15分钟收集一次居民用水数据,数据精度为0.001 m3。如此高精度的数据为我们提供了深入研究用水习惯和模式以及用水模式与家庭结构,工作类型或生活方式之间的关系的机会。这还将对住宅社区的管理以及城市住宅用水的计划和供应带来巨大影响。本文提出了一种无监督聚类算法,用于分析智能电表收集的城市居民用水数据。该算法在日常时间尺度上具有自适应性,可以按家庭结构,工作类型或生活方式划分居民。此外,本文为进一步研究影响耗水需求和模式的关键因素以及耗水预测模型奠定了基础。

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