家庭用水数据最终用途自动分类的改进方法

Filippo Mazzoni, E. J. M. Blokker, S. Alvisi, M. Franchini
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引用次数: 0

摘要

准确估算居民终端用水量有助于开发高效的供水系统。如果无法通过直接计量获得,则可以通过对家庭用水数据进行分解和分类来收集这些信息。然而,大多数自动化技术都需要精细分辨率的数据(如 1 秒)和终端用水参数,而自来水公司可能无法获得这些数据和参数。为了填补上述空白,本研究提出了一种方法,完全依靠文献中的终端参数值,对以 1 分钟时间分辨率收集的室内用水数据进行自动分解和分类。具体来说,将在家庭层面检测到的每个用水事件的特征与所选最终用途类别中最常见的事件特征进行比较。利用在两个不同国家(意大利和荷兰)收集的 14 个家庭的真实数据对该方法进行了测试,结果证实,尽管缺乏单个家庭的终端用水信息,但该方法在对终端用水事件进行分解和分类方面具有潜力,平均准确率高于 90%,平均(归一化)均方根低于 0.06。这表明,即使数据的分辨率与大多数商业水表接近,也可以进行终端用水检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An enhanced method for automated end-use classification of household water data
An accurate estimation of residential end uses of water is helpful in developing efficient water systems. If not obtainable through direct metering, this information can be gathered by disaggregating and classifying household-level water-use data. However, most automated techniques require fine-resolution data (e.g., 1 s) and end-use parameters which may be unavailable to water utilities. To fill the above gap, this study presents a method for the automated disaggregation and classification of indoor water-use data collected at the 1-min temporal resolution, and by exclusively relying on the end-use parameter values available in the literature. Specifically, the features of each water-use event detected at the household level are compared against the most common event features for the selected end-use category. The results obtained by testing the method with real data collected at 14 households in two different countries (Italy and the Netherlands) confirm its potential in disaggregating and classifying water end-use events with an average accuracy higher than 90% and an average (normalized) root-mean-square lower than 0.06 despite the lack of information about end uses in individual households. This demonstrates that end-use detection is possible even with data whose resolution is closer to that of most commercial water meters.
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