监测生活用水量:基于模型和数据的最终用途分类方法比较研究

Pavlos Vryoni Pavlou, S. Filippou, Solon Solonos, Stelios G. Vrachimis, Kleanthis Malialis, Demetrios G. Eliades, Theocharis Theocarides, Marios M. Polycarpou
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引用次数: 0

摘要

事实证明,监测不同器具的用水量并告知消费者,会对他们节约饮用水的行为产生影响。实现这一目标的最实用、最具成本效益的方法是采用非侵入式方法,对家庭主供水管上的流量传感器接收到的数据进行本地分析。在这项工作中,我们提出了两种不同的方法来应对终端用水量分解和用水事件分类的挑战。第一种方法基于模型(MB),结合使用动态时间包装和统计边界来分析四种水的终端使用特征。第二种方法是基于学习(LB)的方法,以数据为驱动,将问题表述为时间序列分类问题,而不依赖于事件的先验识别。我们进行了广泛的计算研究,包括 MB 方法和 LB 方法的比较,以及在边缘计算设备上应用 LB 方法的实验研究。两种方法都获得了相似的 F1 分数(LB:71.73%,MB:71.04%),其中 LB 更为精确。嵌入式 LB 方法得分略高(72.01%),同时增强了现场实时处理能力,提高了安全性和隐私性,并节省了成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monitoring domestic water consumption: a comparative study of model-based and data-driven end-use disaggregation methods
Monitoring the water usage of different appliances and informing consumers about it has been shown to have an impact on their behavior toward drinking water conservation. The most practical and cost-effective way to accomplish this is through a non-intrusive approach, that locally analyzes data received from a flow sensor at the main water supply pipe of a household. In this work, we present two different methods addressing the challenges of disaggregating end-use consumption and classifying consumption events. The first method is model-based (MB) and uses a combination of dynamic time wrapping and statistical bounds to analyze four water end-use characteristics. The second, learning-based (LB) method is data-driven and formulates the problem as a time-series classification problem without relying on a priori identification of events. We perform an extensive computational study that includes a comparison between an MB and an LB method, as well as an experimental study to demonstrate the application of the LB method on an edge computing device. Both methods achieve similar F1 scores (LB: 71.73%, MB: 71.04%) with the LB being more precise. The embedded LB method achieves a slightly higher score (72.01%) while enhancing on-site real-time processing, improving security, and privacy and enabling cost savings.
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