论文标题
一种多标签时间序列分类方法,用于非侵入性水最终用途监测
A Multi-label Time Series Classification Approach for Non-intrusive Water End-Use Monitoring
论文作者
论文摘要
存在各种应用领域的许多现实世界问题,这些问题表现出时间依赖性。我们专注于特定类型的时间序列分类,我们称之为汇总时间序列分类。我们考虑了多变量时间序列的汇总序列,并提出了一种仅根据汇总信息进行预测的方法。作为一个案例研究,我们将方法应用于使用非侵入水监测时家庭水最终用水消失的具有挑战性的问题。我们的方法不需要对事件的A-Priori识别,据我们所知,这是首次考虑的。我们使用住宅用水模拟器进行了广泛的实验研究,涉及不同的机器学习分类器,多标签分类方法,并成功证明了我们方法的有效性。
Numerous real-world problems from a diverse set of application areas exist that exhibit temporal dependencies. We focus on a specific type of time series classification which we refer to as aggregated time series classification. We consider an aggregated sequence of a multi-variate time series, and propose a methodology to make predictions based solely on the aggregated information. As a case study, we apply our methodology to the challenging problem of household water end-use dissagregation when using non-intrusive water monitoring. Our methodology does not require a-priori identification of events, and to our knowledge, it is considered for the first time. We conduct an extensive experimental study using a residential water-use simulator, involving different machine learning classifiers, multi-label classification methods, and successfully demonstrate the effectiveness of our methodology.