A Multi-label Time Series Classification Approach for Non-intrusive
Water End-Use Monitoring
- URL: http://arxiv.org/abs/2210.00089v1
- Date: Fri, 30 Sep 2022 20:54:49 GMT
- Title: A Multi-label Time Series Classification Approach for Non-intrusive
Water End-Use Monitoring
- Authors: Dimitris Papatheodoulou, Pavlos Pavlou, Stelios G. Vrachimis,
Kleanthis Malialis, Demetrios G. Eliades, Theocharis Theocharides
- Abstract summary: We focus on a specific type of time series classification which we refer to as aggregated time series classification.
We 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.
- Score: 3.6427459699873004
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: 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.
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