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Non-intrusive disaggregation of water consumption data in a residential household
Kozlovskiy, Ilya; Schöb, Samuel; Sodenkamp, Mariya (2016): Non-intrusive disaggregation of water consumption data in a residential household, in: Heinrich C. Mayr und Martin Pinzger (Hrsg.), Informatik 2016 : Tagung vom 26.–30. September 2016 in Klagenfurt, Bonn, S. 1381–1387.
Faculty/Chair:
Author:
Title of the compilation:
Informatik 2016 : Tagung vom 26.–30. September 2016 in Klagenfurt
Editors:
Corporate Body:
INFORMATIK, 2016, Klagenfurt\/Austria
Gesellschaft für Informatik e.V.,
Publisher Information:
Year of publication:
2016
Pages:
ISBN:
978-3-88579-653-4
Series ; Volume:
Language:
English
Abstract:
The water conservation campaigns in residential households are hindered by the poor understanding of residents of how much water they use. For the better designed interventions new tools are necessary to educate the consumers on the water usage of different consumption events. In this paper we use the fine grained (0.5 Hz) water consumption data that was collected non- intrusively in a household over the period of 21 days to develop such tools. We examine the collected data and disaggregate the consumption events into three different categories: short events (e.g., toilet flush), long regular events (e.g., washing machine) and long irregular events (e.g., showers). To achieve this, we use clustering methods, based on level set trees, to identify groups of events that are similar to each other.
Keywords: ; ; ;
Water conservation
Disaggregation
Water consumption
Smart meter
Peer Reviewed:
Yes:
International Distribution:
Yes:
Type:
Contribution to an Articlecollection
Activation date:
December 22, 2016
Permalink
https://fis.uni-bamberg.de/handle/uniba/41506