The Potential of Household Specific Feature Selection for Analysing Smart Home Time-Series Data

Konferenz: Smart SysTech 2016 - European Conference on Smart Objects, Systems and Technologies
07.07.2016 - 08.07.2016 in Duisburg, Germany

Tagungsband: Smart SysTech 2016

Seiten: 6Sprache: EnglischTyp: PDF

Persönliche VDE-Mitglieder erhalten auf diesen Artikel 10% Rabatt

Autoren:
Hausmann, Marc-David; Ziekow, Holger (Fakultät Wirtschaftsinformatik, Hochschule Furtwangen, University of Applied Sciences Furtwangen, Furtwangen, Germany)

Inhalt:
The smart home domain is seen as a growth area with manifold applications, such as services for energy management, comfort, or safety and security. Many of such applications rely in part on machine learning to build models for the given homes. However, each home has an individual setup and installations may vary greatly amongst each other. In this paper we analyse the potential of automatically adapting the feature selection to drive household specific model learning. We illustrate the benefits of household specific feature selection along a sample case of device recognition using real world data. Furthermore we present and test an approach for automatic feature selection form time-series data, based on wrapper methods and genetic optimization.