Denis HockMartin KappesBogdan Ghita
Smart Meters provide detailed energy consumption data and rich contextual information which can be utilized to assist energy providers and consumers in understanding and managing energy use. Here, we present a novel approach using genetic algorithms to infer appliance level data from aggregate load curves without a-priori information. We introduce a theoretical framework to encode load data in a chromosomal representation, to reconstruct individual appliance loads and propose several fitness functions for the evaluation. Our results, using artificial and real world data, confirm the practical relevance and feasibility of our approach.
Olaf WilkenOliver KrämerEnno-Edzard SteenAndreas Hein
Dan WangHuang Xiao LiYe Shu Ce
Krzysztof LiszewskiRobert ŁukaszewskiRyszard KowalikŁukasz NogalW. Winiecki
Haroon RashidVladimir StankovićLina StankovićPushpendra Singh