A Tree-Structured Neural Network Model for Household Energy Breakdown
Abstract
Residential buildings constitute roughly one-fourth of the total energy use across the globe. Numerous studies have shown that providing an energy breakdown increases residents' awareness of energy use and can help save up to 15% energy. A significant amount of prior work has looked into source-separation techniques collectively called non-intrusive load monitoring (NILM), and most prior NILM research has leveraged high-frequency household aggregate data for energy breakdown.
Year of Publication
2019
Conference Name
The World Wide Web Conference
Date Published
05