DocumentCode
3717218
Title
Cluster-based aggregate forecasting for residential electricity demand using smart meter data
Author
Tri Kurniawan Wijaya;Matteo Vasirani;Samuel Humeau;Karl Aberer
Author_Institution
School of Computer and Communication Sciences, EPFL, Switzerland
fYear
2015
Firstpage
879
Lastpage
887
Abstract
While electricity demand forecasting literature has focused on large, industrial, and national demand, this paper focuses on short-term (1 and 24 hour ahead) electricity demand forecasting for residential customers at the individual and aggregate level. Since electricity consumption behavior may vary between households, we first build a feature universe, and then apply Correlation-based Feature Selection to select features relevant to each household. Additionally, smart meter data can be used to obtain aggregate forecasts with higher accuracy using the so-called Cluster-based Aggregate Forecasting (CBAF) strategy, i.e., by first clustering the households, forecasting the clusters´ energy consumption separately, and finally aggregating the forecasts. We found that the improvement provided by CBAF depends not only on the number of clusters, but also more importantly on the size of the customer base.
Keywords
"Forecasting","Energy consumption","Measurement","Aggregates","Smart meters","Load modeling","Predictive models"
Publisher
ieee
Conference_Titel
Big Data (Big Data), 2015 IEEE International Conference on
Type
conf
DOI
10.1109/BigData.2015.7363836
Filename
7363836
Link To Document