DocumentCode
3719045
Title
A personalized load forecasting enhanced by activity information
Author
Yong Ding;Martin A. Neumann;Erwin Stamm;Michael Beigl;Sozo Inoue;Xincheng Pan
Author_Institution
TECO, Institute of Telematics, Karlsruhe Institute of Technology (KIT) Karlsruhe, Germany
fYear
2015
Firstpage
1
Lastpage
6
Abstract
In this paper, we propose an activity-enhanced load forecasting model at house-level. We focus on the impact of residents´ daily activities on entire household´s power consumption. The contribution of this paper is 3-fold: 1) a web-based system for collecting daily activity information in diary-style; 2) a correlation analysis between activities and power consumption and their information-theoretic relationship; 3) a personalized load forecasting study using different prediction algorithms and an activity recognition procedure as an enhancement. Both correlation and forecasting results show consistently that our collected activity information can contribute to estimate and predict the power consumption of individual households to varying degrees, in particular for 15 minutes ahead load forecasting. An extended forecasting model with an online activity recognition component can further reduce the forecasting error.
Keywords
"Load forecasting","Random variables","Correlation","Entropy","Function approximation","Mutual information"
Publisher
ieee
Conference_Titel
Smart Cities Conference (ISC2), 2015 IEEE First International
Type
conf
DOI
10.1109/ISC2.2015.7366172
Filename
7366172
Link To Document