DocumentCode
656731
Title
The potential of smart home sensors in forecasting household electricity demand
Author
Ziekow, Holger ; Goebel, Christoph ; Struker, Jens ; Jacobsen, Hans-Arno
Author_Institution
AGT Int., Darmstadt, Germany
fYear
2013
fDate
21-24 Oct. 2013
Firstpage
229
Lastpage
234
Abstract
The aim of this paper is to quantify the impact of disaggregated electric power measurements on the accuracy of household demand forecasts. Demand forecasting on the household level is regarded as an essential mechanism for matching distributed power generation and demand in smart power grids. We use state-of-the-art forecasting tools, in particular support vector machines and neural networks, to evaluate the use of disaggregated smart home sensor data for household-level demand forecasting. Our investigation leverages high resolution data from 3 private households collected over 30 days. Our key results are as follows: First, by comparing the accuracy of the machine learning based forecasts with a persistence forecast we show that advanced forecasting methods already yield better forecasts, even when carried out on aggregated household consumption data that could be obtained from smart meters (1-7%). Second, our comparison of forecasts based on disaggregated data from smart home sensors with the persistence and smart meter benchmarks reveals further forecast improvements (4-33%). Third, our sensitivity analysis with respect to the time resolution of data shows that more data only improves forecasting accuracy up to a certain point. Thus, having more sensors appears to be more valuable than increasing the time resolution of measurements.
Keywords
demand forecasting; distributed power generation; intelligent sensors; learning (artificial intelligence); neural nets; power engineering computing; power measurement; smart meters; smart power grids; support vector machines; aggregated household consumption data; disaggregated electric power measurements; distributed power generation; household electricity demand forecasting; machine learning; neural networks; private households; smart home sensors; smart meter benchmarks; smart power grids; support vector machines; Accuracy; Forecasting; Intelligent sensors; Load management; Support vector machines; Vectors; Forecasting; Smart Grid; Smart Home; Value of ICT;
fLanguage
English
Publisher
ieee
Conference_Titel
Smart Grid Communications (SmartGridComm), 2013 IEEE International Conference on
Conference_Location
Vancouver, BC
Type
conf
DOI
10.1109/SmartGridComm.2013.6687962
Filename
6687962
Link To Document