While the literature has focused on large, industrial, or na-tional 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 elec-tricity 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. We find that the improvement provided by the Cluster-based Aggregate Forecasting strategy depends not only on the number of clusters, but more importantly on the size of the customer base
International audienceRecent developments in energy metering technologies have allowed electric load...
The increasing use of renewable energy sources with vari-able output, such as solar photovoltaic and...
Electrical load forecasting has a fundamental role in the decision-making process of energy system o...
Pervasive installation of smart meters opens new possibilities for advanced analytics of electricity...
While electricity demand forecasting literature has focused on large, industrial, and national deman...
The pervasive installation of smart meters in households opens new possibilities for advanced analyt...
Advanced metering infrastructures such as smart metering have begun to attract increasing attention;...
Forecasting the electricity demand for individual households is important for both consumers and uti...
<p>Daily electricity demand load profiles across a 24 hr period on 21st July 2013 based on WikiEnerg...
This paper presents a new method for forecasting a load of individual electricity consumers using sm...
Aspirations of grid independence could be achieved by residential power systems connected only to sm...
This paper studies an aggregate demand prediction problem relevant in smart grids. In our model, an ...
Future grid management systems will coordinate distributed production and storage resources to manag...
Microgrids need a robust residential load forecasting. As a consequence, this highlights the problem...
Abstract—We propose a simple empirical scaling law that de-scribes load forecasting accuracy at diff...
International audienceRecent developments in energy metering technologies have allowed electric load...
The increasing use of renewable energy sources with vari-able output, such as solar photovoltaic and...
Electrical load forecasting has a fundamental role in the decision-making process of energy system o...
Pervasive installation of smart meters opens new possibilities for advanced analytics of electricity...
While electricity demand forecasting literature has focused on large, industrial, and national deman...
The pervasive installation of smart meters in households opens new possibilities for advanced analyt...
Advanced metering infrastructures such as smart metering have begun to attract increasing attention;...
Forecasting the electricity demand for individual households is important for both consumers and uti...
<p>Daily electricity demand load profiles across a 24 hr period on 21st July 2013 based on WikiEnerg...
This paper presents a new method for forecasting a load of individual electricity consumers using sm...
Aspirations of grid independence could be achieved by residential power systems connected only to sm...
This paper studies an aggregate demand prediction problem relevant in smart grids. In our model, an ...
Future grid management systems will coordinate distributed production and storage resources to manag...
Microgrids need a robust residential load forecasting. As a consequence, this highlights the problem...
Abstract—We propose a simple empirical scaling law that de-scribes load forecasting accuracy at diff...
International audienceRecent developments in energy metering technologies have allowed electric load...
The increasing use of renewable energy sources with vari-able output, such as solar photovoltaic and...
Electrical load forecasting has a fundamental role in the decision-making process of energy system o...