Massive informations about individual (household, small and medium enterprise) consumption are now provided with new metering technologies and the smart grid. Two major exploitations of these data are load profiling and forecasting at different scales on the grid. Customer segmentation based on load classification is a natural approach for these purposes. We propose here a new methodology based on mixture of high-dimensional regression models. The novelty of our approach is that we focus on uncovering classes or clusters corresponding to different regression models. As a consequence, these classes could then be exploited for profiling as well as forecasting in each class or for bottom-up forecasts in a unified view. We consider a real datas...
This article belongs to the Special Issue Forecasting in Electricity Markets with Big Data and Artif...
This article belongs to the Special Issue Forecasting in Electricity Markets with Big Data and Artif...
This article belongs to the Special Issue Forecasting in Electricity Markets with Big Data and Artif...
The large amount of data collected by smart meters is a valuable resource that can be used to better...
The availability of increasing amounts of data to electricity utilities through the implementation o...
This paper presents a new method for forecasting a load of individual electricity consumers using sm...
Smart grids require flexible data driven forecasting methods. We propose clustering tools for bottom...
The development of Smart Grid in Norway in specific and Europe/US in general will shortly lead to th...
This paper presents a novel approach to forecast day-ahead electricity consumption for residential ...
Forecasting the electricity demand for individual households is important for both consumers and uti...
There is growing interest in discerning behaviors of electricity users in both the residential and c...
There is growing interest in discerning behaviors of electricity users in both the residential and c...
In order to improve the efficiency and sustainability of electricity systems, most countries worldwi...
In order to improve the efficiency and sustainability of electricity systems, most countries worldwi...
In order to improve the efficiency and sustainability of electricity systems, most countries worldwi...
This article belongs to the Special Issue Forecasting in Electricity Markets with Big Data and Artif...
This article belongs to the Special Issue Forecasting in Electricity Markets with Big Data and Artif...
This article belongs to the Special Issue Forecasting in Electricity Markets with Big Data and Artif...
The large amount of data collected by smart meters is a valuable resource that can be used to better...
The availability of increasing amounts of data to electricity utilities through the implementation o...
This paper presents a new method for forecasting a load of individual electricity consumers using sm...
Smart grids require flexible data driven forecasting methods. We propose clustering tools for bottom...
The development of Smart Grid in Norway in specific and Europe/US in general will shortly lead to th...
This paper presents a novel approach to forecast day-ahead electricity consumption for residential ...
Forecasting the electricity demand for individual households is important for both consumers and uti...
There is growing interest in discerning behaviors of electricity users in both the residential and c...
There is growing interest in discerning behaviors of electricity users in both the residential and c...
In order to improve the efficiency and sustainability of electricity systems, most countries worldwi...
In order to improve the efficiency and sustainability of electricity systems, most countries worldwi...
In order to improve the efficiency and sustainability of electricity systems, most countries worldwi...
This article belongs to the Special Issue Forecasting in Electricity Markets with Big Data and Artif...
This article belongs to the Special Issue Forecasting in Electricity Markets with Big Data and Artif...
This article belongs to the Special Issue Forecasting in Electricity Markets with Big Data and Artif...