The electrification of end-uses is causing a substantial increase in electrical demand in urban distribution systems. In this framework, an accurate forecast of load consumption patterns plays a key role in ensuring an efficient and reliable system operation, proper planning of grid infrastructures, and reduction of operational costs. To this purpose, this work introduces different methods to predict the electric consumption of the medium voltage feeders of a primary substation: two approaches based on machine-learning theory (Random Forest and Generalized Boosting Regressor) and one statistical forecasting model (functional Principal Component Analysis). An extensive analysis of their performance has been conducted considering the urban sc...
Load forecasting plays a critical role in energy management, and power systems, enabling efficient r...
An accurate medium term load forecast (MTLF) is essential for expansion planning studies of distribu...
Nowadays, electric load forecasting through a data analytic approach has become one of the most acti...
The electrification of end-uses is causing a substantial increase in electrical demand in urban dist...
Understanding and predicting the electric consumption patterns in the short-, mid- and long-term, at...
Electric load forecasting is a field where continuous, rigorous efforts are made to improve models w...
The paper illustrates a combined approach based on unsupervised and supervised neural networks for t...
The global requirement for electricity is increasing daily with the expansion of infrastructure and ...
Electricity load demand is the fundamental building block for all utilities planning. In recent year...
In this work collected operational data of typical urban and rural energy network are analysed for p...
Part 10: Energy - Smart GridsInternational audienceThe importance of forecasting has become more evi...
Seasonal fluctuations in electricity consumption, an uneven load of supply lines reduce not only the...
This article aims to estimate the load profiling of electricity that provides information on the ele...
The emergence of concepts, policies and applications like smart grid, energy communities, carbon foo...
An accurate medium term load forecast (MTLF) is essential for expansion planning studies of distribu...
Load forecasting plays a critical role in energy management, and power systems, enabling efficient r...
An accurate medium term load forecast (MTLF) is essential for expansion planning studies of distribu...
Nowadays, electric load forecasting through a data analytic approach has become one of the most acti...
The electrification of end-uses is causing a substantial increase in electrical demand in urban dist...
Understanding and predicting the electric consumption patterns in the short-, mid- and long-term, at...
Electric load forecasting is a field where continuous, rigorous efforts are made to improve models w...
The paper illustrates a combined approach based on unsupervised and supervised neural networks for t...
The global requirement for electricity is increasing daily with the expansion of infrastructure and ...
Electricity load demand is the fundamental building block for all utilities planning. In recent year...
In this work collected operational data of typical urban and rural energy network are analysed for p...
Part 10: Energy - Smart GridsInternational audienceThe importance of forecasting has become more evi...
Seasonal fluctuations in electricity consumption, an uneven load of supply lines reduce not only the...
This article aims to estimate the load profiling of electricity that provides information on the ele...
The emergence of concepts, policies and applications like smart grid, energy communities, carbon foo...
An accurate medium term load forecast (MTLF) is essential for expansion planning studies of distribu...
Load forecasting plays a critical role in energy management, and power systems, enabling efficient r...
An accurate medium term load forecast (MTLF) is essential for expansion planning studies of distribu...
Nowadays, electric load forecasting through a data analytic approach has become one of the most acti...