Day-ahead power forecasting is an effective way to deal with the challenges of increased penetration of photovoltaic power into the electric grid, due to its non-programmable nature. This is significantly beneficial for smart grid and micro-grids application. Machine learning and hybrid approaches are well assessed techniques, able to provide effective forecasting with a data-driven approach based on previous measurements from existing power plants. Ensemble methods can be employed to increase solar power forecasting accuracy, by running several independent forecasting models in parallel. In this paper, a novel selective approach is proposed and assessed, where independently trained neural networks are evaluated in terms of accuracy, in ord...
Renewable energy sources (RES) like solar and wind, naturally present high daily and seasonal variab...
Since the beginning of this century, the share of renewables in Europe's total power capacity has al...
Integration of photovoltaics into power grids is difficult as solar energy is highly dependent on cl...
Day-ahead power forecasting is an effective way to deal with the challenges of increased penetration...
Research dealing with renewable energy sources is focusing on the possibility to forecast the daily ...
Solar power has rapidly become an increasingly important energy source in many countries over recent...
The increasing penetration of distributed renewable energy sources like Photovoltaics (PV) may form ...
An Accurate forecast of PV output power is essential to optimize the relationship between energy sup...
The penetration of nonprogrammable renewable energy sources, namely wind and solar technology, has g...
A significant role of renewable energy resource such as solar photovoltaic (PV) is substantially imp...
The uncertainty associated with solar output power is a big challenge to design, manage and implemen...
This paper presents the applicability of artificial neural networks for 24 hour ahead solar power ge...
In this paper, the application of machine learning methods to predict the day ahead photovoltaic pow...
Renewable energy sources (RES) like solar and wind, naturally present high daily and seasonal variab...
Since the beginning of this century, the share of renewables in Europe's total power capacity has al...
Integration of photovoltaics into power grids is difficult as solar energy is highly dependent on cl...
Day-ahead power forecasting is an effective way to deal with the challenges of increased penetration...
Research dealing with renewable energy sources is focusing on the possibility to forecast the daily ...
Solar power has rapidly become an increasingly important energy source in many countries over recent...
The increasing penetration of distributed renewable energy sources like Photovoltaics (PV) may form ...
An Accurate forecast of PV output power is essential to optimize the relationship between energy sup...
The penetration of nonprogrammable renewable energy sources, namely wind and solar technology, has g...
A significant role of renewable energy resource such as solar photovoltaic (PV) is substantially imp...
The uncertainty associated with solar output power is a big challenge to design, manage and implemen...
This paper presents the applicability of artificial neural networks for 24 hour ahead solar power ge...
In this paper, the application of machine learning methods to predict the day ahead photovoltaic pow...
Renewable energy sources (RES) like solar and wind, naturally present high daily and seasonal variab...
Since the beginning of this century, the share of renewables in Europe's total power capacity has al...
Integration of photovoltaics into power grids is difficult as solar energy is highly dependent on cl...