International audienceThe Horizon2020 Smart4RES project develops forecasting and optimization solutions for the operation of Renewable Energy Sources (RES) and their application in electricity market trading and grid management. As a follow-up of the Poster presented in 2021, this poster presents the latest solutions developed in Smart4RES that intend to cover a large spectrum of prediction horizons and spatial scales in order to maximize the interest for the wind power industry.At the scale of a wind farm, the fluctuations of wind conditions at very-short-term horizons (seconds to minutes ahead) impose significant variations in the structural load of the turbine and its power output. These variations are challenging for a precise control o...
The demand for minute-scale forecasts of wind power is continuously increasing with the growing pene...
The energy market relies on forecasting capabilities of both demand and power generation that need t...
M. A. Muñoz, J. M. Morales, and S. Pineda, Feature-driven Improvement of Renewable Energy Forecastin...
International audienceIn this presentation we will show the research directions and innovative solut...
International audienceIn this paper we present the research directions and innovative solutions deve...
International audienceIn this presentation we will outline the research directions and innovative so...
International audienceIn this presentation we detail highlight results obtained from the research wo...
International audienceThis paper presents the solutions on renewable energy forecasting proposed by ...
The authors would like to acknowledge the company Zéphyr ENR, and especially its CEO Christian Briar...
The ability to precisely forecast power generation for large wind farms is very important, since suc...
International audienceSmart4RES is a European Horizon2020 project developing next generation solutio...
A huge amount of observations (radiometers, ceilometers, sky images, satellites as well as solar pla...
Microgrids have recently emerged as a building block for smart grids combining distributed renewable...
An intelligent machine learning-based method is developed in this paper for modeling and prediction ...
Weather forecast models are essential for sustainable energy systems. However, forecast accuracy may...
The demand for minute-scale forecasts of wind power is continuously increasing with the growing pene...
The energy market relies on forecasting capabilities of both demand and power generation that need t...
M. A. Muñoz, J. M. Morales, and S. Pineda, Feature-driven Improvement of Renewable Energy Forecastin...
International audienceIn this presentation we will show the research directions and innovative solut...
International audienceIn this paper we present the research directions and innovative solutions deve...
International audienceIn this presentation we will outline the research directions and innovative so...
International audienceIn this presentation we detail highlight results obtained from the research wo...
International audienceThis paper presents the solutions on renewable energy forecasting proposed by ...
The authors would like to acknowledge the company Zéphyr ENR, and especially its CEO Christian Briar...
The ability to precisely forecast power generation for large wind farms is very important, since suc...
International audienceSmart4RES is a European Horizon2020 project developing next generation solutio...
A huge amount of observations (radiometers, ceilometers, sky images, satellites as well as solar pla...
Microgrids have recently emerged as a building block for smart grids combining distributed renewable...
An intelligent machine learning-based method is developed in this paper for modeling and prediction ...
Weather forecast models are essential for sustainable energy systems. However, forecast accuracy may...
The demand for minute-scale forecasts of wind power is continuously increasing with the growing pene...
The energy market relies on forecasting capabilities of both demand and power generation that need t...
M. A. Muñoz, J. M. Morales, and S. Pineda, Feature-driven Improvement of Renewable Energy Forecastin...