Deep learning has proven extremely successful both in classification and regression problems, especially when it is trained on very large datasets. In the space weather context, despite the unarguably large amount of data at our disposal, it remains an open question whether historical datasets contain enough information to build a predictive deep learning system. In this work, we use multi-wavelength solar images from SOHO (Solar and Heliospheric Observatory) as inputs to a deep convolutional neural network, to predict solar wind parameters observed at L1, 3 - 5 days ahead
Energy management is an emerging problem nowadays and utilization of renewable energy sources is an ...
Short-term solar forecasting is essential for the large-scale application of solar energy and is nec...
International audienceWe focus on deep learning algorithms, improving upon the Weather Research and ...
Deep learning has proven extremely successful both in classification and regression problems, especi...
Emanating from the base of the Sun’s corona, the solar wind fills the interplanetary medium with a m...
Deep Learning Convolutional Neural Networks have been successfully used in many applications. Its ve...
This version of the article has been accepted for publication, after peer review (when applicable) a...
Solar activity gives rise to various kinds of space weather among which solar flares have serious de...
Despite the advances in the field of solar energy, improvements of solar forecasting techniques, add...
Wind Energy generation depends on the existence of wind, a meteorological phenomena intermittent by ...
Wind Energy generation depends on the existence of wind, a meteorological phenomena intermittent by ...
The effect of atmospheric drag on spacecraft dynamics is considered one of the predominant sources o...
To balance electricity production and demand, it is required to use different prediction techniques ...
Renewable energy is essential for planet sustainability. Renewable energy output forecasting has a s...
Energy management is an emerging problem nowadays and utilization of renewable energy sources is an ...
Energy management is an emerging problem nowadays and utilization of renewable energy sources is an ...
Short-term solar forecasting is essential for the large-scale application of solar energy and is nec...
International audienceWe focus on deep learning algorithms, improving upon the Weather Research and ...
Deep learning has proven extremely successful both in classification and regression problems, especi...
Emanating from the base of the Sun’s corona, the solar wind fills the interplanetary medium with a m...
Deep Learning Convolutional Neural Networks have been successfully used in many applications. Its ve...
This version of the article has been accepted for publication, after peer review (when applicable) a...
Solar activity gives rise to various kinds of space weather among which solar flares have serious de...
Despite the advances in the field of solar energy, improvements of solar forecasting techniques, add...
Wind Energy generation depends on the existence of wind, a meteorological phenomena intermittent by ...
Wind Energy generation depends on the existence of wind, a meteorological phenomena intermittent by ...
The effect of atmospheric drag on spacecraft dynamics is considered one of the predominant sources o...
To balance electricity production and demand, it is required to use different prediction techniques ...
Renewable energy is essential for planet sustainability. Renewable energy output forecasting has a s...
Energy management is an emerging problem nowadays and utilization of renewable energy sources is an ...
Energy management is an emerging problem nowadays and utilization of renewable energy sources is an ...
Short-term solar forecasting is essential for the large-scale application of solar energy and is nec...
International audienceWe focus on deep learning algorithms, improving upon the Weather Research and ...