Spatio-temporal estimation of wind speed and wind power using machine learning: predictions, uncertainty and technical potential
Federico Amato, Fabian Guignard, Alina Walch, Nahid Mohajeri,, Jean-Louis Scartezzini, Mikhail Kanevski

TL;DR
This paper introduces a novel machine learning framework for detailed spatio-temporal wind speed and power estimation, including uncertainty quantification, applied to Switzerland's wind energy potential at hourly resolution.
Contribution
It presents a new methodology that reconstructs spatio-temporal wind fields from irregular data, models uncertainty, and propagates it to wind power estimates, addressing key limitations of prior approaches.
Findings
Generated the first high-resolution wind power dataset for Switzerland.
Provided uncertainty estimates for wind speed and power predictions.
Estimated the technical wind power potential for Switzerland.
Abstract
The growth of wind generation capacities in the past decades has shown that wind energy can contribute to the energy transition in many parts of the world. Being highly variable and complex to model, the quantification of the spatio-temporal variation of wind power and the related uncertainty is highly relevant for energy planners. Machine Learning has become a popular tool to perform wind-speed and power predictions. However, the existing approaches have several limitations. These include (i) insufficient consideration of spatio-temporal correlations in wind-speed data, (ii) a lack of existing methodologies to quantify the uncertainty of wind speed prediction and its propagation to the wind-power estimation, and (iii) a focus on less than hourly frequencies. To overcome these limitations, we introduce a framework to reconstruct a spatio-temporal field on a regular grid from irregularly…
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Taxonomy
TopicsEnergy Load and Power Forecasting · Wind Energy Research and Development · Electric Power System Optimization
