Improving sub-seasonal wind-speed forecasts in Europe with a non-linear model
Ganglin Tian (1), Camille Le Coz (1), Anastase Alexandre Charantonis (1, 2), Alexis Tantet (1), Naveen Goutham (1, 3), Riwal Plougonven (1) ((1) LMD/IPSL, \'Ecole Polytechnique, Palaiseau, France, (2) INRIA, Paris, France, (3) EDF R&D, Palaiseau, France)

TL;DR
This study investigates non-linear models, specifically CNNs, combined with stochastic perturbations, to enhance sub-seasonal wind speed forecasts in Europe by leveraging large-scale atmospheric variables.
Contribution
It demonstrates that non-linear CNN models with stochastic perturbations outperform linear models in short-term sub-seasonal wind forecasts, addressing under-dispersion issues.
Findings
CNN outperforms MLR in initial weeks
Stochastic perturbations improve forecast spread
Performance gap narrows after two weeks
Abstract
Sub-seasonal wind speed forecasts provide valuable guidance for wind power system planning and operations, yet the forecast skills of surface winds decrease sharply after two weeks. However, large-scale variables exhibit greater predictability on this time scale. This study explores the potential of leveraging non-linear relationships between 500 hPa geopotential height (Z500) and surface wind speed to improve sub-seasonal wind speed forecast skills in Europe. Our proposed framework uses a Multiple Linear Regression (MLR) or a Convolutional Neural Network (CNN) to regress surface wind speed from Z500. Evaluations on ERA5 reanalysis indicate that the CNN performs better due to its non-linearity. Applying these models to sub-seasonal forecasts from the European Centre for Medium-Range Weather Forecasts, various verification metrics demonstrate the advantages of non-linearity. Yet, this is…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings · Linear Regression
