2024
DOI: 10.22541/au.170967780.04179996/v1
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Postprocessing East African rainfall forecasts using a generative machine learning model

Bobby Antonio,
Andrew T T McRae,
David MacLeod
et al.

Abstract: Existing weather models are known to have poor skill at forecasting rainfall over East Africa, where there are regular threats of drought and floods. Improved forecasts could reduce the effects of these extreme weather events and provide significant socioeconomic benefits to the region. We present a novel machine learning-based method to improve precipitation forecasts in East Africa, using postprocessing based on a conditional generative adversarial network (cGAN). This addresses the challenge of realisticall… Show more

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