2022
DOI: 10.20944/preprints202207.0356.v1
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<strong></strong>Mscligan- A Structure-Informed Generative Adversarial Model for Multi-Site Statistical Downscaling of Extreme Precipitation -Using Multi-Model Ensemble

Abstract: Although the statistical methods of downscaling climate data have progressed significantly, the development of high-resolution precipitation products continues to be a challenge. This is especially true when interest centres on downscaling value over several study sites. In this paper , we report a new downscaling method termed the multi-site Climate Generative Adversarial Network (MSCliGAN), which can simulate annual maximum precipitation to the regional scale during the 1950-2010 period in different cities i… Show more

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