Increasing Accuracy and Resolution of Weather Forecasts Using Deep Generative Models

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United States of America Patent

APP PUB NO 20240160923A1
SERIAL NO

18413872

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Abstract

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Embodiments of the present invention provide the use of a conditional Generative Adversarial Network (GAN) to simultaneously correct and downscale (super-resolve) global ensemble weather or climate forecasts. Specifically, a generator deep neural network (G-DNN) in the cGAN comprises a corrector DNN (C-DNN) followed by a super-resolver DNN (SR-DNN). The C-DNN bias-corrects coarse, global meteorological forecasts, taking into account other relevant contextual meteorological fields. The SR-DNN downscales bias-corrected C-DNN output into G-DNN output at a higher target spatial resolution. The GAN is trained in three stages: C-DNN training, SR-DNN training, and overall GAN training, each using separate loss functions. Embodiments of the present invention significantly outperform an interpolation baseline, and approach the performance of operational regional high-resolution forecast models across an array of established probabilistic metrics. Crucially, embodiments of the present invention, once trained, produce high-resolution predictions in seconds on a single machine.

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Patent Owner(s)

Patent OwnerAddress
CLIMATEAI INC353 SACRAMENTO STREET 18TH FLOOR SAN FRANCISCO CA 94111

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Inventor(s)

Inventor Name Address # of filed Patents Total Citations
Price, Ilan Shaun Posel Oxford, GB 2 0
Rasp, Stephan Munich, DE 2 0

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