Precipitation Nowcasting Using Physics Informed Discriminator Generative Models
Nowcasting leverages real-time atmospheric conditions to forecast weather over short periods. State-of-the-art models, including PySTEPS, encounter difficulties in accurately forecasting extreme weather events because of their unpredictable distribution patterns. In this study, we design a physics-i...
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Zusammenfassung: | Nowcasting leverages real-time atmospheric conditions to forecast weather
over short periods. State-of-the-art models, including PySTEPS, encounter
difficulties in accurately forecasting extreme weather events because of their
unpredictable distribution patterns. In this study, we design a
physics-informed neural network to perform precipitation nowcasting using the
precipitation and meteorological data from the Royal Netherlands Meteorological
Institute (KNMI). This model draws inspiration from the novel Physics-Informed
Discriminator GAN (PID-GAN) formulation, directly integrating physics-based
supervision within the adversarial learning framework. The proposed model
adopts a GAN structure, featuring a Vector Quantization Generative Adversarial
Network (VQ-GAN) and a Transformer as the generator, with a temporal
discriminator serving as the discriminator. Our findings demonstrate that the
PID-GAN model outperforms numerical and SOTA deep generative models in terms of
precipitation nowcasting downstream metrics. |
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DOI: | 10.48550/arxiv.2406.10108 |