Awesome-Weather-Forecast
[Awesome-Weather-Forecast]:An algorithm that automatically obtains data from a remote server on a regular basis, automatically loads models and makes forecasts.
To Do
- [β ] Create β³Recently Focused Papers
Content
Medium Range:
- β(Nature 2023) FuXi, chen2023fuxi et al. [Paper]
- π¬ FuXi: the first : A cascade machine learning forecasting system for 15-day global weather forecast.
- β(Nature 2023) Pangu,[Paper]
- π¬ Pangu: the first : Accurate medium-range global weather forecasting with 3D neural networks.
- β(Science 2023) GraphCast, [Paper]
- π¬ GraphCast: the first : Learning skillful medium-range global weather forecasting.
- β(Arxiv preprint 2023) FengWu, [Paper]
- π¬ GraphCast: the first : FengWu: Pushing the Skillful Global Medium-range Weather Forecast beyond 10 Days Lead.
- β(Website 2023) ClimaX, [Paper]
- π¬ ClimaX: the first : The first foundation model for weather and climate.
- β(Arxiv preprint 2023) W-MAE, [Paper]
- π¬ W-MAE: the first : W-MAE: Pre-trained weather model with masked autoencoder for multi-variable weather forecasting
- β(Arxiv preprint 2023) SAFNO, [Paper]
- π¬ SAFNO: the first : Spherical Fourier Neural Operators:Learning Stable Dynamics on the Sphere
- β(Arxiv preprint 2022) FourCastNet, [Paper]
- π¬ FourCastNet: the first : FourCastNet: A Global Data-driven High-resolution Weather Model using Adaptive Fourier Neural Operators
- β(Nature 2023) FuXi, chen2023fuxi et al. [Paper]
NowCasting:
- Precipitation:
- β(Nature 2023) NowcastNet, [Paper]
- π¬ NowcastNet: the first : Skilful nowcasting of extreme precipitation with NowcastNet
- β(Nature 2023) Corrformer, [Paper]
- π¬ Corrformer: the first : Interpretable weather forecasting for worldwide stations with a unified deep model
- β(Nature 2023) SRNDiff [SRNDiff]
- π¬ SRNDiff: : Short-term Rainfall Nowcasting with Condition Diffusion Model
- β(Nature 2023) SRNDiff [SRNDiff]
- π¬ SRNDiff: : Short-term Rainfall Nowcasting with Condition Diffusion Model
- β(Arxiv preprint 2023) MetNet3, [Paper]
- π¬ MetNet3: the first : Deep Learning for Day Forecasts from Sparse Observations
- β(Arxiv preprint 2023) MetNet2, [Paper]
- π¬ MetNet2: the first : Deep learning for twelve hour precipitation forecasts
- β(Arxiv preprint 2023) MetNet, [Paper]
- π¬ MetNet: the first : MetNet: A Neural Weather Model for Precipitation Forecasting
- β(Arxiv preprint 2023) PreDiff, [Paper]
- π¬ PreDiff: the first : PreDiff: Precipitation Nowcasting with Latent Diffusion Models
- β(Arxiv preprint 2023) DGMR, [Paper]
- π¬ DGMR: the first : Latent diffusion models for generative precipitation nowcasting with accurate uncertainty quantification
- β(AAAI) SwinRDM, [Paper]
- π¬ SwinRDM: the first : SwinRDM: Integrate SwinRNN with Diffusion Model towards High-Resolution and High-Quality Weather Forecasting
- β(MDPI) GAN, [Paper]
- π¬ GAN: the first : Towards a More Realistic and Detailed Deep-Learning-Based Radar Echo Extrapolation Method
- β(GRL) Ο-GNN, [Paper]
- π¬ Ο-GNN: the first : Coupling Physical Factors for Precipitation Forecast in China With Graph Neural Network
- β(Nature 2023) NowcastNet, [Paper]
- Precipitation:
Seasonal:
Climate:
Extreme:
- β(Nature 2019) FuXi-Extreme, [Paper]
- π¬ FuXi-Extreme: the first : FuXi-Extreme: Improving extreme rainfall and wind forecasts with diffusion model
- Typhoon:
- β(Nature 2019) FuXi-Extreme, [Paper]
SR:
- β(RMetS 2023) Uformer [Paper]
- π¬ Uformer : Investigating transformer-based models for spatial downscaling and correcting biases of near-surface temperature and wind-speed forecasts.
- β(Earth-Science Reviews 2023) ** [Paper]
- π¬ A comprehensive review on deep learning based remote sensing image super-resolution methods
- β(NeurIPS 2022) RCMs [Paper]
- π¬ RCMs : Regional climate model emulator based on deep learning: concept and first evaluation of a novel hybrid downscaling approach
- β(NeurIPS 2021) ESRGAN [Paper]
- π¬ A comparative study of convolutional neural network models for wind field downscaling
- β(Water Resources Research 2021) SRDRN [Paper]
- π¬ Deep learning for daily precipitation and temperature downscaling
- β(IEEE Transactions on Geoscience and Remote Sensing 2021) PSD-Net [Paper]
- π¬ Stochastic Super-Resolution for Downscaling Time-Evolving Atmospheric Fields With a Generative Adversarial Network
- β(Meteorological Applications 2020) DeepRU [Paper]
- π¬ A comparative study of convolutional neural network models for wind field downscaling
- β(Association for Computing Machinery 2020) YNet [Paper]
- π¬ Climate downscaling using ynet: a deep convolutional network with skip connections and fusion
- β(Mathematical Problems in Engineering 2020) CDN [Paper](https://dl.acm.org/doi/abs/10.1145/3394486.3403366]
- π¬ A climate downscaling deep learning model considering the multiscale spatial correlations and chaos of meteorological events
- β(Journal of Applied Meteorology and Climatology 2020a) ** [Paper]
- π¬ Deep-learning-based gridded downscaling of surface meteorological variables in complex terrain. Part i: daily maximum and minimum 2-m temperature
- β(Journal of Applied Meteorology and Climatology 2020b) ** [Paper]
- π¬ Deep-learning-based gridded downscaling of surface meteorological variables in complex terrain. Part i: daily maximum and minimum 2-m temperature
- β(NeurIPS 2019) PSD-Net [Paper]
- π¬ PSD-Net : Numerical Weather Model Super-Resolution
- β(Theoretical and Applied Climatology 2019) ** [Paper]
- π¬ Intercomparison of machine learning methods for statistical downscaling: the case of daily and extreme precipitation
- β(Association for Computing Machinery 2017) Deepsd [Paper]
- π¬ Deepsd: generating high resolution climate change projections through single image super-resolution. Proceedings of the 23rd ACM SIGKDD international conference on knowledge discovery and data mining
- β(RMetS 2023) Uformer [Paper]
DA
- β(Arxiv preprint 2023) FengWu-4DVar [Paper]
- π¬ FengWu-4DVar: Coupling the Data-driven Weather Forecasting Model with 4D Variational Assimilation
- β(Arxiv preprint 2023) FengWu-4DVar [Paper]