WindINR achieves continuous high-resolution local wind queries and sparse-observation correction in complex terrain by updating only a compact latent state, delivering 2.6x speedup over full-network fine-tuning in OSSEs over Senja.
Appa: Bending weather dynamics with latent diffusion models for global data assimilation
4 Pith papers cite this work. Polarity classification is still indexing.
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ForcingDAS is a single diffusion-based model for data assimilation that unifies filtering and smoothing regimes via per-frame noise scheduling and reduces long-horizon error accumulation on non-Markovian observations.
HealDA supplies ML-based initial conditions for AI weather models that produce forecasts trailing ERA5-initialized runs by less than one day of effective lead time, with the skill gap arising mainly from initial error size.
DroughtFormer predicts soil moisture, vegetation health, and related variables in Africa with skill out to 90 days that matches or exceeds climatology for most targets, but shows lower accuracy for precipitation and flash drought indices.
citing papers explorer
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WindINR: Latent-State INR for Fast Local Wind Query and Correction in Complex Terrain
WindINR achieves continuous high-resolution local wind queries and sparse-observation correction in complex terrain by updating only a compact latent state, delivering 2.6x speedup over full-network fine-tuning in OSSEs over Senja.
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ForcingDAS: Unified and Robust Data Assimilation via Diffusion Forcing
ForcingDAS is a single diffusion-based model for data assimilation that unifies filtering and smoothing regimes via per-frame noise scheduling and reduces long-horizon error accumulation on non-Markovian observations.
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HealDA: Highlighting the importance of initial errors in end-to-end AI weather forecasts
HealDA supplies ML-based initial conditions for AI weather models that produce forecasts trailing ERA5-initialized runs by less than one day of effective lead time, with the skill gap arising mainly from initial error size.
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Prediction of Drought and Flash Drought in Africa at the Seasonal-to-Subseasonal Scale using the Community Research Earth Digital Intelligence Twin Framework
DroughtFormer predicts soil moisture, vegetation health, and related variables in Africa with skill out to 90 days that matches or exceeds climatology for most targets, but shows lower accuracy for precipitation and flash drought indices.