LGAIAO-PHOct 13, 2025

DAWP: A framework for global observation forecasting via Data Assimilation and Weather Prediction in satellite observation space

arXiv:2510.15978v11 citationsh-index: 13
Originality Highly original
AI Analysis

This addresses limitations in AI-based weather forecasting by reducing biases from reanalysis data, potentially benefiting meteorology and climate science.

The paper tackles the problem of weather prediction by proposing DAWP, a framework that enables artificial intelligence weather prediction (AIWP) to operate directly in observation space rather than relying on reanalysis data, with experiments showing that initialization with an artificial intelligence data assimilation (AIDA) module significantly improves rollout and efficiency.

Weather prediction is a critical task for human society, where impressive progress has been made by training artificial intelligence weather prediction (AIWP) methods with reanalysis data. However, reliance on reanalysis data limits the AIWPs with shortcomings, including data assimilation biases and temporal discrepancies. To liberate AIWPs from the reanalysis data, observation forecasting emerges as a transformative paradigm for weather prediction. One of the key challenges in observation forecasting is learning spatiotemporal dynamics across disparate measurement systems with irregular high-resolution observation data, which constrains the design and prediction of AIWPs. To this end, we propose our DAWP as an innovative framework to enable AIWPs to operate in a complete observation space by initialization with an artificial intelligence data assimilation (AIDA) module. Specifically, our AIDA module applies a mask multi-modality autoencoder(MMAE)for assimilating irregular satellite observation tokens encoded by mask ViT-VAEs. For AIWP, we introduce a spatiotemporal decoupling transformer with cross-regional boundary conditioning (CBC), learning the dynamics in observation space, to enable sub-image-based global observation forecasting. Comprehensive experiments demonstrate that AIDA initialization significantly improves the roll out and efficiency of AIWP. Additionally, we show that DAWP holds promising potential to be applied in global precipitation forecasting.

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