arXiv Open Access 2026

AGCD: Agent-Guided Cross-Modal Decoding for Weather Forecasting

Jing Wu Yang Liu Lin Zhang Junbo Zeng Jiabin Wang +11 lainnya
Lihat Sumber

Abstrak

Accurate weather forecasting is more than grid-wise regression: it must preserve coherent synoptic structures and physical consistency of meteorological fields, especially under autoregressive rollouts where small one-step errors can amplify into structural bias. Existing physics-priors approaches typically impose global, once-for-all constraints via architectures, regularization, or NWP coupling, offering limited state-adaptive and sample-specific controllability at deployment. To bridge this gap, we propose Agent-Guided Cross-modal Decoding (AGCD), a plug-and-play decoding-time prior-injection paradigm that derives state-conditioned physics-priors from the current multivariate atmosphere and injects them into forecasters in a controllable and reusable way. Specifically, We design a multi-agent meteorological narration pipeline to generate state-conditioned physics-priors, utilizing MLLMs to extract various meteorological elements effectively. To effectively apply the priors, AGCD further introduce cross-modal region interaction decoding that performs region-aware multi-scale tokenization and efficient physics-priors injection to refine visual features without changing the backbone interface. Experiments on WeatherBench demonstrate consistent gains for 6-hour forecasting across two resolutions (5.625 degree and 1.40625 degree) and diverse backbones (generic and weather-specialized), including strictly causal 48-hour autoregressive rollouts that reduce early-stage error accumulation and improve long-horizon stability.

Topik & Kata Kunci

Penulis (16)

J

Jing Wu

Y

Yang Liu

L

Lin Zhang

J

Junbo Zeng

J

Jiabin Wang

Z

Zi Ye

G

Guowen Li

S

Shilei Cao

J

Jiashun Cheng

F

Fang Wang

M

Meng Jin

Y

Yerong Feng

H

Hong Cheng

Y

Yutong Lu

H

Haohuan Fu

J

Juepeng Zheng

Format Sitasi

Wu, J., Liu, Y., Zhang, L., Zeng, J., Wang, J., Ye, Z. et al. (2026). AGCD: Agent-Guided Cross-Modal Decoding for Weather Forecasting. https://arxiv.org/abs/2603.15260

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2026
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arXiv
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