Probabilistic reconstruction of global sea surface temperature using generative diffusion models
ID:979 View Protection:ATTENDEE Updated Time:2026-04-10 13:43:41 Hits:208 Oral Presentation

Start Time:2026-04-26 16:45(Asia/Shanghai)

Duration:10min

Session:S1-3 专题1.3 人工智能在大气海洋中的应用 » F12专题1.3 人工智能在大气海洋中的应用

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Abstract
 
Accurate reconstruction of global Sea surface temperature (SST), which dominates the air–sea coupling and global climate variability, underpins climate monitoring and prediction. Existing SST reconstruction products primarily provide one deterministic field derived from heterogeneous satellite data and in situ observations, limiting their ability to represent observation uncertainty and to support probabilistic forecasting. Here, we introduce Satellite and in situ Adaptive Guided Estimation (SAGE), a diffusion-based uncertainty-aware generative framework for probabilistic SST reconstruction. SAGE learns a physically consistent prior from historical SST data and performs observation-conditioned posterior sampling without requiring satellite or in situ data during training, enabling flexible state inference from heterogeneous observations. Through a progressive data-fusion strategy, observations from two FengYun-3D polar-orbiting satellites constrain basin-scale structures, while sparse in situ measurements serve to refine local anomalies and extremes. The resulting ensemble SST fields well capture observational uncertainty and scale-dependent variability. Validation against independent in situ observations shows that SAGE substantially reduces reconstruction errors compared with widely used operational products. When used to initialize forecasting systems, SAGE-generated SST fields substantially reduce 10-day SST forecast errors relative to current operational analyses. At the climate scale, SAGE-driven forecasts of the 2023–2024 El Niño event show added value in capturing its onset and intensity evolution compared to conventional approaches. Our results demonstrate that SAGE represents a step toward a new paradigm for ocean state estimation and climate prediction.
 
Keywords
sea surface temperature,Probabilistic reconstruction
Speaker
李海杰
学生 中国科学院大气物理研究所

Submission Author
李海杰 中国科学院大气物理研究所
汪亚 中科院大气所
黄刚 中国科学院大气物理研究所
夏祥鳌 中国科学院大气物理研究所
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Important Date
  • Conference Date

    Apr 25

    2026

    to

    Apr 29

    2026

  • Apr 07 2026

    Draft paper submission deadline

  • Jun 17 2026

    Registration deadline

Sponsored By
未来大气科学论坛理事会
Organized By
河海大学海洋学院
南京大学南京赫尔辛基大气与地球系统科学学院
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