Improving Ensemble Forecasts of Abnormally Deflecting Tropical Cyclones with Fused Atmosphere-Ocean-Terrain Data
Qixiang Li, Yuan Zhou, Shuwei Huo, Chong Wang, Xiaofeng Li

TL;DR
This paper introduces a novel multimodal dataset and a coupled atmosphere-ocean-terrain deep learning model that significantly enhances the accuracy of tropical cyclone forecasts, especially for abnormal deflections.
Contribution
It presents the first integrated atmosphere-ocean-terrain deep learning model and a comprehensive multimodal dataset for improved tropical cyclone prediction.
Findings
Model achieves state-of-the-art accuracy in TC forecasting.
Significantly improves prediction of abnormal deflected TCs.
Demonstrates effectiveness across all cases from 2017 to 2024.
Abstract
Deep learning-based tropical cyclone (TC) forecasting methods have demonstrated significant potential and application advantages, as they feature much lower computational cost and faster operation speed than numerical weather prediction models. However, existing deep learning methods still have key limitations: they can only process a single type of sequential trajectory data or homogeneous meteorological variables, and fail to achieve accurate forecasting of abnormal deflected TCs. To address these challenges, we present two groundbreaking contributions. First, we have constructed a multimodal and multi-source dataset named AOT-TCs for TC forecasting in the Northwest Pacific basin. As the first dataset of its kind, it innovatively integrates heterogeneous variables from the atmosphere, ocean, and land, thus obtaining a comprehensive and information-rich meteorological dataset. Second,…
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