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Deep-Hurricane-Tracker: Tracking and Forecasting Extreme Climate Events

机译:深度飓风追踪器:跟踪和预报极端气候事件

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Tracking and predicting extreme events in large-scale spatio-temporal climate data are long standing challenges in climate science. In this paper, we propose Convolutional LSTM (ConvLSTM)-based spatio-temporal models to track and predict hurricane trajectories from large-scale climate data; namely, pixel-level spatio-temporal history of tropical cyclones. To address the tracking problem, we model time-sequential density maps of hurricane trajectories, enabling to capture not only the temporal dynamics but also spatial distribution of the trajectories. Furthermore, we introduce a new trajectory prediction approach as a problem of sequential forecasting from past to future hurricane density map sequences. Extensive experiment on actual 20 years record shows that our ConvLSTM-based tracking model significantly outperforms existing approaches, and that the proposed forecasting model achieves successful mapping from predicted density map to ground truth.
机译:在大规模的时空气候数据中跟踪和预测极端事件是气候科学长期以来的挑战。在本文中,我们提出了基于卷积LSTM(ConvLSTM)的时空模型,以从大规模气候数据中跟踪和预测飓风的轨迹。即热带气旋的像素级时空历史。为了解决跟踪问题,我们对飓风轨迹的时间顺序密度图进行建模,不仅可以捕获轨迹的时间动态,还可以捕获轨迹的空间分布。此外,作为从过去到将来的飓风密度图序列的顺序预测问题,我们引入了一种新的轨迹预测方法。在实际的20年记录上进行的大量实验表明,基于ConvLSTM的跟踪模型明显优于现有方法,并且所提出的预测模型已成功实现了从预测密度图到地面实况的映射。

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