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Classification of Emerging Extreme Event Tracks in Multivariate Spatio-Temporal Physical Systems Using Dynamic Network Structures: Application to Hurricane Track Prediction

机译:动态网络结构在多元时空物理系统中新兴极端事件航迹分类:在飓风航迹预测中的应用

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Understanding extreme events, such as hurricanes or forest fires, is of paramount importance because of their adverse impacts on human beings. Such events often propagate in space and time. Predicting-even a few days in advance-what locations will get affected by the event tracks could benefit our society in many ways. Arguably, simulations from first principles, where underlying physics-based models are described by a system of equations, provide least reliable predictions for variables characterizing the dynamics of these extreme events. Data-driven model building has been recently emerging as a complementary approach that could learn the relationships between historically observed or simulated multiple, spatio-temporal ancillary variables and the dynamic behavior of extreme events of interest. While promising, the methodology for predictive learning from such complex data is still in its infancy. In this paper, we propose a dynamic networks-based methodology for in-advance prediction of the dynamic tracks of emerging extreme events. By associating a network model of the system with the known tracks, our method is capable of learning the recurrent network motifs that could be used as discriminatory signatures for the event's behavioral class. When applied to classifying the behavior of the hurricane tracks at their early formation stages in Western Africa region, our method is able to predict whether hurricane tracks will hit the land of the North Atlantic region at least 10-15 days lead lag time in advance with more than 90% accuracy using 10-fold cross-validation. To the best of our knowledge, no comparable methodology exists for solving this problem using data-driven models.
机译:了解诸如飓风或森林火灾之类的极端事件极为重要,因为它们会对人类造成不利影响。此类事件通常在时空中传播。即使提前几天进行预测,什么地点也会受到事件跟踪的影响,这可能以多种方式使我们的社会受益。可以说,根据第一性原理进行的模拟(其中基于方程组描述了基于物理学的基本模型)为表征这些极端事件动力学的变量提供了最不可靠的预测。数据驱动的模型构建最近已成为一种补充方法,可以学习历史观察或模拟的多个时空辅助变量与感兴趣的极端事件的动态行为之间的关系。从这种复杂数据进行预测学习的方法虽然很有前途,但仍处于起步阶段。在本文中,我们提出了一种基于动态网络的方法,可以对正在发生的极端事件的动态轨迹进行提前预测。通过将系统的网络模型与已知轨道相关联,我们的方法能够学习经常性的网络主题,这些主题可以用作事件行为类的歧视性签名。当将其用于对西非地区早期飓风道的行为进行分类时,我们的方法能够预测飓风道是否会提前至少10-15天提前滞后时间袭击北大西洋地区的土地,使用10倍交叉验证的准确性超过90%。据我们所知,尚无可比的方法来使用数据驱动模型来解决此问题。

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