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Forecast Oriented Classification of Spatio-Temporal Extreme Events

机译:时空极端事件的预测导向分类

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In complex dynamic systems,accurate forecasting of extreme events,such as hurricanes,is a highly underdetermined,yet very important sustainability problem.While physics-based models deserve their own merits,they often provide unreliable predictions for variables highly related to extreme events.In this paper,we propose a new supervised machine learning problem,which we call a forecast oriented classification of spatiotemporal extreme events.We formulate three important real-world extreme event classification tasks,including seasonal forecasting of (a) tropical cyclones in Northern Hemisphere,(b) hurricanes and landfalling hurricanes in North Atlantic,and (c) North African rainfall.Corresponding predictor and predictand data sets are constructed.These data present unique characteristics and challenges that could potentially motivate future Artificial Intelligent and Data Mining research.
机译:在复杂的动态系统中,对极端事件(如飓风)的准确预测是一个尚未充分确定的,但仍非常重要的可持续性问题。尽管基于物理的模型应有其自身的优点,但它们经常为与极端事件高度相关的变量提供不可靠的预测。本文提出了一个新的监督式机器学习问题,我们将其称为时空极端事件的预测导向分类。我们制定了三个重要的现实世界极端事件分类任务,包括(a)北半球热带气旋的季节预报,( b)北大西洋的飓风和登陆飓风,以及(c)北非降雨。构建了相应的预测器和预测数据集,这些数据具有独特的特征和挑战,可能会激发未来的人工智能和数据挖掘研究。

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