对流风暴临近预报的三维卷积循环网络

W. Zhang, Wei Li, Lei Han
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引用次数: 1

摘要

极短期对流风暴预报,称为临近预报,长期以来一直是一个重要的问题,并引起了人们的极大兴趣。现有的临近预报方法主要依赖于雷达图像,在临近预报风暴的发生和发展方面受到限制。对数值模式提供的气象数据进行实时再分析,可提供有关三维(3D)、大气、边界层热动力学(如温度和风)的宝贵信息。为了挖掘这些数据,我们在这里开发了一种卷积循环混合深度学习方法,具有以下特点:(1)使用基于细胞的过采样来增加训练样本的数量;这缓解了阶级不平衡的问题;(2)利用原始三维雷达数据和三维气象数据,通过多源三维卷积重新分析,无需手工特征工程;(3)在学习对流过程时空模式的长短期记忆编码器/解码器上叠加卷积神经网络。实验结果表明,该方法优于其他外推方法。定性分析得出了令人鼓舞的临近预报结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Three-Dimensional Convolutional-Recurrent Network for Convective Storm Nowcasting
Very short-term convective storm forecasting, termed nowcasting, has long been an important issue and has attracted substantial interest. Existing nowcasting methods rely principally on radar images and are limited in terms of nowcasting storm initiation and growth. Real-time re-analysis of meteorological data supplied by numerical models provides valuable information about three-dimensional (3D), atmospheric, boundary layer thermal dynamics, such as temperature and wind. To mine such data, we here develop a convolution-recurrent, hybrid deep-learning method with the following characteristics: (1) the use of cell-based oversampling to increase the number of training samples; this mitigates the class imbalance issue; (2) the use of both raw 3D radar data and 3D meteorological data re-analyzed via multi-source 3D convolution without any need for handcraft feature engineering; and (3) the stacking of convolutional neural networks on a long short-term memory encoder/decoder that learns the spatiotemporal patterns of convective processes. Experimental results demonstrated that our method performs better than other extrapolation methods. Qualitative analysis yielded encouraging nowcasting results.
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