预报- clstm:一种新的卷积LSTM网络用于云临近预报

Chao Tan, Xin Feng, Jianwu Long, Li Geng
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引用次数: 13

摘要

随着公众对大规模、实时气象服务的需求越来越高,短时云预报的精细化已成为气象预报工作的重要组成部分。为了提供符合气象服务要求的云临近预报,在本文中,我们提出了一种新的基于分层卷积长短期记忆网络的深度学习模型,我们称之为FORECAST-CLSTM,它带有一个新的Forecaster损失函数来预测未来的卫星云图。该模型旨在融合分层网络结构中的多尺度特征,同时预测云的像素值和形态运动。我们还收集了大约40K的红外卫星云图,并创建了一个大尺度的卫星云图数据集(SCMD)。与最先进的ConvLSTM模型相比,所提出的FORECAST-CLSTM模型具有更好的预测性能,所提出的Forecaster Loss Function也被证明比传统的Loss Function更好地保留了真实大气条件的不确定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FORECAST-CLSTM: A New Convolutional LSTM Network for Cloudage Nowcasting
With the highly demand of large-scale and real-time weather service for public, a refinement of short-time cloudage prediction has become an essential part of the weather forecast productions. To provide a weather-service-compliant cloudage nowcasting, in this paper, we propose a novel hierarchical Convolutional Long-Short-Term Memory network based deep learning model, which we term as FORECAST-CLSTM, with a new Forecaster loss function to predict the future satellite cloud images. The model is designed to fuse multi-scale features in the hierarchical network structure to predict the pixel value and the morphological movement of the cloudage simultaneously. We also collect about 40K infrared satellite nephograms and create a large-scale Satellite Cloudage Map Dataset(SCMD). The proposed FORECAST-CLSTM model is shown to achieve better prediction performance compared with the state-of-the-art ConvLSTM model and the proposed Forecaster Loss Function is also demonstrated to retain the uncertainty of the real atmosphere condition better than conventional loss function.
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