Nowcast for cloud top height from Himawari-8 data based on deep learning algorithms

IF 2.3 4区 地球科学 Q3 METEOROLOGY & ATMOSPHERIC SCIENCES Meteorological Applications Pub Date : 2023-06-25 DOI:10.1002/met.2130
Zhuofu Yu, Zhonghui Tan, Shuo Ma, Wei Yan
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引用次数: 1

Abstract

Cloud top height (CTH) indicates the vertical development of clouds. Intensely vertically developing clouds are usually accompanied by extreme weather systems and pose a threat to aviation safety. Therefore, nowcast for CTH is necessary and meaningful to guide aviation flights. In this study, we researched the nowcast for CTH (mainly within 0–2 h) based on deep learning algorithms. With Sichuan Province as the study area, we collected CTH data of Himawari-8 satellite from 2018 to 2020. Convolutional-long-short-term-memory (ConvLSTM) and trajectory-gated-recurrent-unit (TrajGRU) were used to build nowcast models in the encoder-forecaster framework. The optical flow model and persistence were used as benchmarks. The results showed that the deep learning models did not have significant advantages over the benchmarks in the first 20 min. However, with increasing nowcast time, the nowcast skills of the deep learning models were gradually exhibited. For all four seasons, the TrajGRU-based model showed superior performance over the ConvLSTM-based model and the benchmarks. In spring, autumn and winter, the results yielded by the ConvLSTM-based model were second only to those of the TrajGRU-based model. However, in summer, the ConvLSTM-based model did not outperform the persistence. The results of the optical flow model worsened significantly with increasing nowcast time. In contrast to the persistence, the optical flow model had almost no nowcast skills after 40 min.

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基于深度学习算法的Himawari‐8数据的云顶高度临近预报
云顶高度(CTH)反映了云的垂直发展情况。强烈垂直发展的云通常伴随着极端天气系统,对航空安全构成威胁。因此,对中天进行临近预报对指导航空飞行是十分必要和有意义的。在本研究中,我们研究了基于深度学习算法的CTH临近预报(主要是0-2 h)。以四川省为研究区,收集了Himawari‐8卫星2018 - 2020年的CTH数据。使用卷积-长短期-记忆(ConvLSTM)和轨迹门控-循环单元(TrajGRU)在编码器-预测器框架中构建临近预报模型。以光流模型和持久性作为基准。结果表明,深度学习模型在前20分钟内并没有明显优于基准测试。然而,随着临近播报时间的增加,深度学习模型的临近播报技能逐渐显现出来。在所有四个季节中,基于TrajGRU的模型都比基于ConvLSTM的模型和基准表现出更好的性能。在春季、秋季和冬季,基于ConvLSTM的模型的结果仅次于基于TrajGRU的模型。然而,在夏季,基于ConvLSTM的模型的表现并不优于持久性。随着临近预报时间的增加,光流模型的计算结果明显恶化。与持续性相比,光流模型在40分钟后几乎没有临近预报技能。
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来源期刊
Meteorological Applications
Meteorological Applications 地学-气象与大气科学
CiteScore
5.70
自引率
3.70%
发文量
62
审稿时长
>12 weeks
期刊介绍: The aim of Meteorological Applications is to serve the needs of applied meteorologists, forecasters and users of meteorological services by publishing papers on all aspects of meteorological science, including: applications of meteorological, climatological, analytical and forecasting data, and their socio-economic benefits; forecasting, warning and service delivery techniques and methods; weather hazards, their analysis and prediction; performance, verification and value of numerical models and forecasting services; practical applications of ocean and climate models; education and training.
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