Improved Weather Radar Echo Extrapolation Through Wind Speed Data Fusion Using a New Spatiotemporal Neural Network Model

IF 1.5 4区 地球科学 Q4 METEOROLOGY & ATMOSPHERIC SCIENCES
Huan-tong Geng, Bo-yang Xie, Xiao-yan Ge, Jin-zhong Min, Xiao-ran Zhuang
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引用次数: 0

Abstract

: Weather radar echo extrapolation plays a crucial role in weather forecasting. However, traditional weather radar echo extrapolation methods are not very accurate and do not make full use of historical data. Deep learning algorithms based on Recurrent Neural Networks also have the problem of accumulating errors. Moreover, it is difficult to obtain higher accuracy by relying on a single historical radar echo observation. Therefore, in this study, we constructed the Fusion GRU module, which leverages a cascade structure to effectively combine radar echo data and mean wind data. We also designed the Top Connection so that the model can capture the global spatial relationship to construct constraints on the predictions. Based on the Jiangsu Province dataset, we compared some models. The results show that our proposed model, Cascade Fusion Spatiotemporal Network (CFSN), improved the critical success index (CSI) by 10.7% over the baseline at the threshold of 30 dBZ. Ablation experiments further validated the effectiveness of our model. Similarly, the CSI of the complete CFSN was 0.004 higher than the suboptimal solution without the cross-attention module at the threshold of 30 dBZ.
利用新型时空神经网络模型,通过风速数据融合改进天气雷达回波推断法
:天气雷达回波外推法在天气预报中起着至关重要的作用。然而,传统的天气雷达回波外推方法并不十分准确,也没有充分利用历史数据。基于递归神经网络的深度学习算法也存在误差累积的问题。此外,依靠单一的雷达回波历史观测数据很难获得更高的精度。因此,在本研究中,我们构建了融合 GRU 模块,利用级联结构将雷达回波数据和平均风数据有效地结合起来。我们还设计了顶部连接,使模型能够捕捉全局空间关系,为预测构建约束条件。基于江苏省的数据集,我们对一些模型进行了比较。结果表明,在阈值为 30 dBZ 时,我们提出的级联融合时空网络(CFSN)模型比基线模型的临界成功指数(CSI)提高了 10.7%。消融实验进一步验证了我们模型的有效性。同样,在阈值为 30 dBZ 时,完整 CFSN 的 CSI 比没有交叉注意模块的次优方案高 0.004。
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来源期刊
热带气象学报
热带气象学报 METEOROLOGY & ATMOSPHERIC SCIENCES-
CiteScore
1.80
自引率
8.30%
发文量
2793
审稿时长
6-12 weeks
期刊介绍: Information not localized
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