Seok-Geun Oh , Seok-Woo Son , Young-Ha Kim , Chanil Park , Jihoon Ko , Kijung Shin , Ji-Hoon Ha , Hyesook Lee
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引用次数: 0
摘要
准确的预报对于采取先发制人的行动应对强降雨事件(HREs)至关重要。然而,业务数值天气预报模型很难在短期内预测强降雨事件,尤其是快速和零星发展的强降雨事件。在此,我们提供了多年的评估统计数据,结果表明基于深度学习的强降雨事件预报,经过雷达图像和地面测量的训练,在最长 6 小时的提前时间内,优于短期数值天气预报。此外,还很好地预测了 HRE 的空间分布和昼夜周期。傍晚至傍晚的孤立 HRE 预测尤其有用,这些 HRE 主要来自与地表加热相关的对流过程。这一结果表明,深度学习算法可用于 HRE 预报,有可能成为业务数值天气预报模式的替代方法。
Deep learning model for heavy rainfall nowcasting in South Korea
Accurate nowcasting is critical for preemptive action in response to heavy rainfall events (HREs). However, operational numerical weather prediction models have difficulty predicting HREs in the short term, especially for rapidly and sporadically developing cases. Here, we present multi-year evaluation statistics showing that deep-learning-based HRE nowcasting, trained with radar images and ground measurements, outperforms short-term numerical weather prediction at lead times of up to 6 h. The deep learning nowcasting shows an improved accuracy of 162%–31% over numerical prediction, at the 1-h to 6-h lead times, for predicting HREs in South Korea during the Asian summer monsoon. The spatial distribution and diurnal cycle of HREs are also well predicted. Isolated HRE predictions in the late afternoon to early evening which mostly result from convective processes associated with surface heating are particularly useful. This result suggests that the deep learning algorithm may be available for HRE nowcasting, potentially serving as an alternative to the operational numerical weather prediction model.
期刊介绍:
Weather and Climate Extremes
Target Audience:
Academics
Decision makers
International development agencies
Non-governmental organizations (NGOs)
Civil society
Focus Areas:
Research in weather and climate extremes
Monitoring and early warning systems
Assessment of vulnerability and impacts
Developing and implementing intervention policies
Effective risk management and adaptation practices
Engagement of local communities in adopting coping strategies
Information and communication strategies tailored to local and regional needs and circumstances