基于数据驱动深度学习的极低视温死亡预警预报

Lei Xu, Hongchu Yu, Xihao Zhang, Yuan Gan
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引用次数: 0

摘要

环境温度、风、湿度的突变会对人类的生命安全造成极大的威胁。中国甘肃马拉松灾难凸显了极低视温(AT)低温预警的重要性。本文开发了一个深度卷积神经网络模型和一个统计降尺度框架,用于提前1至12小时预测环境因素,以评估深度学习在1公里分辨率下进行AT预测的有效性。利用ERA-5的温度、风速和相对湿度数据进行实验,结果表明,所建立的深度学习模型可以提前数小时预测甘肃马拉松地区即将到来的极端低温AT事件,且精度高于气候学和持续性预测方法。基于热损失模型的深度学习方法估计的低温时间与3小时前的观测值吻合较好。因此,所建立的深度学习预测方法对于短期高温天气预测和局部低温预警是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extreme low apparent temperature forecasting for early warning of mortality by data-driven deep learning
Abrupt changes in environmental temperature, wind and humidity can lead to great threats to human life safety. The Gansu marathon disaster of China highlights the importance of early warning of hypothermia from extremely low apparent temperature (AT). Here a deep convolutional neural network model together with a statistical downscaling framework is developed to forecast environmental factors for 1 to 12 h in advance to evaluate the effectiveness of deep learning for AT prediction at 1 km resolution. The experiments use data for temperature, wind speed and relative humidity in ERA-5 and the results show that the developed deep learning model can predict the upcoming extreme low temperature AT event in the Gansu marathon region several hours in advance with better accuracy than climatological and persistence forecasting methods. The hypothermia time estimated by the deep learning method with a heat loss model agrees well with the observed estimation at 3-hour lead. Therefore, the developed deep learning forecasting method is effective for short-term AT prediction and hypothermia warnings at local areas.
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