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Convolutional Neural Network for Short Term Fog Forecasting Based on Meteorological Elements

机译:基于气象要素的卷积神经网络短期雾预报

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Fog is the main weather phenomenon that causes low visibility, which makes traffic and outdoor work extremely dangerous. It is urgent to improve the accuracy of fog forecast. In this paper, ground observation meteorological elements time series data is converted into 2D image format, then we train a simple convolution neural network to predict the existing of short time fog. Different experiments is arranged to validate the performance of the proposed method, which obtained the best prediction recall 71.43% and 71.47% for next four and two hours respectively. Contrasting traditional numerical prediction and model prediction method, the application of convolutional neural network method to fog prediction is our first attempt.
机译:雾是引起低能见度的主要天气现象,这使交通和户外工作极为危险。迫切需要提高雾霾预报的准确性。本文将地面观测气象要素的时间序列数据转换为二维图像格式,然后训练一个简单的卷积神经网络来预测短时雾的存在。安排了不同的实验来验证所提方法的性能,该方法分别在接下来的四个小时和两个小时内获得了最佳的预测召回率,分别为71.43%和71.47%。与传统的数值预测和模型预测方法相比,卷积神经网络方法在雾预测中的应用是我们的首次尝试。

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