基于地形感知的降雨临近预报分类应用

Jui-Hung Chang, Ren-Hung Hwang, Yi-Jhong Gong, Kai-Hsiang Lin
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引用次数: 0

摘要

降雨临近预报提供了对降雨状况的估计,如累积降水、降水预测的概率和降雨强度预测。数值天气预报虽然可以模拟大气状况,但受限于计算性能和初始现场资料,短期预报效果不佳。由于大气环境是一个复杂的非线性系统,我们使用深度学习方法来学习和执行降雨临近预报。在本文中,我们使用了基于残差网络的分类模型,并增加了“侧路径”来输入额外的数据,这有助于我们的模型获取先验知识。在实验中,我们输入地形数据来帮助模型包含地形感知。在我们的实验中,附加地形数据训练的模型比缺乏地形识别的模型获得了更高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying Classification to Rainfall Nowcasting with Topographical Awareness
Rainfall nowcasting provides the estimations of rainfall condition, such as accumulated precipitation, probability of precipitation forecast, and rainfall intensity prediction. Although numerical weather prediction (NWP) can simulate the atmospheric conditions, limited by the computation performance and the initial field data, the NWP does not perform well in short-term forecasting. Since atmosphere environment is a complex non-linear system, we used the deep learning approach to learn and perform the rainfall nowcasting. In this paper, we used the classification model based on a residual network and added the "side path" to input the additional data which could assist our model in acquiring prior knowledge. For the experiment, we input the topographic data to help the model include topographical awareness. In our experiment, the model trained by the additional topographic data achieved the higher accuracy than the model lacking the topographical recognition.
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