论文标题
使用深卷积神经网络的统计温度分布从概要量表到中尺度
Statistical Downscaling of Temperature Distributions from the Synoptic Scale to the Mesoscale Using Deep Convolutional Neural Networks
论文作者
论文摘要
深度学习,尤其是用于图像识别的卷积神经网络,最近已用于气象学。有前途的应用之一是开发一个统计替代模型,该模型将低分辨率动态模型的输出图像转换为高分辨率图像。我们的研究展示了一个初步实验,该实验评估了每6小时降低概要温度场的模型的性能。深度学习模型通过运行22公里的全球分析表面风和温度进行了训练,因为输入,运行5公里的区域分析表面温度是所需的输出,以及覆盖日本中部的目标域。结果证实,我们的深卷积神经网络(DCNN)能够详细估算海岸线和山脊的位置,这些位置并未保留在输入中,并提供高分辨率的表面温度分布。例如,尽管在高度大于1000 m处的全球和区域分析之间的平均根平方误差(RMSE)为2.7 K,但RMSE降低到1.0 K,而相关系数则通过替代模型从0.6提高到0.9。尽管本研究仅评估了一个替代模型,但可以通过增加缩小变量和垂直轮廓来改善它。 DCNN的替代模型一旦训练完成,仅需少量计算能力即可。因此,如果在短时间间隔实施替代模型,它们将以低成本提供高分辨率的天气预测指南或环境紧急警报。
Deep learning, particularly convolutional neural networks for image recognition, has been recently used in meteorology. One of the promising applications is developing a statistical surrogate model that converts the output images of low-resolution dynamic models to high-resolution images. Our study exhibits a preliminary experiment that evaluates the performance of a model that downscales synoptic temperature fields to mesoscale temperature fields every 6 hours. The deep learning model was trained with operational 22-km gridded global analysis surface winds and temperatures as the input, operational 5-km gridded regional analysis surface temperatures as the desired output, and a target domain covering central Japan. The results confirm that our deep convolutional neural network (DCNN) is capable of estimating the locations of coastlines and mountain ridges in great detail, which are not retained in the inputs, and providing high-resolution surface temperature distributions. For instance, while the average root-mean-square error (RMSE) is 2.7 K between the global and regional analyses at altitudes greater than 1000 m, the RMSE is reduced to 1.0 K, and the correlation coefficient is improved from 0.6 to 0.9 by the surrogate model. Although this study evaluates a surrogate model only for surface temperature, it probably can be improved by augmenting the downscaling variables and vertical profiles. Surrogate models of DCNNs require only a small amount of computational power once their training is finished. Therefore, if the surrogate models are implemented at short time intervals, they will provide high-resolution weather forecast guidance or environment emergency alerts at low cost.