卷积自编码器在雷达降水时空偏校正中的应用

SunghoㆍOh SungryulㆍLee DaeeopㆍLe Xuan HienㆍLee Giha Jung
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引用次数: 0

摘要

随着近年来局地强降雨频率的增加,高分辨率雷达资料的重要性也随之增加。本研究旨在修正双极化雷达仍然存在的时空偏差。在许多研究中,已经尝试了各种统计技术来纠正雷达降雨的偏差。本研究采用卷积自编码器(Convolutional Autoencoder, CAE)算法对用于ME洪水预报的s波段双极化雷达进行偏置校正,该算法是卷积神经网络(CNN)的一种。CAE模型是基于2017年7月清州洪水事件的10分钟时间分辨率的雷达数据集进行训练的。结果表明,新建立的CAE模型通过减小原始雷达降水的偏差,在时间和空间上改善了模拟结果。因此,CAE模型可以学习相邻网格之间的空间关系,用于雷达和卫星生成的网格气候数据的实时更新。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of convolutional autoencoder for spatiotemporal bias-correction of radar precipitation
As the frequency of localized heavy rainfall has increased during recent years, the importance of high-resolution radar data has also increased. This study aims to correct the bias of Dual Polarization radar that still has a spatial and temporal bias. In many studies, various statistical techniques have been attempted to correct the bias of radar rainfall. In this study, the bias correction of the S-band Dual Polarization radar used in flood forecasting of ME was implemented by a Convolutional Autoencoder (CAE) algorithm, which is a type of Convolutional Neural Network (CNN). The CAE model was trained based on radar data sets that have a 10-min temporal resolution for the July 2017 flood event in Cheongju. The results showed that the newly developed CAE model provided improved simulation results in time and space by reducing the bias of raw radar rainfall. Therefore, the CAE model, which learns the spatial relationship between each adjacent grid, can be used for real-time updates of grid-based climate data generated by radar and satellites.
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