基于时空特征与误差校正的降水临近预报模型OA
Precipitation nowcasting model based on spatiotemporal characteristics and error correction
为提升降水强度和时空分布的预报性能,提出了以雷达回波和定量降水估计序列数据对为双通道输入的深度学习模型ECST-RainNet,通过卷积神经网络提取空间特征,时空长短期记忆网络提取时序特征,并引入误差校正模块抑制系统性偏差,基于河北柳林实验流域开展典型降水过程的估计和预报.研究结果表明,ECST-RainNet定量降水估计结果与雨量站实测降水相关系数达 0.67,均方根误差为 4.77 mm/h,显著优于动态雷达反射率因子(Z)—地面降水强度(R)关系法的计算结果.在1小时预见期降水预报中,ECST-RainNet比仅采用雷达回波单数据源的机器学习和深度学习模型具有更小的计算误差,且能更准确地预报累积面雨量的降水中心和分布格局,表明融合数据源可有效提升模型降水预报性能.研究成果可为精确的雷达降水估计和临近预报提供技术支撑.
To enhance the performance of precipitation intensity forecasting and spatiotemporal distribution pattern forecasting,this paper describes a deep learning model of error-corrected spatiotemporal Rain-Net(ECST-RainNet).With radar echoes and quantitative precipitation estimation sequences as dual-channel inputs,this new model adopts convolutional neural networks to extract spatial features and a spatiotemporal long-short term memory network to capture temporal characteristics,incorporating an error correcting module to reduce systematic bias.We verify its performance and forecasting of typical precipitation events against the rain gauge measurements from the Liulin experimental watershed in Hebei Province.The results show that in comparison with the rainfall measured at these rain gauges,its quantitative precipitation estimation achieves a correlation coefficient of 0.67 and a root mean square error of 4.77 mm/h,substantially outperforming the dynamic radar reflectivity factor(Z)-surface precipitation intensity(R)relationship method.For one-hour lead-time precipitation forecasts,it generates an estimation error lower than that of the machine learning or deep learning model that uses radar echoes as a single data source.Meanwhile,it improves the forecasting accuracy of the distribution patterns and the precipitation center of cumulative areal rainfalls,showing the performance improved by integrating multiple data sources and its significance in radar precipitation estimation and nowcasting.
李磊菁;李建柱;吴朝文;闫凤翔;李媛媛;王永涛
天津大学 水利工程智能建设与运维全国重点实验室,天津 300350||贵州省水利科学研究院,贵阳 550002天津大学 水利工程智能建设与运维全国重点实验室,天津 300350贵州省水利科学研究院,贵阳 550002河北省水文勘测研究中心,石家庄 050031河北省水文勘测研究中心,石家庄 050031贵州省水利科学研究院,贵阳 550002
天文与地球科学
定量降水估计降水临近预报深度学习时空特征雷达回波
quantitative precipitation estimationprecipitation nowcastingdeep learningspatiotemporal characteristicsradar echo
《水力发电学报》 2026 (6)
90-99,10
天津市科技计划项目(24ZYCGYS00730)国家自然科学基金资助项目(52279022)贵州省科技计划项目(黔科合[2025]035号)
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