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基于CNN的流域多源土壤湿度数据降尺度研究OA

Study on downscaling of multi-source soil moisture data in basins based on CNN

中文摘要英文摘要

为获取流域高精度土壤湿度数据,融合SMAP、AMSR2、CLDAS 土壤湿度数据,考虑降水、归一化植被指数、坡度等多种因素对土壤湿度的作用,基于卷积神经网络(CNN)建立了一种可考虑辅助因子空间邻域关系的土壤湿度 CNN 降尺度模型,生成空间分辨率为 1 km 的土壤湿度数据.模型在湖南省浦市—五强溪坝址区间流域的应用结果表明:降尺度前后土壤湿度空间分布特征一致,降尺度后数据能正确反映土壤湿度对洪水事件的响应,且增添了更多空间分布细节;与墒情站实测数据相比,降尺度后土壤湿度的平均偏差、平均绝对误差、均方根误差均值分别为-0.061、0.086、0.099 cm3/cm3;与随机森林降尺度模型结果对比,CNN 降尺度模型具有更好的稳定性.

To obtain high-precision soil moisture data in basins,three types of soil moisture data from SMAP,AMSR2,and CLDAS were integrated.Considering the effects of precipitation,normalized difference vegetation index,slope,and other factors on soil moisture,a convolutional neural network(CNN)downscaling model for soil moisture that can consider the spatial neighborhood relationship of auxiliary factors was established based on CNN,and the soil moisture data with a spatial resolution of 1 km were obtained.The model was applied to the basin from Pushi County to Wuqiangxi Dam site in Hunan Province,and the results show that the spatial distribution characteristics of soil moisture data before and after downscaling are consistent,and the soil moisture data after downscaling can correctly reflect the response of soil moisture to flood events and add more spatial distribution details.Compared with the measured soil moisture data at soil moisture stations,the mean bias,mean absolute error,and root mean square error of the downscaled soil moisture are-0.061,0.086,and 0.099 cm3/cm3.The CNN downscaling model also shows better stability in comparison with the results of the random forest downscaling model.

李巧玲;李晓梅;仇娟娟;刘兴文;谭忠成

河海大学水文水资源学院河海大学水文水资源学院江苏省水文水资源勘测局南通分局水利部小浪底水利枢纽管理中心河海大学水文水资源学院

土壤湿度降尺度卷积神经网络深度学习浦市—五强溪坝址区间流域

soil moisturedownscalingconvolutional neural networkdeep learningthe basin from Pushi County to Wuqiangxi Dam site

《水资源保护》 2026 (2)

100-106,7

山西省水利技术推广与应用项目(2025ZF15)

10.3880/j.issn.1004-6933.2026.02.011

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