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Estimating Snow Depth Using Multi-Source Data Fusion Based on the D-InSAR Method and 3DVAR Fusion Algorithm

机译:基于D-InSAR方法和3DVAR融合算法的多源数据融合估算雪深

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Snow depth is a general input variable in many models of agriculture, hydrology, climate, and ecology. However, there are some uncertainties in the retrieval of snow depth by remote sensing. Errors occurred in snow depth evaluation under the D-InSAR methods will affect the accuracy of snow depth inversion to a certain extent. This study proposes a scheme to estimate spatial snow depth that combines remote sensing with site observation. On the one hand, this scheme adopts the Sentinel-1 C-band of the European Space Agency (ESA), making use of the two-pass method of differential interferometry for inversion of spatial snow depth. On the other hand, the 3DVAR (three dimensional variational) fusion algorithm is used to integrate actual snow depth data of virtual stations and real-world observation stations into the snow depth inversion results. Thus, the accuracy of snow inversion will be improved. This scheme is applied in the study area of Bayanbulak Basin, which is located in the central hinterland of Tianshan Mountains in Xinjiang, China. Observation data from stations in different altitudes are selected to test the fusion method. According to the results, most of the obtained snow depth values using interferometry are lower than the observed ones. However, after the fusion using the 3DVAR algorithm, the snow depth accuracy is slightly higher than it was in the inversion results ( R 2 = 0.31 vs. R 2 = 0.50, RMSE = 2.51 cm vs. RMSE = 1.96 cm; R 2 = 0.27 vs. R 2 = 0.46, RMSE = 4.04 cm vs. RMSE = 3.65 cm). When compared with the inversion results, the relative error (RE) improved by 6.97% and 3.59%, respectively. This study shows that the scheme can effectively improve the accuracy of regional snow depth estimation. Therefore, its future application is of great potential.
机译:在许多农业,水文学,气候和生态模型中,积雪深度是一个通用的输入变量。但是,利用遥感技术检索积雪深度存在一些不确定性。 D-InSAR方法在积雪深度评估中出现的误差会在一定程度上影响积雪反演的准确性。这项研究提出了一种将遥感与实地观测相结合的估计空间积雪深度的方案。一方面,该方案采用了欧洲航天局(ESA)的Sentinel-1 C波段,并利用差分干涉法的两遍方法对空间雪深进行了反演。另一方面,使用3DVAR(三维变分)融合算法将虚拟站和实际观测站的实际雪深数据集成到雪深反演结果中。因此,降雪的准确性将得到提高。该方案被应用于位于中国新疆天山中部腹地的巴颜布拉克盆地研究区。选择来自不同高度的站点的观测数据以测试融合方法。根据结果​​,使用干涉法获得的大部分雪深值均低于观测值。但是,使用3DVAR算法进行融合后,雪深精度比反演结果略高(R 2 = 0.31 vs. R 2 = 0.50,RMSE = 2.51 cm vs. RMSE = 1.96 cm; R 2 = 0.27 vs.R 2 = 0.46,RMSE = 4.04 cm vs. RMSE = 3.65 cm)。与反演结果相比,相对误差(RE)分别提高了6.97%和3.59%。研究表明,该方案可以有效提高区域雪深估计的准确性。因此,其未来的应用潜力很大。

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