Chen Hao, Chen Peng, Wang Rong, Qiu Liangcai, Tang Fucai, Xiong Mingzhu
College of Geomatics, Xi'an University of Science and Technology, Xi'an 710054, China.
State Key Laboratory of Geodesy and Earth's Dynamics, Innovation Academy for Precision Measurement Science and Technology, CAS, Wuhan 430077, China.
Sensors (Basel). 2023 Sep 22;23(19):8019. doi: 10.3390/s23198019.
Soil moisture (SM) is a vital climate variable in the interaction process between the Earth's atmosphere and land. However, global soil moisture products from various satellite missions and land surface models are affected by inherently discontinuous observations and coarse spatial resolution, which limits their application at fine spatial scales. To address this problem, this paper integrates three diverse types of datasets from in situ, satellites, and models through Spherical cap harmonic analysis (SCHA) and Helmert variance component estimation (HVCE) to produce 1 km of spatio-temporally continuous SM products with high accuracy. First, this paper eliminates the bias between different datasets and in situ sites and resamples the datasets before data fusion. Then, multi-source SM data fusion is performed based on the SCHA and HVCE methods. Finally, this paper evaluates the fused products from three aspects, including the performance of representative sites under different climate types, the overall performance of validation sites, and the comparison with other products. The results show that the fused products have better performance than other SM products. In the representative sites, the minimal correlation coefficient (R) of the fused products is above 0.85, and the largest root mean square error (RMSE) is below 0.040 m m. For all validation sites, the R and RMSE of the fused products are 0.889 and 0.036 m m, respectively, while the R for other products is below 0.75 and the RMSE is above 0.06 m m. In comparison to other SM products, the fused products exhibit superior performance, generally align more closely with in situ measurements, and possess the ability to accurately and finely capture the spatial and temporal variability of surface SM.
土壤湿度(SM)是地球大气与陆地相互作用过程中的一个重要气候变量。然而,来自各种卫星任务和陆面模型的全球土壤湿度产品受到固有的不连续观测和粗糙空间分辨率的影响,这限制了它们在精细空间尺度上的应用。为了解决这个问题,本文通过球冠谐波分析(SCHA)和赫尔默特方差分量估计(HVCE)整合了来自原位、卫星和模型的三种不同类型的数据集,以生成具有高精度的1公里时空连续土壤湿度产品。首先,本文消除了不同数据集和原位站点之间的偏差,并在数据融合之前对数据集进行重采样。然后,基于SCHA和HVCE方法进行多源土壤湿度数据融合。最后,本文从三个方面对融合产品进行评估,包括不同气候类型下代表性站点的性能、验证站点的整体性能以及与其他产品的比较。结果表明,融合产品比其他土壤湿度产品具有更好的性能。在代表性站点中,融合产品的最小相关系数(R)高于0.85,最大均方根误差(RMSE)低于0.040毫米。对于所有验证站点,融合产品的R和RMSE分别为0.889和0.036毫米,而其他产品的R低于