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Estimating surface soil moisture from satellite observations using a generalized regression neural network trained on sparse ground-based measurements in the continental U.S

机译:使用广义回归神经网络估算卫星观测的表面土壤水分训练在大陆U.S的稀疏地基测量中训练

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摘要

This study attempted to develop a point-surface collaborative inversion (PSCI) method for the estimation of regional surface soil moisture (SSM) using a generalized regression neural network (GRNN) trained on sparse ground-based measurements. Specifically, GRNN was employed to establish a nonlinear relationship between ground-based measurements from sparse network stations (SNSs) and passive microwave observations from the Soil Moisture Active Passive (SMAP) satellite in the continental U.S. for April 2015 to March 2018. More importantly, the extended triple collocation (ETC) technique was applied to address the scale mismatch issue resulting from the small spatial support of ground-based measurements, whereby individual SNSs' reliability at the SMAP coarse footprint scale could be determined before fed into GRNN. The 10-fold cross-validation results showed that the GRNN model trained on reliable SNSs obtained a satisfactory performance-the cross-validated R and unbiased RMSE values were 0.88 and 0.050 cm(3) cm(-3), respectively, which outperformed the back-propagation neural network (BPNN) and the other GRNN model trained on all SNSs. Furthermore, temporal and spatial comparisons between the PSCI-based SSM retrievals and other SSM datasets indicated the former agreed the best with ground measurements both in time and space, suggesting the proposed PSCI method had shown great potential in estimating reliable regional SSM climate records.
机译:该研究试图利用在稀疏地基测量上训练的广义回归神经网络(GRNN)来制定用于估计区域表面土壤水分(SSM)的点表面协同反转(PSCI)方法。具体地,GRNN被用来在2015年4月至2018年3月,从稀疏网络站(SNSS)和来自美国大陆的土壤水分活性无源被动(SMAP)卫星的被动微波观测和被动微波观测之间建立非线性关系。更重要的是,应用了扩展的三重搭配(ETC)技术来解决由基于地基测量的小空间支撑而产生的刻度不匹配问题,从而可以在加入GRNN之前确定单独的SNSS的可靠性。 10倍的交叉验证结果表明,在可靠的SNS上培训的GRNN模型获得了令人满意的性能 - 交叉验证的R和非偏析的RMSE值分别为0.88和0.050cm(3)厘米(-3),这显着背部传播神经网络(BPNN)和所有SNS培训的其他GRNN模型。此外,基于PSCI的SSM检索和其他SSM数据集之间的时间和空间比较表明,前者在时间和空间中同意地进行了地面测量,建议所提出的PSCI方法在估计可靠的区域SSM气候记录方面表现出很大的潜力。

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