研究目的
To present a statistical framework for downscaling coarse-scale SMOS soil moisture observations to a finer resolution and removing the bias between model predictions and observations.
研究成果
The proposed statistical framework effectively downscales coarse-scale SMOS soil moisture observations to a finer resolution and removes the bias between model predictions and observations. The method is robust and can be applied operationally, provided that copulas are fitted to a sufficiently large dataset to cover all possible soil moisture states.
研究不足
The framework requires a sufficiently large calibration dataset to cover all possible soil moisture states. The minimal number of data points needed to fit the copulas was set to 100, which may not be optimal for all pixels. The approach assumes the spatial pattern of soil moisture values modeled by VIC can be trusted.