Publications

Gao, SG; Zhu, ZL; Weng, HT; Zhang, JS (2017). Upscaling of sparse in situ soil moisture observations by integrating auxiliary information from remote sensing. INTERNATIONAL JOURNAL OF REMOTE SENSING, 38(17), 4782-4803.

Abstract
Upscaling of sparse in situ soil moisture (SM) observations is essential for the validation of current and upcoming space-borne SM retrievals, and the successful application of SM observations in hydrological models or data assimilation. In this study, we construct a novel method based on Bayesian data fusion to up scale in situ SM observations to the coarse scale of microwave remote sensing. In the framework of Bayesian theory, the valuable auxiliary information obtained in Moderate Resolution Imaging Spectroradiometer (MODIS) apparent thermal inertia (ATI) is integrated into the upscaling process. The method is validated using SM wireless sensor network data in the Tibetan plateau, which covers an area of approximately 30 x 30 km(2) with 20 in situ stations. Results confirm that the upscaled SM using the method with randomly selected three stations from the 20 stations is extremely close to the mean of the 20 SMs. The mean root mean square error (RMSE) between the upscaled SM and the mean of the 20 in situ SMs was 0.02 m(3) m(-3), and the max RMSE was less than 0.05 m(3) m(-3). Furthermore, the sensitivity of the upscaling accuracy to the number of in situ observations is discussed. When the number of in situ observations is greater than nine, the increasing accuracy of the Bayesian method is limited by the uncertainty in the ATI of the remote sensing.

DOI:
10.1080/01431161.2017.1320444

ISSN:
0143-1161