Publications

Lu, Lei; Luo, Ge-Ping; Wang, Ji-Yan (2014). Development of an ATI-NDVI method for estimation of soil moisture from MODIS data. INTERNATIONAL JOURNAL OF REMOTE SENSING, 35(10), 3797-3815.

Abstract
Estimation of soil moisture is essential for research of climatology, hydrology, and ecology. The commonly used remotely sensed approach is LST-NDVI (land-surface temperature-normalized difference vegetation index). In this study, the apparent thermal inertia (ATI) is used instead of surface temperature to develop an ATI-NDVI space for estimation of soil moisture. Comparison with ground-based measurements shows a root mean square error (RMSE) of 0.0378 m(3) m(-3) between retrieved and measured soil moistures. Validation with time series in situ data indicates the RMSE as 0.0162, 0.0285, 0.0368, and 0.0093 m(3) m(-3) for forest, shrub, cropland, and grassland, respectively, which is comparable to or even better than the results of previous studies. The proposed method in this study is a remote-sensing approach without elaborate ancillary data except for the percentage of sand in the soil, and it is practical and convenient to be applied to regions with surfaces from bare soil to full vegetation and the entire range of surface moisture contents from wet to dry.

DOI:
10.1080/01431161.2014.919677

ISSN:
0143-1161; 1366-5901