Preliminary assessment of an integrated SMOS and MODIS application for global agricultural drought monitoring
N. S\'anchez, A. Gonz\'alez-Zamora, J. Mart\'inez-Fern\'andez, M., Piles, M. Pablos, Brian Wardlow, Tsegaye Tadesse, Mark Svoboda

TL;DR
This paper presents a global agricultural drought monitoring index, SMADI, integrating satellite data from SMOS and MODIS, validated against existing indices and tested across different regions.
Contribution
The study introduces SMADI, a novel integrated drought index combining soil moisture, land surface temperature, and vegetation data for global application.
Findings
SMADI shows good correlation with established drought indices.
Effective in identifying regional drought patterns.
Applicable for global agricultural drought monitoring.
Abstract
An application of the Soil Moisture Agricultural Drought Index (SMADI) at the global scale is presented. The index integrates surface soil moisture from the SMOS mission with land surface temperature (LST) and Normalized Difference Vegetation Index (NDVI) from MODIS and allows for global drought monitoring at medium spatial scales (0.05 deg).. Biweekly maps of SMADI were obtained from year 2010 to 2015 over all agricultural areas on Earth. The SMADI time-series were compared with state-of-the-art drought indices over the Iberian Peninsula. Results show a good agreement between SMADI and the Crop Moisture Index (CMI) retrieved at five weather stations (with correlation coefficient, R from -0.64 to -0.79) and the Soil Water Deficit Index (SWDI) at the Soil Moisture Measurement Stations Network of the University of Salamanca (REMEDHUS) (R=-0.83). Some preliminary tests were also made over…
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