Estimating Root-zone Soil Moisture in the West Africa Sahel Using Remotely Sensed Rainfall and Vegetation

Estimating Root-zone Soil Moisture in the West Africa Sahel Using Remotely Sensed Rainfall and Vegetation

Auteur : Amy McNally

Date de publication : 2013

Éditeur : University of California, Santa Barbara

Nombre de pages : 140

Résumé du livre

By transforming both NDVI and rainfall into estimates of soil moisture I was able to easily compare these two datasets in a physically meaningful way. In Chapter II, I also show how the new NDVI derived soil moisture can be assimilated into a water balance model that calculates an index of crop water stress. Compared to the analogous rainfall derived estimates of soil moisture and crop stress the NDVI derived estimates were better correlated with millet yields. In Chapter III, I developed a metric for defining growing season drought events that negatively impact millet yields. This metric is based on the data and models used in the Chapters I and II. I then use this metric to evaluate the ability of a sophisticated land surface model to detect drought events. The analysis showed that this particular land surface model's soil moisture estimates do have the potential to benefit the food security and drought early warning communities.

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