Analysis of Short-Term Drought Episodes Using Sentinel-3 SLSTR Data under a Semi-Arid Climate in Lower Eastern Kenya.
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Date
2023-06Author
Musyimi, Peter K.
Sahbeni, Ghada
Timár, Gábor
Weidinger, Tamas
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Show full item recordAbstract
This study uses Sentinel-3 SLSTR data to analyze short-term drought events between
2019 and 2021. It investigates the crucial role of vegetation cover, land surface temperature, and
water vapor amount associated with drought over Kenya’s lower eastern counties. Therefore, three
essential climate variables (ECVs) of interest were derived, namely Land Surface Temperature (LST),
Fractional Vegetation Cover (FVC), and Total Column Water Vapor (TCWV). These features were
analyzed for four counties between the wettest and driest episodes in 2019 and 2021. The study
showed that Makueni and Taita Taveta counties had the highest density of FVC values (60–80%)
in April 2019 and 2021. Machakos and Kitui counties had the lowest FVC estimates of 0% to 20%
in September for both periods and between 40% and 60% during wet seasons. As FVC is a crucial
land parameter for sequestering carbon and detecting soil moisture and vegetation density losses,
its variation is strongly related to drought magnitude. The land surface temperature has drastically
changed over time, with Kitui and Taita Taveta counties having the highest estimates above 20 ◦C in
2019. A significant spatial variation of TCWV was observed across different counties, with values
less than 26 mm in Machakos county during the dry season of 2019, while Kitui and Taita Taveta
counties had the highest estimates, greater than 36 mm during the wet season in 2021. Land surface
temperature variation is negatively proportional to vegetation density and soil moisture content, as
non-vegetated areas are expected to have lower moisture content. Overall, Sentinel-3 SLSTR products
provide an efficient and promising data source for short-term drought monitoring, especially in
cases where in situ measurement data are scarce. ECVs-produced maps will assist decision-makers
with a better understanding of short-term drought events as well as soil moisture loss episodes that
influence agriculture under arid and semi-arid climates. Furthermore, Sentinel-3 data can be used to
interpret hydrological, ecological, and environmental changes and their implications under different
environmental conditions.