ALVES, Y. A.; http://lattes.cnpq.br/4602866555160770; ALVES, Yago de Andrade.
Abstract:
Evapotranspiration (ET) is one of the most underestimated components of the hydrological
cycle, often being attributed as a residue of the water and energy balance components. However,
ET measurements performed at the land surface are expensive and, therefore, difficult to
replicate. On larger scales, its measurement is complex due to the need to represent
hydrometeorological processes and the heterogeneity of the land surface. Remote Sensing (RS)
is the most efficient way of monitoring the land surface and obtaining regional estimates of
actual ET (ETa). Surface energy balance modeling is the most common procedure for
estimating ETa by RS. The Simplified Surface Energy Balance Index (SSEBI)
can provide a
largescale
ETa, at the cost of uncertainties associated with its simplifications of meteorological
parameters. This study aims to improve the ETa through changes in the SSEBI
algorithm,
which include automatic selection of anchor pixels and incorporating soil moisture in
calculating the evaporative fraction (EF). In addition, it was considered that the EF could be
constant within a weekly period in order to remove outliers and missing data. SSEBI
was
implemented on the Google Earth Engine (GEE) platform. In this platform are available the
data MODIS, ERA5Land
and GLDAS for model application. The ETa estimates of the
modifications imposed on the SSEBI
were evaluated using data from the Eddy covariance
system at the Estação Ecológica do Seridó (ESEC) for the year 2014. The spatial behavior of
the ETa by the SSEBI
was compared with the MOD16 product in three locations in the
Brazilian semiarid
region: Petrolina PE,
Barreiras BA
and Bom Jesus PI.
The results
revealed that the modifications in the SSEBI
produced statistical metrics of performance with
RMSE of 0.74mm/day, R² of 0.75 and NSE of 0.74, with the data observed in the ESEC. In the
spatial analysis of the SSEBI,
the annual accumulated ETa data ranged from 102 to 1448
mm/year, while in the MOD16 product, this variation was from 86 to 1873 mm/year. The results
revealed that the MOD16 showed a spatial pattern more consistent with the land cover in the
three regions when compared to the SSEBI.
The modifications imposed to the SSEBI
algorithm are useful since reliable ETa estimates are necessary for managing water resources,
especially in semiarid
regions.