Applicability of remote sensing evapotranspiration products in reducing uncertainty and equifinality in hydrological model calibration of Oued El Abid watershed
Abstract
Data di Pubblicazione:
2023
Abstract:
Typically, hydrological models are calibrated using observed streamflow at the outlet of the
watershed. This approach may fail to mimic landscape characteristics, which significantly impact
runoff generation because the streamflow incorporates contributions from several hydrological
components. However, remotely sensed evapotranspiration (AET) products are commonly used as
additional data with streamflow to better constrain model parameters. Several researchers
demonstrated the efficacy of AET products in reducing the degree of equifinality and predictive
uncertainty, resulting in a significant enhancement in hydrological modelling. Due to the variety of
publicly available AET datasets, which vary in their methods, parameterization, and spatiotemporal
resolution, selecting an appropriate AET for hydrological modelling is of great importance. The
purpose of this study is to investigate the difference in simulated hydrologic responses resulting
from the inclusion of different remotely sensed AET products in a single and multi-objective
calibration with observed streamflow data. The GLEAM_3.6a, GLEAM_3.6b, MOD16A2, GLDAS,
PML_V2, TerraClimate, FLDAS, and SSEBop datasets were downloaded and incorporated into the
calibration of the SWAT hydrological model. The findings indicate that the incorporation of
remotely sensed AET data in multi-objective calibration tends to improve model performance and
decrease predictive uncertainty, as well as significantly improves parameter identification.
Furthermore, AET single-variable calibration results show that the model would have performed
well in simulating streamflow even without streamflow data. Moreover, each dataset included in
this investigation responded differently. GLEAM_3.6b and GLEAM_3.6a performed the best,
followed by FLDAS and PML_V2, while MOD16A2 was the least performing dataset. Thus, this
research supports the use of remotely sensed AET in the calibration of hydrological models as a
best practice.
Tipologia CRIS:
04.02 Abstract in Atti di convegno
Keywords:
Hydrological models; Remote sensing; Hydrological models; Evapotranspiration
Elenco autori:
Scozzari, Andrea
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