Many investigations have advanced the understanding of important factors contributing in
reservoir sedimentation. However, predicting the accumulation of sediment and delta formation
in the reservoir is still a challenging problem due to several uncertainties in the modelling
process. In estimating reservoir sedimentation, the performance of modelling can significantly
be increased by improving the quality of sediment load boundary conditions and model
calibration. This study utilizes wavelet neural networks (WA-ANN) and an automatic model
calibration method to enhance the performance of the numerical model for estimating reservoir
sedimentation and tempo-spatial deposits in the Taberla reservoir located on the Indus River,
in northern Pakistan. The model performance was quantified using coefficients of
determination (R2) and Nash-Sutcliffe Efficiency (NSE). The results showed that an optimal
hydrodynamic calibration (of TELEMAC) using an automatic calibration technique, along with
more precise sediment load boundary conditions estimated by WA-ANN, enabled successive
morphodynamic model (SISYPHE) to more accurately anticipate the reservoir bed. The
calibrated model (for 1983-1984) with R2=0.97, NSE=0.97 also validated the bed levels (for
1985-1990) with R2=0.96 and NSE=0.95. The presented modelling concept could be used to
improve/design sediment management strategies for the existing and planned hydraulic
structures in other ungauged or poorly-gauged rivers.
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Many investigations have advanced the understanding of important factors contributing in
reservoir sedimentation. However, predicting the accumulation of sediment and delta formation
in the reservoir is still a challenging problem due to several uncertainties in the modelling
process. In estimating reservoir sedimentation, the performance of modelling can significantly
be increased by improving the quality of sediment load boundary conditions and model
calibration. This study utilizes wavel...
»