Introduction
Reservoirs are needed for many fundamental tasks like
agriculture, drinking water supply, flood protection, and
energy production. For each of the listed demands, sustainable
management of the reservoir is of great importance
in designing the storage volume of water. However,
sedimentation threatens this storage volume worldwide
(Schleiss et al., 2016). In addition, a reduced retention
volume due to sedimentation might also increase the danger
potential of floods (Reisenbüchler et al., 2019).
Numerical models are widely accepted for designing new
reservoirs and dams or to develop management strategies
at existing dams to counteract sedimentation (Annandale
et al., 2016). Such models can accurately represent reality
and give reliable predictions. However, accurate and
complex (e.g. two- or three-dimensional) models require
great computational efforts. Furthermore, achieving an
optimal design or evaluating different management strategies
requires multiple long-term simulations for different
scenarios. In that case, simplified 1D models were
still applied. To provide an alternative, our work presents
the application of a data-driven method for predicting bed
level change along a river section including a hydropower
plant.
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Introduction
Reservoirs are needed for many fundamental tasks like
agriculture, drinking water supply, flood protection, and
energy production. For each of the listed demands, sustainable
management of the reservoir is of great importance
in designing the storage volume of water. However,
sedimentation threatens this storage volume worldwide
(Schleiss et al., 2016). In addition, a reduced retention
volume due to sedimentation might also increase the danger
potential of floods (Reisenbüc...
»