Streamflow Forecast Using Two Distinct Approaches: an Artificial Neural
Network Model and a Physically Based Model. A Case Study in Southern
Portugal.
Abstract
The Maranhão reservoir (~180 hm3) is mainly used for
energy production and irrigation of 15360 ha in the Sorraia Valley, in
southern Portugal. The necessity to save water in the Autumn/Winter
rainfall season to be used for irrigation of Spring/Summer crops creates
a sensible management situation regarding the control of floods and
their impact on downstream areas in years with extreme precipitation
events. Streamflow forecast is then essential to improve the reservoir’s
management regarding water storage. This study addresses the estimation
of the daily streamflow in the watershed draining to the Maranhão
reservoir (2311 km3) following two different approaches. Firstly, the
physically based hydrological model, MOHID-Land, was
calibrated/validated for estimating daily streamflow in the study area
following physically processes and using a finite volume approach, which
require considerable amount of input data. Secondly, a data-driven model
composed of an artificial neural network (ANN) was used with the same
purpose. This ANN model was selected from a previous work where
different models (multi-layer perceptron, convolutional neural network,
and long short-term memory model) were tested with different scenarios
for the combination of input variables. Both models were optimized
considering the observed streamflow in the Ponte Vila Formosa station,
which drains 30% of the Maranhão watershed, being after applied to the
entire domain. The results for the Maranhão watershed were then
validated considering a mass balance considering the reservoir’s
outflow, level, and water consumed values. The ANN model had a better
performance predicting streamflow than the physically based model, and
with less calibration effort. However, the physically based model can
give much more information about the entire system. Lastly, it is
expected that a physically based model can correctly estimate the
streamflow for extreme events not considered in the calibration and
validation datasets, but for the ANN models this question should be
carefully addressed since data-driven models are event-based.