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Leveraging historic streamflow and weather data with deep learning for enhanced streamflow predictions
Schutte, Christiaan E.; Van der Laan, Michael; Van der Merwe, Barend Jacobus
Streamflow information is crucial for effectively managing water resources. The declining number of active gauging stations in many rivers is
a global concern, necessitating the need for reliable streamflow estimates. Deep learning techniques offer potential solutions, but their application
in southern Africa remains largely underexplored. To fill this gap, this study evaluated the predictive performance of gated recurrent
unit (GRU) and long short-term memory (LSTM) networks using two headwater catchments of the Steelpoort River, South Africa, as case
studies. The model inputs included rainfall, maximum, and minimum temperature, as well as past streamflow, which was utilized in an autoregressive
sense. The inclusion of streamflow in this way allowed for the incorporation of simulated streamflow values into the look-back
window for predicting the streamflow of the testing set. Two modifications were required to the GRU and LSTM architectures to ensure physically
consistent predictions, including a change in the activation function of the GRU/LSTM cells in the final hidden layer, and a non-negative
constraint that was used in the dense layer. Models trained using commercial weather station data produced reliable streamflow estimates,
while moderately accurate predictions were obtained using freely available gridded weather data.
Description:
DATA AVAILABILITY STATEMENT : All relevant data are available from an online repository or repositories:https://data.waterresearchobservatory.org/metadataform/
deep-learning-for-streamflow-prediction-project-data.