Publication | Open Access
Short-term Hourly Streamflow Prediction with Graph Convolutional GRU Networks
53
Citations
16
References
2021
Year
Hydrological PredictionEngineeringMachine LearningFlood ControlStreaming AlgorithmUpstream River NetworkData ScienceHydrological ModelingStream ProcessingGraph Convolutional GrusGeographyFlood ForecastingSensor LocationComputer ScienceForecastingDeep LearningHydrologyFlash FloodHydrological DisasterWater ResourcesGraph Neural NetworkFlood Risk ManagementFlooded Area
The frequency and impact of floods are expected to increase due to climate change. It is crucial to predict streamflow, consequently flooding, in order to prepare and mitigate its consequences in terms of property damage and fatalities. This paper presents a Graph Convolutional GRUs based model to predict the next 36 hours of streamflow for a sensor location using the upstream river network. As shown in experiment results, the model presented in this study provides better performance than the persistence baseline and a Convolutional Bidirectional GRU network for the selected study area in short-term streamflow prediction.
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