Toward Routing River Water in Land Surface Models with Recurrent Neural Networks
Mauricio Lima, Katherine Deck, Oliver R. A. Dunbar, Tapio Schneider

TL;DR
This paper demonstrates that recurrent neural networks can effectively predict river streamflow in land surface models, outperforming traditional physics-based models across global basins and time periods.
Contribution
It introduces a novel RNN-based river routing model trained on global data, showing improved accuracy over physics-based models for streamflow prediction.
Findings
RNNs generalize well across different basins and years.
The LSM-RNN outperforms physics-based models in median NSE scores.
The model demonstrates effective global streamflow prediction.
Abstract
Machine learning is playing an increasing role in hydrology, supplementing or replacing physics-based models. One notable example is the use of recurrent neural networks (RNNs) for forecasting streamflow given observed precipitation and geographic characteristics. Training of such a model over the continental United States (CONUS) has demonstrated that a single set of model parameters can be used across independent catchments, and that RNNs can outperform physics-based models. In this work, we take a next step and study the performance of RNNs for river routing in land surface models (LSMs). Instead of observed precipitation, the LSM-RNN uses instantaneous runoff calculated from physics-based models as an input. We train the model with data from river basins spanning the globe and test it using historical streamflow measurements. The model demonstrates skill at generalization across…
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Taxonomy
TopicsMusic and Audio Processing
MethodsSparse Evolutionary Training
