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Physics-Guided Recurrent Graph Networks for Predicting Flow and Temperature in River Networks

26 September 2020
X. Jia
Jacob Aaron Zwart
J. Sadler
A. Appling
S. Oliver
S. Markstrom
J. Willard
Shaoming Xu
M. Steinbach
J. Read
Vipin Kumar
    AI4CE
ArXiv (abs)PDFHTML
Abstract

This paper proposes a physics-guided machine learning approach that combines advanced machine learning models and physics-based models to improve the prediction of water flow and temperature in river networks. We first build a recurrent graph network model to capture the interactions among multiple segments in the river network. Then we present a pre-training technique which transfers knowledge from physics-based models to initialize the machine learning model and learn the physics of streamflow and thermodynamics. We also propose a new loss function that balances the performance over different river segments. We demonstrate the effectiveness of the proposed method in predicting temperature and streamflow in a subset of the Delaware River Basin. In particular, we show that the proposed method brings a 33\%/14\% improvement over the state-of-the-art physics-based model and 24\%/14\% over traditional machine learning models (e.g., Long-Short Term Memory Neural Network) in temperature/streamflow prediction using very sparse (0.1\%) observation data for training. The proposed method has also been shown to produce better performance when generalized to different seasons or river segments with different streamflow ranges.

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