On strictly enforced mass conservation constraints for modeling the
rainfall-runoff process
Abstract
It has been proposed that conservation laws might not be beneficial for
accurate hydrological modeling due to errors in input (precipitation)
and target (streamflow) data (particularly at the event time scale), and
this might explain why deep learning models (which are not based on
enforcing closure) can out-perform catchment-scale conceptual and
process-based models at predicting streamflow. We test this hypothesis
at the event and multi-year time scale using physics-informed (mass
conserving) machine learning and find that: (1) enforcing closure in the
rainfall-runoff mass balance does appear to harm the overall skill of
hydrological models, (2) deep learning models learn to account for
spatiotemporally variable biases in data (3) however this “closure”
effect accounts for only a small fraction of the difference in
predictive skill between deep learning and conceptual models.