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What Role Does Hydrological Science Play in the Age of Machine Learning?

Grey Nearing, Frederik Kratzert, Alden Keefe Sampson, Craig Pelissier, Daniel Klotz, Jonathan Frame, Cristina Prieto, Hoshin V. Gupta

2020161 citationsDOIOpen Access PDF

Abstract

We suggest that there is a potential danger to the hydrological sciences community in not recognizing how transformative machine learning will be for the future of hydrological modeling. Given the recent success of machine learning applied to modeling problems, it is unclear what the role of hydrological theory might be in the future. We suggest that a central challenge in hydrology right now should be to clearly delineate where and when hydrological theory adds value to prediction systems. Lessons learned from the history of hydrological modeling motivate several clear next steps toward integrating machine learning into hydrological modeling workflows.

Topics & Concepts

Transformative learningWorkflowComputer scienceHydrological modellingMachine learningArtificial intelligenceData scienceHydrology (agriculture)GeologySociologyClimatologyGeotechnical engineeringPedagogyDatabaseHydrology and Watershed Management StudiesHydrological Forecasting Using AIComputational Physics and Python Applications