Litcius/Paper detail

A note on leveraging synergy in multiple meteorological data sets with deep learning for rainfall–runoff modeling

Frederik Kratzert, Daniel Klotz, Sepp Hochreiter, Grey Nearing

2021Hydrology and earth system sciences134 citationsDOIOpen Access PDF

Abstract

Abstract. A deep learning rainfall–runoff model can take multiple meteorological forcing products as input and learn to combine them in spatially and temporally dynamic ways. This is demonstrated with Long Short-Term Memory networks (LSTMs) trained over basins in the continental US, using the Catchment Attributes and Meteorological data set for Large Sample Studies (CAMELS). Using meteorological input from different data products (North American Land Data Assimilation System, NLDAS, Maurer, and Daymet) in a single LSTM significantly improved simulation accuracy relative to using only individual meteorological products. A sensitivity analysis showed that the LSTM combines precipitation products in different ways, depending on location, and also in different ways for the simulation of different parts of the hydrograph.

Topics & Concepts

HydrographSurface runoffPrecipitationForcing (mathematics)Computer scienceData assimilationSensitivity (control systems)Environmental scienceMeteorologySample (material)Data setClimatologyArtificial intelligenceGeologyGeographyChemistryEngineeringElectronic engineeringBiologyEcologyChromatographyHydrology and Watershed Management StudiesHydrological Forecasting Using AIFlood Risk Assessment and Management