Abstract

Abstract. Rainfall–runoff modelling is one of the key challenges in the field of hydrology. Various approaches exist, ranging from physically based over conceptual to fully data-driven models. In this paper, we propose a novel data-driven approach, using the Long Short-Term Memory (LSTM) network, a special type of recurrent neural network. The advantage of the LSTM is its ability to learn long-term dependencies between the provided input and output of the network, which are essential for modelling storage effects in e.g. catchments with snow influence. We use 241 catchments of the freely available CAMELS data set to test our approach and also compare the results to the well-known Sacramento Soil Moisture Accounting Model (SAC-SMA) coupled with the Snow-17 snow routine. We also show the potential of the LSTM as a regional hydrological model in which one model predicts the discharge for a variety of catchments. In our last experiment, we show the possibility to transfer process understanding, learned at regional scale, to individual catchments and thereby increasing model performance when compared to a LSTM trained only on the data of single catchments. Using this approach, we were able to achieve better model performance as the SAC-SMA + Snow-17, which underlines the potential of the LSTM for hydrological modelling applications.

Keywords

Surface runoffSnowComputer scienceHydrology (agriculture)Hydrological modellingArtificial neural networkScale (ratio)Key (lock)Term (time)Field (mathematics)Process (computing)Environmental scienceArtificial intelligenceMeteorologyClimatologyCartographyGeologyEcology

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Publication Info

Year
2018
Type
article
Volume
22
Issue
11
Pages
6005-6022
Citations
1528
Access
Closed

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1528
OpenAlex
53
Influential
1264
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Cite This

Frederik Kratzert, Daniel Klotz, Claire Brenner et al. (2018). Rainfall–runoff modelling using Long Short-Term Memory (LSTM) networks. Hydrology and earth system sciences , 22 (11) , 6005-6022. https://doi.org/10.5194/hess-22-6005-2018

Identifiers

DOI
10.5194/hess-22-6005-2018

Data Quality

Data completeness: 81%