TY - JOUR
T1 - Long short-term memory networks enhance rainfall-runoff modelling at the national scale of Denmark
AU - Koch, Julian
AU - Schneider, Raphael
N1 - Funding Information:
The authors acknowledge the developer team behind the NeuralHydrology codebase for making LSTM modelling tools so accessible. Furthermore, GEUS colleagues H.J. Henriksen and S. Stisen are thanked for providing valuable feedback to this manuscript. Two anonymous reviewers are thanked for providing valuable comments to this manuscript.
Publisher Copyright:
© 2022, GEUS - Geological Survey of Denmark and Greenland. All rights reserved.
PY - 2022/1/13
Y1 - 2022/1/13
N2 - This study explores the application of long short-term memory (LSTM) networks to simulate runoff at the national scale of Denmark using data from 301 catchments. This is the first LSTM application on Danish data. The results were benchmarked against the Danish national water resources model (DK-model), a physically based hydrological model. The median Kling-Gupta Efficiency (KGE), a common metric to assess performance of runoff predictions (optimum of 1), increased from 0.7 (DK-model) to 0.8 (LSTM) when trained against all catchments. Overall, the LSTM outperformed the DK-model in 80% of catchments. Despite the compelling KGE evaluation, the water balance closure was modelled less accurately by the LSTM. The applicability of LSTM networks for modelling ungauged catchments was assessed via a spatial split-sample experiment. A 20% spatial hold-out showed poorer performance of the LSTM with respect to the DK model. However, after pre-training, that is, weight initialisation obtained from training against simulated data from the DK-model, the performance of the LSTM was effectively improved. This formed a convincing argument supporting the knowledge-guided machine learning (ML) paradigm to integrate physically based models and ML to train robust models that generalise well.
AB - This study explores the application of long short-term memory (LSTM) networks to simulate runoff at the national scale of Denmark using data from 301 catchments. This is the first LSTM application on Danish data. The results were benchmarked against the Danish national water resources model (DK-model), a physically based hydrological model. The median Kling-Gupta Efficiency (KGE), a common metric to assess performance of runoff predictions (optimum of 1), increased from 0.7 (DK-model) to 0.8 (LSTM) when trained against all catchments. Overall, the LSTM outperformed the DK-model in 80% of catchments. Despite the compelling KGE evaluation, the water balance closure was modelled less accurately by the LSTM. The applicability of LSTM networks for modelling ungauged catchments was assessed via a spatial split-sample experiment. A 20% spatial hold-out showed poorer performance of the LSTM with respect to the DK model. However, after pre-training, that is, weight initialisation obtained from training against simulated data from the DK-model, the performance of the LSTM was effectively improved. This formed a convincing argument supporting the knowledge-guided machine learning (ML) paradigm to integrate physically based models and ML to train robust models that generalise well.
KW - Deep learning
KW - Knowledge-guided machine learning
KW - Long-short term memory networks
KW - Pre-training-finetuning
KW - Rainfall-runoff modelling
KW - DK-model
UR - http://www.scopus.com/inward/record.url?scp=85124187415&partnerID=8YFLogxK
U2 - 10.34194/geusb.v49.8292
DO - 10.34194/geusb.v49.8292
M3 - Article
AN - SCOPUS:85124187415
SN - 1604-8156
VL - 49
JO - Geological Survey of Denmark and Greenland Bulletin
JF - Geological Survey of Denmark and Greenland Bulletin
M1 - 8292
ER -