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Daniel Klotz
Daniel Klotz
Johannes Kepler University Linz, Institute for Machine Learning
Verified email at ml.jku.at
Title
Cited by
Cited by
Year
Rainfall–runoff modelling using long short-term memory (LSTM) networks
F Kratzert, D Klotz, C Brenner, K Schulz, M Herrnegger
Hydrology and Earth System Sciences 22 (11), 6005-6022, 2018
10202018
Towards learning universal, regional, and local hydrological behaviors via machine learning applied to large-sample datasets
F Kratzert, D Klotz, G Shalev, G Klambauer, S Hochreiter, G Nearing
Hydrology and Earth System Sciences 23 (12), 5089-5110, 2019
4312019
Toward improved predictions in ungauged basins: Exploiting the power of machine learning
F Kratzert, D Klotz, M Herrnegger, AK Sampson, S Hochreiter, GS Nearing
Water Resources Research 55 (12), 11344-11354, 2019
4062019
What role does hydrological science play in the age of machine learning?
GS Nearing, F Kratzert, AK Sampson, CS Pelissier, D Klotz, JM Frame, ...
Water Resources Research 57 (3), e2020WR028091, 2021
3262021
Rainfall–runoff prediction at multiple timescales with a single Long Short-Term Memory network
M Gauch, F Kratzert, D Klotz, G Nearing, J Lin, S Hochreiter
Hydrology and Earth System Sciences 25 (4), 2045-2062, 2021
1422021
NeuralHydrology–interpreting LSTMs in hydrology
F Kratzert, M Herrnegger, D Klotz, S Hochreiter, G Klambauer
Explainable AI: Interpreting, explaining and visualizing deep learning, 347-362, 2019
1072019
Deep learning rainfall-runoff predictions of extreme events
J Frame, F Kratzert, D Klotz, M Gauch, G Shelev, O Gilon, LM Qualls, ...
Copernicus GmbH, 2021
1062021
Uncertainty estimation with deep learning for rainfall–runoff modelling
D Klotz, F Kratzert, M Gauch, A Keefe Sampson, J Brandstetter, ...
Hydrology and Earth System Sciences Discussions 2021, 1-32, 2021
912021
Benchmarking a catchment-aware long short-term memory network (LSTM) for large-scale hydrological modeling
F Kratzert, D Klotz, G Shalev, G Klambauer, S Hochreiter, G Nearing
Hydrol. Earth Syst. Sci. Discuss 2019, 1-32, 2019
772019
Hydrological concept formation inside long short-term memory (LSTM) networks
T Lees, S Reece, F Kratzert, D Klotz, M Gauch, J De Bruijn, R Kumar Sahu, ...
Hydrology and Earth System Sciences Discussions 2021, 1-37, 2021
742021
Mc-lstm: Mass-conserving lstm
PJ Hoedt, F Kratzert, D Klotz, C Halmich, M Holzleitner, GS Nearing, ...
International conference on machine learning, 4275-4286, 2021
662021
A note on leveraging synergy in multiple meteorological data sets with deep learning for rainfall–runoff modeling
F Kratzert, D Klotz, S Hochreiter, GS Nearing
Hydrology and Earth System Sciences 25 (5), 2685-2703, 2021
562021
Caravan-A global community dataset for large-sample hydrology
F Kratzert, G Nearing, N Addor, T Erickson, M Gauch, O Gilon, ...
Scientific Data 10 (1), 61, 2023
432023
The great lakes runoff intercomparison project phase 4: the great lakes (GRIP-GL)
J Mai, H Shen, BA Tolson, É Gaborit, R Arsenault, JR Craig, V Fortin, ...
Hydrology and Earth System Sciences 26 (13), 3537-3572, 2022
422022
NeuralHydrology---A Python library for Deep Learning research in hydrology
F Kratzert, M Gauch, G Nearing, D Klotz
Journal of Open Source Software 7 (71), 4050, 2022
382022
Symbolic regression for the estimation of transfer functions of hydrological models
D Klotz, M Herrnegger, K Schulz
Water Resources Research 53 (11), 9402-9423, 2017
342017
Data assimilation and autoregression for using near-real-time streamflow observations in long short-term memory networks
GS Nearing, D Klotz, AK Sampson, F Kratzert, M Gauch, JM Frame, ...
Hydrology and earth system sciences discussions 2021, 1-25, 2021
292021
Function space optimization: A symbolic regression method for estimating parameter transfer functions for hydrological models
M Feigl, M Herrnegger, D Klotz, K Schulz
Water resources research 56 (10), e2020WR027385, 2020
222020
A note on leveraging synergy in multiple meteorological datasets with deep learning for rainfall-runoff modeling
F Kratzert, D Klotz, S Hochreiter, GS Nearing
EarthArXiv, 2020
172020
In defense of metrics: Metrics sufficiently encode typical human preferences regarding hydrological model performance
M Gauch, F Kratzert, O Gilon, H Gupta, J Mai, G Nearing, B Tolson, ...
Water Resources Research 59 (6), e2022WR033918, 2023
122023
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