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 | 598* | 2019 |
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 | 473 | 2019 |
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 | 400 | 2021 |
The plumbing of land surface models: benchmarking model performance MJ Best, G Abramowitz, HR Johnson, AJ Pitman, G Balsamo, A Boone, ... Journal of Hydrometeorology 16 (3), 1425-1442, 2015 | 244 | 2015 |
A ranking of hydrological signatures based on their predictability in space N Addor, G Nearing, C Prieto, AJ Newman, N Le Vine, MP Clark Water Resources Research 54 (11), 8792-8812, 2018 | 236 | 2018 |
Evaluating the utility of satellite soil moisture retrievals over irrigated areas and the ability of land data assimilation methods to correct for unmodeled processes SV Kumar, CD Peters-Lidard, JA Santanello, RH Reichle, CS Draper, ... Hydrology and Earth System Sciences 19 (11), 4463-4478, 2015 | 187 | 2015 |
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 | 176 | 2021 |
A philosophical basis for hydrological uncertainty GS Nearing, Y Tian, HV Gupta, MP Clark, KW Harrison, SV Weijs Hydrological Sciences Journal 61 (9), 1666-1678, 2016 | 158 | 2016 |
Partitioning evapotranspiration in semiarid grassland and shrubland ecosystems using time series of soil surface temperature MS Moran, RL Scott, TO Keefer, WE Emmerich, M Hernandez, ... agricultural and forest meteorology 149 (1), 59-72, 2009 | 151 | 2009 |
Deep learning rainfall–runoff predictions of extreme events JM Frame, F Kratzert, D Klotz, M Gauch, G Shalev, O Gilon, LM Qualls, ... Hydrology and Earth System Sciences 26 (13), 3377-3392, 2022 | 148 | 2022 |
Debates-the future of hydrological sciences: A (common) path forward? Using models and data to learn: A systems theoretic perspective on the future of hydrological science. HV Gupta, GS Nearing Water Resources Research 50 (6), 2014 | 123 | 2014 |
Assimilating remote sensing observations of leaf area index and soil moisture for wheat yield estimates: An observing system simulation experiment GS Nearing, WT Crow, KR Thorp, MS Moran, RH Reichle, HV Gupta Water Resources Research 48 (5), 2012 | 123 | 2012 |
Flood forecasting with machine learning models in an operational framework S Nevo, E Morin, A Gerzi Rosenthal, A Metzger, C Barshai, D Weitzner, ... Hydrology and Earth System Sciences 26 (15), 4013-4032, 2022 | 121 | 2022 |
The quantity and quality of information in hydrologic models GS Nearing, HV Gupta Water Resources Research 51 (1), 524-538, 2015 | 118 | 2015 |
Benchmarking of a physically based hydrologic model AJ Newman, N Mizukami, MP Clark, AW Wood, B Nijssen, G Nearing Journal of Hydrometeorology 18 (8), 2215-2225, 2017 | 117 | 2017 |
Uncertainty estimation with deep learning for rainfall–runoff modeling D Klotz, F Kratzert, M Gauch, A Keefe Sampson, J Brandstetter, ... Hydrology and Earth System Sciences 26 (6), 1673-1693, 2022 | 113 | 2022 |
Post‐processing the national water model with long short‐term memory networks for streamflow predictions and model diagnostics JM Frame, F Kratzert, A Raney, M Rahman, FR Salas, GS Nearing JAWRA Journal of the American Water Resources Association 57 (6), 885-905, 2021 | 106 | 2021 |
Benchmarking NLDAS-2 soil moisture and evapotranspiration to separate uncertainty contributions GS Nearing, DM Mocko, CD Peters-Lidard, SV Kumar, Y Xia Journal of hydrometeorology 17 (3), 745-759, 2016 | 105 | 2016 |
Hybrid forecasting: blending climate predictions with AI models LJ Slater, L Arnal, MA Boucher, AYY Chang, S Moulds, C Murphy, ... Hydrology and earth system sciences 27 (9), 1865-1889, 2023 | 92* | 2023 |
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 | 84 | 2021 |