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Maxime Taillardat
Maxime Taillardat
CNRM UMR 3589, Météo-France
Adresse e-mail validée de meteo.fr - Page d'accueil
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Calibrated ensemble forecasts using quantile regression forests and ensemble model output statistics
M Taillardat, O Mestre, M Zamo, P Naveau
Monthly Weather Review 144 (6), 2375-2393, 2016
2242016
Statistical postprocessing for weather forecasts–review, challenges and avenues in a big data world
S Vannitsem, JB Bremnes, J Demaeyer, GR Evans, J Flowerdew, S Hemri, ...
Bulletin of the American Meteorological Society, 1-44, 2020
1922020
Forest-based and semiparametric methods for the postprocessing of rainfall ensemble forecasting
M Taillardat, AL Fougères, P Naveau, O Mestre
Weather and Forecasting 34 (3), 617-634, 2019
64*2019
From research to applications–examples of operational ensemble post-processing in France using machine learning
M Taillardat, O Mestre
Nonlinear Processes in Geophysics 27 (2), 329-347, 2020
312020
Evaluating probabilistic forecasts of extremes using continuous ranked probability score distributions
M Taillardat, AL Fougères, P Naveau, R De Fondeville
International Journal of Forecasting 39 (3), 1448-1459, 2023
25*2023
The EUPPBench postprocessing benchmark dataset v1. 0
J Demaeyer, J Bhend, S Lerch, C Primo, B Van Schaeybroeck, A Atencia, ...
Earth System Science Data Discussions 2023, 1-25, 2023
172023
Calibrated ensemble forecasts of the height of new snow using quantile regression forests and ensemble model output statistics
G Evin, M Lafaysse, M Taillardat, M Zamo
Nonlinear Processes in Geophysics 28 (3), 467-480, 2021
112021
Strategies for hydrologic ensemble generation and calibration: On the merits of using model-based predictors
AL Tiberi-Wadier, N Goutal, S Ricci, P Sergent, M Taillardat, F Bouttier, ...
Journal of Hydrology 599, 126233, 2021
102021
Non-parametric Methods of post-processing for Ensemble Forecasting
M Taillardat
Université Paris Saclay (COmUE), 2017
8*2017
Skewed and mixture of Gaussian distributions for ensemble postprocessing
M Taillardat
Atmosphere 12 (8), 966, 2021
62021
Distributional regression and its evaluation with the CRPS: Bounds and convergence of the minimax risk
R Pic, C Dombry, P Naveau, M Taillardat
International Journal of Forecasting 39 (4), 1564-1572, 2023
3*2023
Mathematical Properties of Continuous Ranked Probability Score Forecasting
C Dombry, R Pic, P Naveau, M Taillardat
EGU General Assembly Conference Abstracts, EGU-11230, 2023
12023
Vers une approche ensembliste de la prévision des crues
AL Tiberi-Wadier, M Taillardat, N Goutal, S Ricci, P Sergent, F Bouttier, ...
De la prévision des crues à la gestion de crise, 2018
12018
The EUPPBench postprocessing benchmark dataset
J Demaeyer, J Bhend, S Lerch, C Primo, B Van Schaeybroeck, A Atencia, ...
EMS2023, 2023
2023
U-Net based Methods for the Postprocessing of Precipitation Ensemble Forecasting
R Pic, C Dombry, M Taillardat, P Naveau
EGU General Assembly Conference Abstracts, EGU-2592, 2023
2023
The EUPPBench postprocessing benchmark
J Bhend, J Demaeyer, S Lerch, C Primo, B Van Schaeybroeck, A Atencia, ...
EGU General Assembly Conference Abstracts, EGU-9328, 2023
2023
Preface: Advances in post-processing and blending of deterministic and ensemble forecasts
S Hemri, S Lerch, M Taillardat, S Vannitsem, DS Wilks
Nonlinear Processes in Geophysics 27 (4), 519-521, 2020
2020
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