Post-processing ECMWF precipitation and temperature ensemble reforecasts for operational hydrologic forecasting at various spatial scales

被引:138
作者
Verkade, J. S. [1 ,2 ,3 ]
Brown, J. D. [4 ]
Reggiani, P. [1 ,5 ]
Weerts, A. H. [1 ,6 ]
机构
[1] Deltares, NL-2600 MH Delft, Netherlands
[2] Minist Infrastruct & Environm, Water Management Ctr Netherlands, River Forecasting Serv, Lelystad, Netherlands
[3] Delft Univ Technol, Delft, Netherlands
[4] Hydrol Solut Ltd, Southampton, Hants, England
[5] Rhein Westfal TH Aachen, Aachen, Germany
[6] Wageningen Univ & Res Ctr, Hydrol & Quantitat Water Management Grp, NL-6700 AP Wageningen, Netherlands
关键词
Bias-correction; Post-processing; Ensemble forecasting; Uncertainty estimation; Verification; Rhine; BIAS-CORRECTION; NONPARAMETRIC POSTPROCESSOR; PROBABILISTIC FORECASTS; LOGISTIC-REGRESSION; UNCERTAINTY; PREDICTION; OUTPUT; SCORE;
D O I
10.1016/j.jhydrol.2013.07.039
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
The ECMWF temperature and precipitation ensemble reforecasts are evaluated for biases in the mean, spread and forecast probabilities, and how these biases propagate to streamflow ensemble forecasts. The forcing ensembles are subsequently post-processed to reduce bias and increase skill, and to investigate whether this leads to improved streamflow ensemble forecasts. Multiple post-processing techniques are used: quantile-to-quantile transform, linear regression with an assumption of bivariate normality and logistic regression. Both the raw and post-processed ensembles are run through a hydrologic model of the river Rhine to create streamflow ensembles. The results are compared using multiple verification metrics and skill scores: relative mean error, Brier skill score and its decompositions, mean continuous ranked probability skill score and its decomposition, and the ROC score. Verification of the streamflow ensembles is performed at multiple spatial scales: relatively small headwater basins, large tributaries and the Rhine outlet at Lobith. The streamflow ensembles are verified against simulated streamflow, in order to isolate the effects of biases in the forcing ensembles and any improvements therein. The results indicate that the forcing ensembles contain significant biases, and that these cascade to the streamflow ensembles. Some of the bias in the forcing ensembles is unconditional in nature; this was resolved by a simple quantile-to-quantile transform. Improvements in conditional bias and skill of the forcing ensembles vary with forecast lead time, amount, and spatial scale, but are generally moderate. The translation to streamflow forecast skill is further muted, and several explanations are considered, including limitations in the modelling of the space-time covariability of the forcing ensembles and the presence of storages. (C) 2013 Elsevier B.V. All rights reserved.
引用
收藏
页码:73 / 91
页数:19
相关论文
共 71 条
[31]   Verification of TIGGE Multimodel and ECMWF Reforecast-Calibrated Probabilistic Precipitation Forecasts over the Contiguous United States [J].
Hamill, Thomas M. .
MONTHLY WEATHER REVIEW, 2012, 140 (07) :2232-2252
[32]   Reforecasts - An important dataset for improving weather predictions [J].
Hamill, TM ;
Whitaker, JS ;
Mullen, SL .
BULLETIN OF THE AMERICAN METEOROLOGICAL SOCIETY, 2006, 87 (01) :33-+
[33]   Evaluation of bias-correction methods for ensemble streamflow volume forecasts [J].
Hashino, T. ;
Bradley, A. A. ;
Schwartz, S. S. .
HYDROLOGY AND EARTH SYSTEM SCIENCES, 2007, 11 (02) :939-950
[34]   COBS: qualitatively constrained smoothing via linear programming [J].
He, XM ;
Ng, P .
COMPUTATIONAL STATISTICS, 1999, 14 (03) :315-337
[35]  
Hersbach H, 2000, WEATHER FORECAST, V15, P559, DOI 10.1175/1520-0434(2000)015<0559:DOTCRP>2.0.CO
[36]  
2
[37]  
Jarvis A., 2008, Hole-filled Seamless SRTM Data V4, DOI DOI 10.1016/J.JHYDROL.2018.09.052
[38]   Comparison of pre- and post-processors for ensemble streamflow prediction [J].
Kang, Tae-Ho ;
Kim, Young-Oh ;
Hong, Il-Pyo .
ATMOSPHERIC SCIENCE LETTERS, 2010, 11 (02) :153-159
[39]  
Kelly K., 2000, WATER RESOURCES RES, V36
[40]   Locally Calibrated Probabilistic Temperature Forecasting Using Geostatistical Model Averaging and Local Bayesian Model Averaging [J].
Kleiber, William ;
Raftery, Adrian E. ;
Baars, Jeffrey ;
Gneiting, Tilmann ;
Mass, Clifford F. ;
Grimit, Eric .
MONTHLY WEATHER REVIEW, 2011, 139 (08) :2630-2649