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DOI10.1007/s00382-019-04646-y
Bias adjustment for decadal predictions of precipitation in Europe from CCLM
Li J.; Pollinger F.; Panitz H.-J.; Feldmann H.; Paeth H.
发表日期2019
ISSN0930-7575
起始页码1323
结束页码1340
卷号53期号:2020-03-04
英文摘要A cross-validated model output statistics (MOS) approach is applied to precipitation data from the high-resolution regional climate model CCLM for Europe. The aim is to remove systematic errors of simulated precipitation in decadal climate predictions. We developed a two-step bias-adjustment approach. In step one, we estimate model errors based on a long-term ‘CCLM assimilation run’ (regionalizing data from a global assimilation run) and observational data. In step two, the resulting transfer function is applied to the complete set of decadal hindcast simulations (285 individual runs). In contrast to lead-time-dependent bias-adjustment approaches, this one is designed for variables with poor decadal prediction skill and without dominant lead-time-dependent bias. In terms of the CCLM assimilation run, MOS is shown to be effective in predictor selection, model skill improvement, and model bias reduction. Yet, the positive effect of MOS correction is accompanied with an underestimation of precipitation variability. After MOS application, an estimated mean square skill score of more than 0.5 is observed regionally. Simulated precipitation in decadal hindcasts is further improved when the MOS is trained on the basis of other decadal hindcasts from the same regional climate model but with a large underestimation in forecast uncertainty. Our results suggest that the MOS system derived from the assimilation run is less effective but allows the potential climate predictability in decadal hindcasts and forecasts to be retained. Using hindcasts itself for training is recommended unless a statistical method is capable of distinguishing biases and predictions within a hindcasts dataset. © 2019, Springer-Verlag GmbH Germany, part of Springer Nature.
英文关键词Bias-adjustment; CCLM; Decadal prediction; Hindcasts; Model output statistics; Precipitation
语种英语
scopus关键词climate modeling; climate prediction; decadal variation; hindcasting; precipitation (climatology); regional climate; Europe
来源期刊Climate Dynamics
文献类型期刊论文
条目标识符http://gcip.llas.ac.cn/handle/2XKMVOVA/146150
作者单位Institute of Geography and Geology, University of Wuerzburg, Wuerzburg, Germany; Institute of Meteorology and Climate Research, Karlsruhe Institute of Technology, Karlsruhe, Germany; Institute of Atmospheric Physics, German Aerospace Center, Oberpfaffenhofen, Germany
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GB/T 7714
Li J.,Pollinger F.,Panitz H.-J.,et al. Bias adjustment for decadal predictions of precipitation in Europe from CCLM[J],2019,53(2020-03-04).
APA Li J.,Pollinger F.,Panitz H.-J.,Feldmann H.,&Paeth H..(2019).Bias adjustment for decadal predictions of precipitation in Europe from CCLM.Climate Dynamics,53(2020-03-04).
MLA Li J.,et al."Bias adjustment for decadal predictions of precipitation in Europe from CCLM".Climate Dynamics 53.2020-03-04(2019).
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