Revisiting the bias correction of climate models for impact studies

被引:12
作者
Dinh, Thi Lan Anh [1 ]
Aires, Filipe [2 ]
机构
[1] Sorbonne Univ, LERMA, Observ Paris, Paris, France
[2] Univ PSL, LERMA, Observ Paris, CNRS, Paris, France
关键词
Climate model; Calibration; Bias correction; Quantile mapping; 3 MOUNTAINOUS BASINS; PRECIPITATION; SIMULATIONS; TEMPERATURE; ENSEMBLE; RAINFALL; SCENARIO; SCALES; OUTPUT; DISTRIBUTIONS;
D O I
10.1007/s10584-023-03597-y
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Climate models are widely used in climate change impact studies. However, these simulations often cannot be used directly due to inherent limitations, such as structural biases or parametric uncertainties. Nevertheless, several so-called "bias correction" (B-C) or "bias adjustment" methods have been proposed to get these simulations closer to real observations. Various studies have reviewed available methods; however, numerous innovative methods have been developed in recent years. An up-to-date review of the B-C methods is presented here. To compare these complex methods, a focus is placed on the pedagogy of the presentation. The main lines of thought are presented based on the method assumptions, mathematical form, properties, and applicative purposes. Six representative quantile-based methods are compared for temperature and precipitation monthly time series over the European area, for a climate change scenario with a strong CO2 forcing which is chosen here to facilitate the analysis of the differences among the methods. New, simple, and easy-to-understand diagnostic tools are recommended to measure the impact of the adjustment on the ability of B-C methods to: (1) bring the model outputs closer to observations over the historical record, (2) exploit as much as possible the climate change signal provided by the model. Each B-C method is intended to find the best compromise between these two objectives. A discussion on potential pathways for future developments is finally proposed.
引用
收藏
页数:30
相关论文
共 94 条
[1]   A Statistical Adjustment of Regional Climate Model Outputs to Local Scales: Application to Platja de Palma, Spain [J].
Amengual, A. ;
Homar, V. ;
Romero, R. ;
Alonso, S. ;
Ramis, C. .
JOURNAL OF CLIMATE, 2012, 25 (03) :939-957
[2]  
Asseng S, 2013, NAT CLIM CHANGE, V3, P827, DOI [10.1038/nclimate1916, 10.1038/NCLIMATE1916]
[3]   Bias correction of high resolution regional climate model data [J].
Berg, P. ;
Feldmann, H. ;
Panitz, H. -J. .
JOURNAL OF HYDROLOGY, 2012, 448 :80-92
[4]  
Bishop C. M., 1995, Neural networks for pattern recognition
[5]   A Streamflow Forecasting Framework using Multiple Climate and Hydrological Models1 [J].
Block, Paul J. ;
Souza Filho, Francisco Assis ;
Sun, Liqiang ;
Kwon, Hyun-Han .
JOURNAL OF THE AMERICAN WATER RESOURCES ASSOCIATION, 2009, 45 (04) :828-843
[6]   Statistical and dynamical downscaling of the Seine basin climate for hydro-meteorological studies [J].
Boe, J. ;
Terray, L. ;
Habets, F. ;
Martin, E. .
INTERNATIONAL JOURNAL OF CLIMATOLOGY, 2007, 27 (12) :1643-1655
[7]   Spectral representation of the annual cycle in the climate change signal [J].
Bosshard, T. ;
Kotlarski, S. ;
Ewen, T. ;
Schaer, C. .
HYDROLOGY AND EARTH SYSTEM SCIENCES, 2011, 15 (09) :2777-2788
[8]   Multivariate Bias Correction of Climate Model Output: Matching Marginal Distributions and Intervariable Dependence Structure [J].
Cannon, Alex J. .
JOURNAL OF CLIMATE, 2016, 29 (19) :7045-7064
[9]   Bias Correction of GCM Precipitation by Quantile Mapping: How Well Do Methods Preserve Changes in Quantiles and Extremes? [J].
Cannon, Alex J. ;
Sobie, Stephen R. ;
Murdock, Trevor Q. .
JOURNAL OF CLIMATE, 2015, 28 (17) :6938-6959
[10]   Testing bias adjustment methods for regional climate change applications under observational uncertainty and resolution mismatch [J].
Casanueva, Ana ;
Herrera, Sixto ;
Iturbide, Maialen ;
Lange, Stefan ;
Jury, Martin ;
Dosio, Alessandro ;
Maraun, Douglas ;
Gutierrez, Jose M. .
ATMOSPHERIC SCIENCE LETTERS, 2020, 21 (07)