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Non‐stationary bias correction of monthly <scp>CMIP5</scp> temperature projections over China using a residual‐based bagging tree model

Authors :
Yumeng Tao
Xiaoming Zhang
Tiantian Yang
Xiaojia He
Lin Jiang
Mohammad Faridzad
Source :
International Journal of Climatology. 38:467-482
Publication Year :
2017
Publisher :
Wiley, 2017.

Abstract

The biases in the Global Circulation Models (GCMs) are crucial for understanding future climate changes. Currently, most bias correction methodologies suffer from the assumption that model bias is stationary. This paper provides a non-stationary bias correction model, termed residual-based bagging tree (RBT) model, to reduce simulation biases and to quantify the contributions of single models. Specifically, the proposed model estimates the residuals between individual models and observations, and takes the differences between observations and the ensemble mean into consideration during the model training process. A case study is conducted for 10 major river basins in Mainland China during different seasons. Results show that the proposed model is capable of providing accurate and stable predictions while including the non-stationarities into the modelling framework. Significant reductions in both bias and root mean squared error are achieved with the proposed RBT model, especially for the central and western parts of China. The proposed RBT model has consistently better performance in reducing biases when compared with the raw ensemble mean, the ensemble mean with simple additive bias correction, and the single best model for different seasons. Furthermore, the contribution of each single GCM in reducing the overall bias is quantified. The single model importance varies between 3.1% and 7.2%. For different future scenarios (RCP 2.6, RCP 4.5, and RCP 8.5), the results from RBT model suggest temperature increases of 1.44, 2.59, and 4.71 &#176;C by the end of the century, respectively, when compared with the average temperature during 1970–1999.

Details

ISSN :
10970088 and 08998418
Volume :
38
Database :
OpenAIRE
Journal :
International Journal of Climatology
Accession number :
edsair.doi...........a70047fdabe693ad146890b2793c7956