4.7 Article

High-resolution ensemble projections and uncertainty assessment of regional climate change over China in CORDEX East Asia

Journal

HYDROLOGY AND EARTH SYSTEM SCIENCES
Volume 22, Issue 5, Pages 3087-3103

Publisher

COPERNICUS GESELLSCHAFT MBH
DOI: 10.5194/hess-22-3087-2018

Keywords

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Funding

  1. National Key R&D Program of China [2016YFC0402706, 2016YFC0402710]
  2. National Natural Science Foundation of China [41501015, 51539003, 51421006, 51509263]
  3. Fundamental Research Funds for the Central Universities [2016B00114]

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An ensemble simulation of five regional climate models (RCMs) from the coordinated regional downscaling experiment in East Asia is evaluated and used to project future regional climate change in China. The influences of model uncertainty and internal variability on projections are also identified. The RCMs simulate the historical (1980-2005) climate and future (2006-2049) climate projections under the Representative Concentration Pathway (RCP) RCP4.5 scenario. The simulations for five subregions and the Tibetan Plateau, are highlighted in this study. Results show that (1) RCMs can capture the climatology, annual cycle, and interannual variability of temperature and precipitation and that a multi-model ensemble (MME) outperforms that of an individual RCM. The added values for RCMs are confirmed by comparing the performance of RCMs and global climate models (GCMs) in reproducing annual and seasonal mean precipitation and temperature during the historical period. (2) For future (2030-2049) climate, the MME indicates consistent warming trends at around 1 degrees C in the entire domain and projects pronounced warming in northern and western China. The annual precipitation is likely to increase in most of the simulation region, except for the Tibetan Plateau. (3) Generally , the future projected change in annual and seasonal mean temperature by RCMs is nearly consistent with the results from the driving GCM. However, changes in annual and seasonal mean precipitation exhibit significant inter-RCM differences and possess a larger magnitude and variability than the driving GCM. Even opposite signals for projected changes in average precipitation between the MME and the driving GCM are shown over southern China, northeastern China, and the Tibetan Plateau. (4) The uncertainty in projected mean temperature mainly arises from the internal variability over northern and southern China and the model uncertainty over the other three subregions. For the projected mean precipitation, the dominant uncertainty source is the internal variability over most regions, except for the Tibetan Plateau, where the model uncertainty reaches up to 60 %. Moreover, the model uncertainty increases with prediction lead time across all subregions.

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