Influence of SST biases on future climate change projections

被引:0
作者
Moetasim Ashfaq
Christopher B. Skinner
Noah S. Diffenbaugh
机构
[1] Stanford University,Department of Environmental Earth System Science
[2] Purdue University,Department of Earth and Atmospheric Sciences
[3] Climate Change Science Institute,Woods Institute for the Environment
[4] Oak Ridge National Laboratory,undefined
[5] Stanford University,undefined
来源
Climate Dynamics | 2011年 / 36卷
关键词
Climate change; Sea surface temperature; Global climate modeling;
D O I
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中图分类号
学科分类号
摘要
We use a quantile-based bias correction technique and a multi-member ensemble of the atmospheric component of NCAR CCSM3 (CAM3) simulations to investigate the influence of sea surface temperature (SST) biases on future climate change projections. The simulations, which cover 1977–1999 in the historical period and 2077–2099 in the future (A1B) period, use the CCSM3-generated SSTs as prescribed boundary conditions. Bias correction is applied to the monthly time-series of SSTs so that the simulated changes in SST mean and variability are preserved. Our comparison of CAM3 simulations with and without SST correction shows that the SST biases affect the precipitation distribution in CAM3 over many regions by introducing errors in atmospheric moisture content and upper-level (lower-level) divergence (convergence). Also, bias correction leads to significantly different precipitation and surface temperature changes over many oceanic and terrestrial regions (predominantly in the tropics) in response to the future anthropogenic increases in greenhouse forcing. The differences in the precipitation response from SST bias correction occur both in the mean and the percent change, and are independent of the ocean–atmosphere coupling. Many of these differences are comparable to or larger than the spread of future precipitation changes across the CMIP3 ensemble. Such biases can affect the simulated terrestrial feedbacks and thermohaline circulations in coupled climate model integrations through changes in the hydrological cycle and ocean salinity. Moreover, biases in CCSM3-generated SSTs are generally similar to the biases in CMIP3 ensemble mean SSTs, suggesting that other GCMs may display a similar sensitivity of projected climate change to SST errors. These results help to quantify the influence of climate model biases on the simulated climate change, and therefore should inform the effort to further develop approaches for reliable climate change projection.
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页码:1303 / 1319
页数:16
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