2008
DOI: 10.1175/2007jcli2044.1
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Using the Radiative Kernel Technique to Calculate Climate Feedbacks in NCAR’s Community Atmospheric Model

Abstract: Climate models differ in their responses to imposed forcings, such as increased greenhouse gas concentrations, due to different climate feedback strengths. Feedbacks in NCAR's Community Atmospheric Model (CAM) are separated into two components: the change in climate components in response to an imposed forcing and the "radiative kernel," the effect that climate changes have on the top-of-theatmosphere (TOA) radiative budget. This technique's usefulness depends on the linearity of the feedback processes. For th… Show more

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Cited by 338 publications
(538 citation statements)
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“…The magnitudes of these residuals (an ensemble mean of 1.23 W m 22 ) are apparently nonnegligible, compared to the overall OLR changes (0.70 W m 22 ). The magnitude of the residuals is so big that they cannot be simply attributed to the nonlinear effect, which should be very small as shown by many previous studies (e.g., Soden and Held 2006;Huang et al 2007;Shell et al 2008;Soden et al 2008;Huang et al 2010). Moreover, there is a substantial spread (a standard deviation of 0.47 W m 22 ) of the residuals across these models; also, a significant correlation (a correlation coefficient of 0.55) exists between these residuals and global mean surface temperature changes.…”
Section: Forcing Variationmentioning
confidence: 83%
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“…The magnitudes of these residuals (an ensemble mean of 1.23 W m 22 ) are apparently nonnegligible, compared to the overall OLR changes (0.70 W m 22 ). The magnitude of the residuals is so big that they cannot be simply attributed to the nonlinear effect, which should be very small as shown by many previous studies (e.g., Soden and Held 2006;Huang et al 2007;Shell et al 2008;Soden et al 2008;Huang et al 2010). Moreover, there is a substantial spread (a standard deviation of 0.47 W m 22 ) of the residuals across these models; also, a significant correlation (a correlation coefficient of 0.55) exists between these residuals and global mean surface temperature changes.…”
Section: Forcing Variationmentioning
confidence: 83%
“…There are 18 models that submitted necessary data for analyzing the longwave feedbacks. The noncloud feedbacks are computed by multiplying the kernels of Shell et al (2008) with the linear trends in monthly mean temperature and water vapor as simulated by each GCM. The tropopause is set to linearly increase from 100 hPa at the equator to 300 hPa at the poles following the previous analyses (e.g., Soden and Held 2006;Soden et al 2008;Shell et al 2008).…”
Section: Feedbacksmentioning
confidence: 99%
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