z-logo
Premium
Radiative Feedbacks From Stochastic Variability in Surface Temperature and Radiative Imbalance
Author(s) -
Proistosescu Cristian,
Donohoe Aaron,
Armour Kyle C.,
Roe Gerard H.,
Stuecker Malte F.,
Bitz Cecilia M.
Publication year - 2018
Publication title -
geophysical research letters
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.007
H-Index - 273
eISSN - 1944-8007
pISSN - 0094-8276
DOI - 10.1029/2018gl077678
Subject(s) - radiative forcing , environmental science , forcing (mathematics) , climatology , energy balance , atmospheric sciences , covariance , climate model , radiative transfer , range (aeronautics) , climate change , mathematics , physics , statistics , geology , oceanography , materials science , quantum mechanics , composite material , thermodynamics
Estimates of radiative feedbacks obtained by regressing fluctuations in top‐of‐atmosphere (TOA) energy imbalance and surface temperature depend critically on the sampling interval and on assumptions about the nature of the stochastic forcing driving internal variability. Here we develop an energy balance framework that allows us to model the different impacts of stochastic atmospheric and oceanic forcing on feedback estimates. The contribution of different forcing components is parsed based on their impacts on the covariance structure of near‐surface air temperature and TOA energy fluxes, and the framework is validated in a hierarchy of climate model simulations that span a range of oceanic configurations and reproduce the key features seen in observations. We find that at least three distinct forcing sources, feedbacks, and time scales are needed to explain the full covariance structure. Atmospheric and oceanic forcings drive modes of variability with distinct relationships between temperature and TOA radiation, leading to an effect akin to regression dilution. The net regression‐based feedback estimate is found to be a weighted average of the distinct feedbacks associated with each mode. Moreover, the estimated feedback depends on whether surface temperature and TOA energy fluxes are sampled at monthly or annual time scales. The results suggest that regression‐based feedback estimates reflect contributions from a combination of stochastic forcings and should not be interpreted as providing an estimate of the radiative feedback governing the climate response to greenhouse gas forcing.

This content is not available in your region!

Continue researching here.

Having issues? You can contact us here