[1] The strengths of future carbon dioxide (CO2) sinks are highly uncertain. A sound methodology to characterize current and predictive uncertainties in carbon cycle models is crucial for the design of efficient carbon management strategies. We demonstrate such a methodology, Markov Chain Monte Carlo (MCMC), by performing a Bayesian calibration of a simple global-scale carbon cycle model with historical carbon cycle observations to (1) estimate probability density functions (PDFs) of key carbon cycle parameters, (2) derive statistically sound probabilistic predictions of future CO2 sinks, and (3) assess the utility of hypothetical observation systems to reduce prediction uncertainties. We find that the PDFs of model parameter estimates are ...
This paper summarises the results obtained from a stochastic sensitivity study in the area of global...
Understanding of the carbon cycle is particularly important because of the role of carbon dioxide as...
Climate models are generally calibrated manually by comparing selected climate statistics, such as t...
Abstract in HTML and technical report in PDF available on the Massachusetts Institute of Technology ...
In December 2015, the participants of the COP21 agreed to pursue efforts to limit global temperature...
Conventional calculations of the global carbon budget infer the land sink as a residual between emis...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Earth, Atmospheric, and Planetary Sci...
Conventional calculations of the global carbon budget infer the land sink as a residual between emis...
International audienceOne of the major advantages of carbon cycle data assimilation is the possibili...
Avoiding ‘dangerous climate change’ by stabilization of atmospheric CO2 concentrations at a desired ...
Understanding how sinks of atmospheric CO2 are evolving is essential to ensure that solutions to cli...
State-of-the art climate prediction systems have recently included a carbon component. While physica...
International audienceWe use a carbon-cycle data assimilation system to estimate the terrestrial bio...
International audienceInter‐annual to decadal variability in the strength of the land and ocean carb...
This paper summarises the results obtained from a stochastic sensitivity study in the area of global...
Understanding of the carbon cycle is particularly important because of the role of carbon dioxide as...
Climate models are generally calibrated manually by comparing selected climate statistics, such as t...
Abstract in HTML and technical report in PDF available on the Massachusetts Institute of Technology ...
In December 2015, the participants of the COP21 agreed to pursue efforts to limit global temperature...
Conventional calculations of the global carbon budget infer the land sink as a residual between emis...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Earth, Atmospheric, and Planetary Sci...
Conventional calculations of the global carbon budget infer the land sink as a residual between emis...
International audienceOne of the major advantages of carbon cycle data assimilation is the possibili...
Avoiding ‘dangerous climate change’ by stabilization of atmospheric CO2 concentrations at a desired ...
Understanding how sinks of atmospheric CO2 are evolving is essential to ensure that solutions to cli...
State-of-the art climate prediction systems have recently included a carbon component. While physica...
International audienceWe use a carbon-cycle data assimilation system to estimate the terrestrial bio...
International audienceInter‐annual to decadal variability in the strength of the land and ocean carb...
This paper summarises the results obtained from a stochastic sensitivity study in the area of global...
Understanding of the carbon cycle is particularly important because of the role of carbon dioxide as...
Climate models are generally calibrated manually by comparing selected climate statistics, such as t...