Author/Authors :
By BENJAMIN A. SHABY ، نويسنده , , Christopher B. Field، نويسنده ,
Abstract :
In this study we perform an atmospheric inversion based on a shrinkage estimator. This method is used to estimate
surface fluxes of CO2, first partitioned according to constituent geographic regions, and then according to constituent
processes that are responsible for the total flux. Our approach differs from previous approaches in two important ways.
The first is that the technique of linear Bayesian inversion is recast as a regression problem. Seen as such, standard
regression tools are employed to analyse and reduce errors in the resultant estimates. A shrinkage estimator, which
combines standard ridge regression with the linear ‘Bayesian inversion’ model, is introduced. This method introduces
additional bias into the model with the aim of reducing variance such that errors are decreased overall. Compared with
standard linear Bayesian inversion, the ridge technique seems to reduce both flux estimation errors and prediction errors.
The second divergence from previous studies is that instead of dividing the world into geographically distinct regions
and estimating the CO2 flux in each region, the flux space is divided conceptually into processes that contribute to
the total global flux. Formulating the problem in this manner adds to the interpretability of the resultant estimates and
attempts to shed light on the problem of attributing sources and sinks to their underlying mechanisms