International audienceClassical Bayesian atmospheric inversions process atmospheric observations and prior emissions, the two being connected by an observation operator picturing mainly the atmospheric transport. These inversions rely on prescribed errors in the observations, the prior emissions and the observation operator. When data pieces are sparse, inversion results are very sensitive to the prescribed error distributions, which are not accurately known. The classical Bayesian framework experiences difficulties in quantifying the impact of mis-specified error distributions on the optimized fluxes. In order to cope with this issue, we rely on recent research results to enhance the classical Bayesian inversion framework through a margina...
This paper introduces a Maximum Likelihood (ML) approach for estimating the statistical parameters r...
This paper introduces a Maximum Likelihood (ML) approach for estimating the statistical parameters r...
This paper introduces a Maximum Likelihood (ML) approach for estimating the statistical parameters r...
International audienceClassical Bayesian atmospheric inversions process atmospheric observations and...
International audienceClassical Bayesian atmospheric inversions process atmospheric observations and...
International audienceClassical Bayesian atmospheric inversions process atmospheric observations and...
International audienceClassical Bayesian atmospheric inversions process atmospheric observations and...
International audienceClassical Bayesian atmospheric inversions process atmospheric observations and...
Classical Bayesian atmospheric inversions process atmospheric observations and prior emissions, the...
We adapt general statistical methods to estimate the optimal error covariance matrices in a regional...
We adapt general statistical methods to estimate the optimal error covariance matrices in a regional...
We adapt general statistical methods to estimate the optimal error covariance matrices in a regional...
This paper introduces a Maximum Likelihood (ML) approach for estimating the statistical parameters r...
This paper introduces a Maximum Likelihood (ML) approach for estimating the statistical parameters r...
This paper introduces a Maximum Likelihood (ML) approach for estimating the statistical parameters r...
This paper introduces a Maximum Likelihood (ML) approach for estimating the statistical parameters r...
This paper introduces a Maximum Likelihood (ML) approach for estimating the statistical parameters r...
This paper introduces a Maximum Likelihood (ML) approach for estimating the statistical parameters r...
International audienceClassical Bayesian atmospheric inversions process atmospheric observations and...
International audienceClassical Bayesian atmospheric inversions process atmospheric observations and...
International audienceClassical Bayesian atmospheric inversions process atmospheric observations and...
International audienceClassical Bayesian atmospheric inversions process atmospheric observations and...
International audienceClassical Bayesian atmospheric inversions process atmospheric observations and...
Classical Bayesian atmospheric inversions process atmospheric observations and prior emissions, the...
We adapt general statistical methods to estimate the optimal error covariance matrices in a regional...
We adapt general statistical methods to estimate the optimal error covariance matrices in a regional...
We adapt general statistical methods to estimate the optimal error covariance matrices in a regional...
This paper introduces a Maximum Likelihood (ML) approach for estimating the statistical parameters r...
This paper introduces a Maximum Likelihood (ML) approach for estimating the statistical parameters r...
This paper introduces a Maximum Likelihood (ML) approach for estimating the statistical parameters r...
This paper introduces a Maximum Likelihood (ML) approach for estimating the statistical parameters r...
This paper introduces a Maximum Likelihood (ML) approach for estimating the statistical parameters r...
This paper introduces a Maximum Likelihood (ML) approach for estimating the statistical parameters r...