Many inverse problems in the atmospheric sciences involve parameters with known physical constraints. Examples include nonnegativity (e.g., emissions of some urban air pollutants) or upward limits implied by reaction or solubility constants. However, probabilistic inverse modeling approaches based on Gaussian assumptions cannot incorporate such bounds and thus often produce unrealistic results. The atmospheric literature lacks consensus on the best means to overcome this problem, and existing atmospheric studies rely on a limited number of the possible methods with little examination of the relative merits of each. This paper investigates the applicability of several approaches to bounded inverse problems. A common method of data trans...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/94664/1/jgrd12182.pd
International audienceFor a start, recent techniques devoted to the reconstruction of sources of an ...
Estimation of the quantities of harmful substances emitted into the atmosphere is one of the main ch...
In order to tackle climate change, the scientific community needs to understand the dominant process...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/94944/1/jgrd11176.pd
Classical Bayesian atmospheric inversions process atmospheric observations and prior emissions, the...
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 audienceA new methodology for the inversion of anthropogenic emissions at a local scal...
International audienceA new methodology for the inversion of anthropogenic emissions at a local scal...
International audienceA new methodology for the inversion of anthropogenic emissions at a local scal...
International audienceA new methodology for the inversion of anthropogenic emissions at a local scal...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/94664/1/jgrd12182.pd
International audienceFor a start, recent techniques devoted to the reconstruction of sources of an ...
Estimation of the quantities of harmful substances emitted into the atmosphere is one of the main ch...
In order to tackle climate change, the scientific community needs to understand the dominant process...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/94944/1/jgrd11176.pd
Classical Bayesian atmospheric inversions process atmospheric observations and prior emissions, the...
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 audienceA new methodology for the inversion of anthropogenic emissions at a local scal...
International audienceA new methodology for the inversion of anthropogenic emissions at a local scal...
International audienceA new methodology for the inversion of anthropogenic emissions at a local scal...
International audienceA new methodology for the inversion of anthropogenic emissions at a local scal...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/94664/1/jgrd12182.pd
International audienceFor a start, recent techniques devoted to the reconstruction of sources of an ...
Estimation of the quantities of harmful substances emitted into the atmosphere is one of the main ch...