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Quantification of uncertainties in the assessment of an atmospheric release source applied to the autumn 2017 <sup>106</sup> Ru event

Joffrey Dumont Le Brazidec, Marc Bocquet, Olivier Saunier, Yelva Roustan

2021Atmospheric chemistry and physics29 citationsDOIOpen Access PDF

Abstract

Abstract. Using a Bayesian framework in the inverse problem of estimating the source of an atmospheric release of a pollutant has proven fruitful in recent years. Through Markov chain Monte Carlo (MCMC) algorithms, the statistical distribution of the release parameters such as the location, the duration, and the magnitude as well as error covariances can be sampled so as to get a complete characterisation of the source. In this study, several approaches are described and applied to better quantify these distributions, and therefore to get a better representation of the uncertainties. First, we propose a method based on ensemble forecasting: physical parameters of both the meteorological fields and the transport model are perturbed to create an enhanced ensemble. In order to account for physical model errors, the importance of ensemble members are represented by weights and sampled together with the other variables of the source. Second, once the choice of the statistical likelihood is shown to alter the nuclear source assessment, we suggest several suitable distributions for the errors. Finally, we propose two specific designs of the covariance matrix associated with the observation error. These methods are applied to the source term reconstruction of the 106Ru of unknown origin in Europe in autumn 2017. A posteriori distributions meant to identify the origin of the release, to assess the source term, and to quantify the uncertainties associated with the observations and the model, as well as densities of the weights of the perturbed ensemble, are presented.

Topics & Concepts

Markov chain Monte CarloBayesian probabilityCovarianceMonte Carlo methodTerm (time)A priori and a posterioriMarkov chainRepresentation (politics)Environmental scienceStatisticsComputer scienceMathematicsPhysicsPoliticsLawPolitical sciencePhilosophyQuantum mechanicsEpistemologyRadioactive contamination and transferRadioactivity and Radon MeasurementsAtmospheric and Environmental Gas Dynamics