Abstract
Gamma spectrometry is a passive non-destructive assay used to quantify radionuclides present in more or less complex objects. Basic methods using empirical calibration with a standard in order to quantify the activity of nuclear materials by determining the calibration coefficient are useless on non-reproducible, complex and single nuclear objects such as waste packages. Package specifications as composition or geometry change from one package to another and involve a high variability of objects. Current quantification process uses numerical modelling of the measured scene with few available data such as geometry or composition. These data are density, material, screen, geometric shape, matrix composition, matrix and source distribution. Some of them are strongly dependent on package data knowledge and operator backgrounds. The French Commissariat à l’Energie Atomique (CEA) is developing a new methodology to quantify nuclear materials in waste packages and waste drums without operator adjustment and internal package configuration knowledge. This method suggests combining a global stochastic approach which uses, among others, surrogate models available to simulate the gamma attenuation behaviour, a Bayesian approach which considers conditional probability densities of problem inputs, and Markov Chains Monte Carlo algorithms (MCMC) which solve inverse problems, with gamma ray emission radionuclide spectrum, and outside dimensions of interest objects. The methodology is testing to quantify actinide activity in different kind of matrix, composition, and configuration of sources standard in terms of actinide masses, locations and distributions. Activity uncertainties are taken into account by this adjustment methodology.
Highlights
T HE quantification of nuclear materials is crucial in many branches of nuclear industry as nuclear plants, nuclear criticality safety or nuclear decommissioning
Many nuclear detection techniques like neutron detection methods, gamma spectrometry, and alpha particles detection methods are carried out to accurately quantify radionuclide masses included in a large number of more or less complex objects
Perrin was with the French Commissariat al’Energie Atomique, CEA/DAM/DIF, F-91297 Arpajon CEDEX, France with applied mathematical tools. This detector numerical model is built in order to reduce global uncertainties of final quantification results by increasing detection capability knowledge of High-Purity Germanium one (HPGe) detectors
Summary
T HE quantification of nuclear materials is crucial in many branches of nuclear industry as nuclear plants, nuclear criticality safety or nuclear decommissioning. Perrin was with the French Commissariat al’Energie Atomique, CEA/DAM/DIF, F-91297 Arpajon CEDEX, France with applied mathematical tools This detector numerical model is built in order to reduce global uncertainties of final quantification results by increasing detection capability knowledge of HPGe detectors. The ǫ(E) coefficient is related to the capability of a measured object to reduce the gamma signal coming from an interest nuclear material It depends on object features such as internal layout, screens, density, position of the gamma source relative to the HPGe detector, internal materials and energy. New kind of nuclear quantification numerical methods dealing with applied mathematics and stochastic approaches [3] propose to emulate outcomes of interest as ǫ(E) to solve the inverse problem of quantification and estimate an interest radionuclide mass distribution.
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