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Arjan J. Koning

Researcher at International Atomic Energy Agency

Publications -  83
Citations -  8167

Arjan J. Koning is an academic researcher from International Atomic Energy Agency. The author has contributed to research in topics: Nuclear data & Nuclear reaction. The author has an hindex of 23, co-authored 72 publications receiving 6275 citations. Previous affiliations of Arjan J. Koning include Los Alamos National Laboratory & Nuclear Research and Consultancy Group.

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Local and global nucleon optical models from 1 keV to 200 MeV

TL;DR: In this article, the authors presented new phenomenological optical model potentials for neutrons and protons with incident energies from 1 keV up to 200 MeV, for (near-)spherical nuclides in the mass range 24⩽ A ⩽209 They are based on a smooth, unique functional form for the energy dependence of the potential depths, and on physically constrained geometry parameters.
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ENDF/B-VIII.0: The 8th Major Release of the Nuclear Reaction Data Library with CIELO-project Cross Sections, New Standards and Thermal Scattering Data

David Brown, +69 more
- 01 Feb 2018 - 
TL;DR: The new ENDF/B-VIII.0 evaluated nuclear reaction data library as mentioned in this paper includes improved thermal neutron scattering data and uses new evaluated data from the CIELO project for neutron reactions on 1 H, 16 O, 56 Fe, 235 U, 238 U and 239 Pu described in companion papers.
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Modern Nuclear Data Evaluation with the TALYS Code System

TL;DR: A general overview of nuclear data evaluation and its applications as developed at NRG, Petten is presented and a new way of approaching the analysis of nuclear applications is opened, with consequences in both applied nuclear physics and safety of nuclear installations.
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TENDL: complete nuclear data library for innovative nuclear science and technology

TL;DR: This paper will demonstrate the performance of the latest TENDL releases for different application fields, as well as new approaches for uncertainty quantification based on Bayesian inference methods and possible differential and integral adjustments.