Neutron noise-based anomaly classification and localization using machine learning
Paper in proceeding, 2020
core diagnostics
neutron noise
machine learning
core monitoring
Author
Christophe Demaziere
Chalmers, Physics, Subatomic, High Energy and Plasma Physics
Antonios Mylonakis
Chalmers, Physics, Subatomic, High Energy and Plasma Physics
Paolo Vinai
Chalmers, Physics, Subatomic, High Energy and Plasma Physics
Aiden Durrant
University of Lincoln
Fabio De Sousa Ribeiro
University of Lincoln
James Wingate
University of Lincoln
Georgios Leontidis
University of Lincoln
Stefanos Kollias
University of Lincoln
International Conference on Physics of Reactors: Transition to a Scalable Nuclear Future, PHYSOR 2020
Vol. 2020-March 2913-2921 1183
9781713827245 (ISBN)
Cambridge, United Kingdom,
Core monitoring techniques and experimental validation and demonstration (CORTEX)
European Commission (EC) (EC/H2020/754316), 2017-09-01 -- 2021-08-31.
Subject Categories
Computer and Information Science
Other Engineering and Technologies
Other Physics Topics
Areas of Advance
Energy
DOI
10.1051/epjconf/202124721004