
Problem Case • We aim to unfold reactor transfer function to provide core diagnostics. • Derivation of core perturbation characteristics to classify and locate its origin. • Yet this is challenging due to the limited number of neutron detectors in western type reactors. • We ask, can we use machine learning to successfully approximate the reactor transfer function? • However, to effectively train ML algorithms large quantities of data are required.
machine learning, Other Physics Topics, neutron noise, core monitoring, core diagnostics
machine learning, Other Physics Topics, neutron noise, core monitoring, core diagnostics
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