4.8 Article

Machine learning predictions of irradiation embrittlement in reactor pressure vessel steels

Journal

NPJ COMPUTATIONAL MATERIALS
Volume 8, Issue 1, Pages -

Publisher

NATURE PORTFOLIO
DOI: 10.1038/s41524-022-00760-4

Keywords

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Funding

  1. NSF SI2-SSI award [1148011]
  2. Light Water Reactor Sustainability program
  3. Nuclear Energy University Program (NEUP) [21-24382]
  4. Graduate Student Study Abroad Program (GSSAP) from the Ministry of Science and Technology (MOST) [107-2917-I-006-008, 110-2222-E-006-008]
  5. Featured Areas Research Center Program within Ministry of Education (MOE)
  6. MOST in Taiwan [110-2634-F006-017]
  7. US Nuclear Regulatory Commission, US Department of Energy (DOE) Nuclear Scientific Users Program
  8. DOE Light Water Reactor Sustainability Program

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This study demonstrates the potential benefits and risks of using machine learning models to predict irradiation hardening in LWR pressure vessel steels. By training the model and successful extrapolations, machine learning models can capture key intermediate flux effects at high fluence.
Irradiation increases the yield stress and embrittles light water reactor (LWR) pressure vessel steels. In this study, we demonstrate some of the potential benefits and risks of using machine learning models to predict irradiation hardening extrapolated to low flux, high fluence, extended life conditions. The machine learning training data included the Irradiation Variable for lower flux irradiations up to an intermediate fluence, plus the Belgian Reactor 2 and Advanced Test Reactor 1 for very high flux irradiations, up to very high fluence. Notably, the machine learning model predictions for the high fluence, intermediate flux Advanced Test Reactor 2 irradiations are superior to extrapolations of existing hardening models. The successful extrapolations showed that machine learning models are capable of capturing key intermediate flux effects at high fluence. Similar approaches, applied to expanded databases, could be used to predict hardening in LWRs under life-extension conditions.

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