Machine learning assessment of the importance of unirradiated yield strength as a variable in embrittlement trend forecasting
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2025-04Derechos
Attribution-NonCommercial-NoDerivatives 4.0 International
Publicado en
International Journal of Pressure Vessels and Piping, 2025, 214, 105444
Editorial
Elsevier
Disponible después de
2027-05-01
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Palabras clave
Nuclear reactor vessel
Unirradiated yield strength
Machine learning
Transition temperature shift
Dt41J
Neutron Embrittlement
Resumen/Abstract
This paper presents an investigation into the possible influence of pre-irradiation hardening of RPV steel on the transition temperature shift, AT41J. Using the ASTM PLOTTER-22 database supplemented with unirradiated yield stress, YS(u), data the study uses machine learning regression algorithms to construct a predictive model that accounts for YS(u) alongside more well-established predictor variables (e.g., copper, fluence, ...). The Gradient Boosting algorithm emerged as the most efficient, with performance metrics R2 = 0.89 ± 0.02 and root-mean square error (RMSE) = 11.2 ± 0.7 °C. Comparative analyses via bootstrapping underscore the beneficial effect of incorporating YS(u) as a regressor, resulting in a RMSE reduction by 7 % and R2 improvement of 15 %. Feature interpretation techniques demonstrate that the significance of YS(u) is comparable to elements like nickel and irradiation temperature and above others such as manganese, phosphorus, or the product form of the steel. The revealed trend - higher YS(u) corresponding to lower AT41J - and the lack of significant interactions between YS(u) and the chemical composition, supports the roughly independent role of YS(u). These results underscore the value of incorporating YS(u) as a predictor variable for irradiation embrittlement.
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