American Nuclear Society
Home

Home / Publications / Journals / Nuclear Technology / Volume 212 / Number 6

Evaluation of Physics-Informed Machine Learning Models for Liquid Entrainment During Reflood Transient Using NRC/PSU RBHT Data

Yue Jin, Fan-Bill Cheung, Stephen M. Bajorek, Andrew Ireland, Kirk Tien, Chris L. Hoxie

Nuclear Technology / Volume 212 / Number 6 / June 2026 / Pages 1479-1496

Research Article / dx.doi.org/10.1080/00295450.2025.2525606

Received:March 22, 2025
Accepted:June 19, 2025
Published:May 15, 2026

Accurate prediction of liquid droplet entrainment during post-critical heat flux conditions is a high priority for enhancing the predictive capability of nuclear reactor thermal-hydraulic codes and enabling power uprates in existing light water reactors. However, the highly transient and complex nature of two-phase flow during reflood makes theoretical modeling of mass and heat transport processes extremely challenging. Consequently, most existing entrainment models rely on empirical correlations, which often tend to report predictions with large uncertainties. This paper presents the development of a physics-informed machine learning (PIML) model designed to improve the accuracy, reliability, and efficiency of entrainment predictions. Leveraging a comprehensive dataset from the U.S. Nuclear Regulatory Commission/Pennsylvania State University Rod Bundle Heat Transfer reflood experiments, both pure data-driven machine learning and PIML approaches were developed and systematically evaluated. Results show that both modeling strategies accurately capture overall entrainment behavior and significantly outperform conventional empirical models in terms of predictive accuracy. Furthermore, the impact of incorporating the newly developed PIML models into TRACE reflood transient simulations has been explored, demonstrating notable improvements in simulation fidelity.