在CTF中使用基于圆管的混合机器学习模型预测棒束中的临界热流密度 / Prediction of Critical Heat Flux in Rod Bundles Using Tube-Based Hybrid Machine Learning Models in CTF
1️⃣ 一句话总结
这项研究成功地将基于圆管数据训练的机器学习模型应用于更复杂的棒束几何结构,预测核反应堆中的临界热流密度,其混合模型的表现优于传统经验方法。
The prediction of critical heat flux (CHF) using machine learning (ML) approaches has become a highly active research activity in recent years, the goal of which is to build models more accurate than current conventional approaches such as empirical correlations or lookup tables (LUTs). Previous work developed and deployed tube-based pure and hybrid ML models in the CTF subchannel code, however, full-scale reactor core simulations require the use of rod bundle geometries. Unlike isolated subchannels, rod bundles experience complex thermal hydraulic phenomena such as channel crossflow, spacer grid losses, and effects from unheated conductors. This study investigates the generalization of ML-based CHF prediction models in rod bundles after being trained on tube-based CHF data. A purely data-driven DNN and two hybrid bias-correction models were implemented in the CTF subchannel code and used to predict CHF location and magnitude in the Combustion Engineering 5-by-5 bundle CHF test series. The W-3 correlation, Bowring correlation, and Groeneveld LUT were used as baseline comparators. On average, all three ML-based approaches produced magnitude and location predictions more accurate than the baseline models, with the hybrid LUT model exhibiting the most favorable performance metrics.
在CTF中使用基于圆管的混合机器学习模型预测棒束中的临界热流密度 / Prediction of Critical Heat Flux in Rod Bundles Using Tube-Based Hybrid Machine Learning Models in CTF
这项研究成功地将基于圆管数据训练的机器学习模型应用于更复杂的棒束几何结构,预测核反应堆中的临界热流密度,其混合模型的表现优于传统经验方法。
源自 arXiv: 2602.03805