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Prediction of critical heat flux for narrow rectangular channels in a steady state condition using machine learning

机译:采用机器学习预测稳态条件下窄矩形通道的临界热通量

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摘要

The subchannel of a research reactor used to generate high power density is designed to be narrow and rectangular and comprises plate-type fuels operating under downward flow conditions. Critical heat flux (CHF) is a crucial parameter for estimating the safety of a nuclear fuel; hence, this parameter should be accurately predicted. Here, machine learning is applied for the prediction of CHF in a narrow rectangular channel. Although machine learning can effectively analyze large amounts of complex data, its application to CHF, particularly for narrow rectangular channels, remains challenging because of the limited flow conditions available in existing experimental databases. To resolve this problem, we used four CHF correlations to generate pseudo-data for training an artificial neural network. We also propose a network architecture that includes pre-training and prediction stages to predict and analyze the CHF. The trained neural network predicted the CHF with an average error of 3.65% and a root-mean-square error of 17.17% for the test pseudo-data; the respective errors of 0.9% and 26.4% for the experimental data were not considered during training. Finally, machine learning was applied to quantitatively investigate the parametric effect on the CHF in narrow rectangular channels under downward flow conditions.
机译:用于产生高功率密度的研究反应器的子信道设计为窄且矩形,并且包括在向下流动条件下操作的板式燃料。临界热通量(CHF)是用于估算核燃料安全的关键参数;因此,应准确地预测此参数。这里,应用机器学习用于在窄矩形通道中预测CHF。虽然机器学习可以有效地分析大量复杂数据,但由于现有实验数据库中的有限流动条件,其对CHF的应用尤其是窄矩形通道的应用仍然具有挑战性。为了解决这个问题,我们使用了四个CHF相关性来生成用于培训人工神经网络的伪数据。我们还提出了一种网络架构,包括预先训练和预测阶段来预测和分析CHF。训练有素的神经网络预测了CHF,平均误差为3.65%,TEST伪数据的根均方误差为17.17%;在培训期间,不考虑实验数据的0.9%和26.4%的各自误差。最后,应用机器学习以在向下流动条件下定量地研究窄矩形通道中CHF的参数效应。

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