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Progress toward Monte Carlo-thermal hydraulic coupling using low-order nonlinear diffusion acceleration methods

机译:低阶非线性扩散加速方法的蒙特卡洛热力耦合研究进展

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摘要

A new approach for coupled Monte Carlo (MC) and thermal hydraulics (TH) simulations is proposed using low-order nonlinear diffusion acceleration methods. This approach uses new features such as coarse mesh finite difference diffusion (CMFD), multipole representation for fuel temperature feedback on microscopic cross sections, and support vector machine learning algorithms (SVM) for iterations between CMFD and TH equations. The multipole representation method showed small differences of about 0.3% root mean square (RMS) error in converged assembly source distribution compared to a conventional MC simulation with ACE data at the same temperature. This is within two standard deviations of the real uncertainty. Eigenvalue differences were on the order of 10 pcm. Support vector machine regression was performed on-the-fly during MC simulations. Regression results of macroscopic cross sections parametrized by coolant density and fuel temperature were successful and eliminated the need of partial derivative tables generated from lattice codes. All of these new tools were integrated together to perform MC-CMFD-TH-SVM iterations. Results showed that inner iterations between CMFD-TH-SVM are needed to obtain a stable solution. (c) 2014 Elsevier Ltd. All rights reserved.
机译:提出了一种使用低阶非线性扩散加速方法进行蒙特卡洛(MC)和热力水力(TH)耦合仿真的新方法。这种方法使用了新功能,例如粗网格有限差分扩散(CMFD),在微观截面上用于燃料温度反馈的多极表示法,以及用于CMFD和TH方程之间迭代的支持向量机学习算法(SVM)。与在相同温度下使用ACE数据进行的常规MC模拟相比,多极点表示方法在会聚的装配源分布中显示出约0.3%的均方根(RMS)误差。这在实际不确定性的两个标准偏差之内。特征值差约为10pcm。支持向量机回归是在MC模拟过程中即时执行的。由冷却剂密度和燃料温度参数化的宏观截面的回归结果是成功的,并且消除了从晶格代码生成偏导表的需要。所有这些新工具都集成在一起以执行MC-CMFD-TH-SVM迭代。结果表明,需要在CMFD-TH-SVM之间进行内部迭代以获得稳定的解决方案。 (c)2014 Elsevier Ltd.保留所有权利。

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