Verification of MOOSE/Bison's Heat Conduction Solver Using Combined Spatiotemporal Convergence Analysis

IF 0.5 Q4 ENGINEERING, MECHANICAL Journal of Verification, Validation and Uncertainty Quantification Pub Date : 2022-03-29 DOI:10.1115/1.4054216
A. Toptan, N. Porter, J. Hales, Wen Jiang, B. Spencer, S. Novascone
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引用次数: 1

Abstract

Bison is a computational physics code that uses the finite element method to model the thermo-mechanical response of nuclear fuel. Since Bison is used to inform high-consequence decisions, it is important that its computational results are reliable and predictive. One important step in assessing the reliability and predictive capabilities of a simulation tool is the verification process, which quantifies numerical errors in a discrete solution relative to the exact solution of the mathematical model. One step in the verification process–called code verification–ensures that the implemented numerical algorithm is a faithful representation of the underlying mathematical model, including partial differential or integral equations, initial and boundary conditions, and auxiliary relationships. In this paper, the code verification process is applied to spatiotemporal heat conduction problems in Bison. Simultaneous refinement of the discretization in space and time is employed to reveal any potential mistakes in the numerical algorithms for the interactions between the spatial and temporal components of the solution. For each verification problem, the correct spatial and temporal order of accuracy is demonstrated for both first- and second order accurate finite elements and a variety of time integration schemes. These results provide strong evidence that the Bison numerical algorithm for solving spatiotemporal problems reliably represents the underlying mathematical model in MOOSE. The selected test problems can also be used in other simulation tools that numerically solve for conduction or diffusion.
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基于时空联合收敛分析的驼鹿/野牛热传导求解方法验证
Bison是一个计算物理代码,使用有限元方法对核燃料的热机械响应进行建模。由于Bison用于为高后果决策提供信息,因此其计算结果的可靠性和预测性很重要。评估模拟工具的可靠性和预测能力的一个重要步骤是验证过程,它量化了离散解中相对于数学模型精确解的数值误差。验证过程中的一个步骤——称为代码验证——确保实现的数值算法是底层数学模型的忠实表示,包括偏微分或积分方程、初始和边界条件以及辅助关系。本文将代码验证过程应用于Bison中的时空热传导问题。在空间和时间上同时细化离散化,以揭示求解的空间和时间分量之间相互作用的数值算法中的任何潜在错误。对于每个验证问题,对于一阶和二阶精确有限元以及各种时间积分方案,都证明了正确的空间和时间精度顺序。这些结果有力地证明了求解时空问题的Bison数值算法可靠地代表了MOOSE中的基本数学模型。所选择的测试问题也可以用于数值求解传导或扩散的其他模拟工具。
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CiteScore
1.60
自引率
16.70%
发文量
12
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