Separability of Mesh Bias and Parametric Uncertainty for a Full System Thermal Analysis

Benjamin Schroeder, H. Silva, K. Smith
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引用次数: 2

Abstract

When making computational simulation predictions of multiphysics engineering systems, sources of uncertainty in the prediction need to be acknowledged and included in the analysis within the current paradigm of striving for simulation credibility. A thermal analysis of an aerospace geometry was performed at Sandia National Laboratories. For this analysis, a verification, validation, and uncertainty quantification (VVUQ) workflow provided structure for the analysis, resulting in the quantification of significant uncertainty sources including spatial numerical error and material property parametric uncertainty. It was hypothesized that the parametric uncertainty and numerical errors were independent and separable for this application. This hypothesis was supported by performing uncertainty quantification (UQ) simulations at multiple mesh resolutions, while being limited by resources to minimize the number of medium and high resolution simulations. Based on this supported hypothesis, a prediction including parametric uncertainty and a systematic mesh bias is used to make a margin assessment that avoids unnecessary uncertainty obscuring the results and optimizes use of computing resources.
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全系统热分析网格偏差的可分离性和参数不确定性
在对多物理工程系统进行计算模拟预测时,需要承认预测中的不确定性来源,并将其纳入当前努力提高模拟可信度的范式中的分析中。桑迪亚国家实验室对航空航天几何结构进行了热分析。对于该分析,验证、验证和不确定度量化(VVUQ)工作流程为分析提供了结构,从而量化了重要的不确定源,包括空间数值误差和材料特性参数不确定性。假设参数不确定性和数值误差对于该应用是独立和可分离的。这一假设得到了以多个网格分辨率进行不确定性量化(UQ)模拟的支持,同时受到资源限制,以最大限度地减少中分辨率和高分辨率模拟的数量。基于这一支持的假设,使用包括参数不确定性和系统网格偏差的预测来进行边际评估,避免不必要的不确定性模糊结果,并优化计算资源的使用。
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CiteScore
1.60
自引率
16.70%
发文量
12
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