Uncertainty Quantification of Time-Dependent Quantities in a System with Adjustable Level of Smoothness

IF 0.5 Q4 ENGINEERING, MECHANICAL Journal of Verification, Validation and Uncertainty Quantification Pub Date : 2021-12-06 DOI:10.1115/1.4053161
Marks Legkovskis, P. Thomas, M. Auinger
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Abstract

We summarise the results of a computational study involved with Uncertainty Quantification (UQ) in a benchmark turbulent burner flame simulation. UQ analysis of this simulation enables one to analyse the convergence performance of one of the most widely-used uncertainty propagation techniques, Polynomial Chaos Expansion (PCE) at varying levels of system smoothness. This is possible because in the burner flame simulations, the smoothness of the time-dependent temperature, which is the study's QoI is found to evolve with the flame development state. This analysis is deemed important as it is known that PCE cannot accurately surrogate non-smooth QoIs and thus perform convergent UQ. While this restriction is known and gets accounted for, there is no understanding whether there is a quantifiable scaling relationship between the PCE's convergence metrics and the level of QoI's smoothness. It is found that the level of QoI-smoothness can be quantified by its standard deviation allowing to observe the effect of QoI's level of smoothness on the PCE's convergence performance. It is found that for our flow scenario, there exists a power-law relationship between a comparative parameter, defined to measure the PCE's convergence performance relative to Monte Carlo sampling, and the QoI's standard deviation, which allows us to make a more weighted decision on the choice of the uncertainty propagation technique.
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平滑度可调系统中时变量的不确定性量化
我们总结了在基准湍流燃烧器火焰模拟中涉及不确定性量化(UQ)的计算研究结果。该仿真的UQ分析使人们能够分析最广泛使用的不确定性传播技术之一,多项式混沌展开(PCE)在不同系统平滑水平下的收敛性能。这是可能的,因为在燃烧器火焰模拟中,发现随时间变化的温度的平滑度,即研究的qi,随着火焰的发展状态而变化。这种分析被认为是重要的,因为众所周知,PCE不能准确地代替非平滑的qi,从而执行收敛的UQ。虽然这一限制是已知的,并得到了解释,但PCE的收敛指标和qi的平滑水平之间是否存在可量化的缩放关系,我们不得而知。研究发现,qi平滑程度可以通过其标准差来量化,从而可以观察到qi平滑程度对PCE收敛性能的影响。研究发现,在我们的流场景中,用于衡量PCE相对于蒙特卡罗采样的收敛性能的比较参数与qi的标准差之间存在幂律关系,这使得我们可以在不确定性传播技术的选择上做出更加权的决策。
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CiteScore
1.60
自引率
16.70%
发文量
12
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