In-situ estimation of time-averaging uncertainties in turbulent flow simulations

IF 6.9 1区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY Computer Methods in Applied Mechanics and Engineering Pub Date : 2024-11-11 DOI:10.1016/j.cma.2024.117511
S. Rezaeiravesh , C. Gscheidle , A. Peplinski , J. Garcke , P. Schlatter
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Abstract

The statistics obtained from turbulent flow simulations are generally uncertain due to finite time averaging. Most techniques available in the literature to accurately estimate these uncertainties typically only work in an offline mode, that is, they require access to all available samples of a time series at once. In addition to the impossibility of online monitoring of uncertainties during the course of simulations, such an offline approach can lead to input/output (I/O) deficiencies and large storage/memory requirements, which can be problematic for large-scale simulations of turbulent flows. Here, we designed, implemented and tested a framework for estimating time-averaging uncertainties in turbulence statistics in an in-situ (online/streaming/updating) manner. The proposed algorithm relies on a novel low-memory update formula for computing the sample-estimated autocorrelation functions (ACFs). Based on this, smooth modeled ACFs of turbulence quantities can be generated to accurately estimate the time-averaging uncertainties in the corresponding sample mean estimators. The resulting uncertainty estimates are highly robust, accurate, and quantitatively the same as those obtained by standard offline estimators. Moreover, the computational overhead added by the in-situ algorithm is found to be negligible allowing for online estimation of uncertainties for multiple points and quantities. The framework is general and can be used with any flow solver and also integrated into the simulations over conformal and complex meshes created by adopting adaptive mesh refinement techniques. The results of the study are encouraging for the further development of the in-situ framework for other uncertainty quantification and data-driven analyses relevant not only to large-scale turbulent flow simulations, but also to the simulation of other dynamical systems leading to time-varying quantities with autocorrelated samples.
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湍流模拟中时间平均不确定性的现场估算
由于有限时间平均法,从湍流模拟中获得的统计数据通常具有不确定性。文献中可用于精确估算这些不确定性的大多数技术通常只能在离线模式下工作,也就是说,它们需要一次性获取时间序列的所有可用样本。除了无法在模拟过程中对不确定性进行在线监测外,这种离线方法还可能导致输入/输出(I/O)缺陷和大量存储/内存需求,这对于大规模湍流模拟来说可能是个问题。在此,我们设计、实施并测试了一个框架,用于以原位(在线/流式/更新)方式估计湍流统计中的时间平均不确定性。所提出的算法依赖于计算样本估计自相关函数(ACF)的新型低内存更新公式。在此基础上,可生成平滑的湍流量建模 ACF,以准确估计相应样本平均估计器中的时间平均不确定性。由此得到的不确定性估计值非常稳健、准确,在数量上与标准离线估计值相同。此外,原位算法增加的计算开销可以忽略不计,允许对多点和多量的不确定性进行在线估计。该框架具有通用性,可与任何流动求解器配合使用,也可集成到采用自适应网格细化技术创建的共形和复杂网格的模拟中。研究结果对于进一步开发原位框架,用于其他不确定性量化和数据驱动分析具有积极意义,不仅适用于大规模湍流模拟,还适用于其他动态系统的模拟,这些动态系统会导致具有自相关样本的时变量。
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来源期刊
CiteScore
12.70
自引率
15.30%
发文量
719
审稿时长
44 days
期刊介绍: Computer Methods in Applied Mechanics and Engineering stands as a cornerstone in the realm of computational science and engineering. With a history spanning over five decades, the journal has been a key platform for disseminating papers on advanced mathematical modeling and numerical solutions. Interdisciplinary in nature, these contributions encompass mechanics, mathematics, computer science, and various scientific disciplines. The journal welcomes a broad range of computational methods addressing the simulation, analysis, and design of complex physical problems, making it a vital resource for researchers in the field.
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