Causal Inference Analysis to Find Relationships Found in Boundary-Layer Transition – Part I: Theoretical

Arturo Rodríguez, Jose Terrazas, Richard Adansi, V. Kotteda, J. Munoz, Vinod Kumar
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Abstract

Understanding the transition from laminar to turbulent flow – Boundary-Layer Transition (BLT), we can design better state-of-the-art vehicles for defense and space applications, which can mitigate the limitations in current high-speed temperature conditions. BLT is a subject of fluid flow disturbances created by geometric parameters and flow conditions, such as surface roughness, increased velocity, and high-pressure fluctuations, to name a few. These disturbances lead to the development of turbulent spots and differential heating. Historically, the Reynolds number has been used to predict whether a system will develop turbulent flow. However, it has been known for decades that it is not always reliable and cannot indicate where the BLT will occur: some experiments present scenarios where the flow is laminar at a high Reynolds number and vice versa. We can predict the BLT from performing physical experiments, but they are expensive and physical configurations are limited. Despite many community efforts and successes, no general computational solution to simulate different flows and vehicle types that fully incorporate BLT exists. Many are a considerable number of parameters that affect BLT. Therefore, we use Causal Inference to predict BLT by cause-and-effect analysis on multivariate data obtained from BLT studies. Data generated using high-fidelity Computational Fluid Dynamics (CFD) with resolved Large-Eddy Simulations (LES) scales, will be analyzed for turbulence intensity by decomposing velocity in mean and fluctuations. In this paper, we will be discussing approaches on how we predict BLT scenarios using cause and effect relationships driven by causal inference analysis.
寻找边界层转换关系的因果推理分析-第一部分:理论
了解从层流到湍流的过渡-边界层过渡(BLT),我们可以为国防和空间应用设计更好的最先进的车辆,这可以减轻当前高速温度条件下的限制。BLT是一门由几何参数和流动条件(如表面粗糙度、速度增加和高压波动等)产生的流体流动扰动的学科。这些扰动导致湍流斑和差热的发展。从历史上看,雷诺数已经被用来预测系统是否会产生湍流。然而,几十年来人们已经知道,它并不总是可靠的,也不能表明BLT将在哪里发生:一些实验提出了在高雷诺数下流动是层流的情况,反之亦然。我们可以通过物理实验来预测BLT,但实验成本高且物理配置有限。尽管社区做出了许多努力并取得了成功,但目前还没有通用的计算解决方案来模拟完全包含BLT的不同流量和车辆类型。影响BLT的参数有很多。因此,我们使用因果推理,通过对从BLT研究中获得的多变量数据进行因果分析来预测BLT。使用高保真计算流体动力学(CFD)和已解决的大涡模拟(LES)尺度生成的数据将通过分解平均和波动速度来分析湍流强度。在本文中,我们将讨论如何使用因果推理分析驱动的因果关系来预测BLT情景的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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