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Multi-fidelity modelling of mixed convection based on experimental correlations and numerical simulations

机译:基于实验相关性和数值模拟的混合对流多保真度建模

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For thermal mixed-convection flows, the Nusselt number is a function of Reynolds number, Grashof number and the angle between the forced-and natural-convection directions. We consider flow over a heated cylinder for which there is no universal correlation that accurately predicts Nusselt number as a function of these parameters, especially in opposing-convection flows, where the natural convection is against the forced convection. Here, we revisit this classical problem by employing modern tools from machine learning to develop a general multi-fidelity framework for constructing a stochastic response surface for the Nusselt number. In particular, we combine previously developed experimental correlations (low-fidelity model) with direct numerical simulations (high-fidelity model) using Gaussian process regression and autoregressive stochastic schemes. In this framework the high-fidelity model is sampled only a few times, while the inexpensive empirical correlation is sampled at a very high rate. We obtain the mean Nusselt number directly from the stochastic multi-fidelity response surface, and we also propose an improved correlation. This new correlation seems to be consistent with the physics of this problem as we correct the vectorial addition of forced and natural convection with a pre-factor that weighs differently the forced convection. This, in turn, results in a new definition of the effective Reynolds number, hence accounting for the 'incomplete similarity' between mixed convection and forced convection. In addition, due to the probabilistic construction, we can quantify the uncertainty associated with the predictions. This information-fusion framework is useful for elucidating the physics of the flow, especially in cases where anomalous transport or interesting dynamics may be revealed by contrasting the variable fidelity across the models. While in this paper we focus on the thermal mixed convection, the multi-fidelity framework provides a new paradigm that could he used in many different contexts in fluid mechanics including heat and mass transport, but also in combining various levels of fidelity of models of turbulent flows.
机译:对于热混合对流,Nusselt数是雷诺数,Grashof数以及强制对流和自然对流方向之间的夹角的函数。我们考虑在加热缸上的流动,因为没有通用的相关性可以准确地预测作为这些参数的函数的努塞尔数,尤其是在自然对流与强制对流相对的对流中。在这里,我们通过使用机器学习中的现代工具来重新研究这个经典问题,以开发通用的多保真度框架来构造Nusselt数的随机响应面。特别是,我们将先前开发的实验相关性(低保真度模型)与使用高斯过程回归和自回归随机方案的直接数值模拟(高保真度模型)相结合。在此框架中,仅对高保真模型进行了几次采样,而对廉价的经验相关性进行了很高的采样。我们直接从随机多保真度响应面获得平均努塞尔数,并且我们还提出了一种改进的相关性。这种新的相关性似乎与这个问题的物理原理是一致的,因为我们用权重对权重的权重不同的因素校正了强制对流和自然对流的矢量加法。反过来,这导致对有效雷诺数的新定义,因此解决了混合对流和强制对流之间的“不完全相似性”。另外,由于概率构造,我们可以量化与预测相关的不确定性。此信息融合框架可用于阐明流程的物理性质,尤其是在通过对比模型中的可变保真度而可能显示异常运输或有趣的动力学的情况下。尽管在本文中我们将重点放在热混合对流上,但多保真度框架提供了一种新的范式,他可以将其用于流体力学(包括传热和传质)的许多不同环境中,还可以将湍流模型的各种保真度组合在一起流。

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