数据驱动的湍流热通量建模,可输入多种保真度数据

Matilde Fiore, Enrico Saccaggi, Lilla Koloszar, Yann Bartosiewicz, Miguel Alfonso Mendez
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引用次数: 0

摘要

数据驱动的 RANS 建模正在成为一种利用高保真数据所提供信息的有前途的方法。然而,由于不同保真度水平的输入数据之间存在不一致性,其通用性和鲁棒性方面的挑战限制了其广泛应用。这对于热湍流闭合尤其如此,因为热湍流闭合本质上依赖于低或高保真湍流动量模型提供的动量统计。这项工作研究了动量建模的不一致性对数据驱动的热闭合的影响,该热闭合是用具有多种保真度(DNS 和 RANS)的数据集进行训练的。对模型输入的分析表明,两个保真度级别对应于输入空间中的不同区域。本文表明,可以通过使用异构数据进行训练来利用这种分离,使模型能够检测其输入中的保真度级别,并相应地调整其预测。特别是,敏感性分析和验证表明,这种模型可以利用数据的不一致性来提高其稳健性。最后,利用 CFD 模拟进行的验证显示了这种多保真度训练方法在传统模型提供的动量统计受模型不确定性影响的流动中的潜力。
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Data-driven turbulent heat flux modeling with inputs of multiple fidelity
Data-driven RANS modeling is emerging as a promising methodology to exploit the information provided by high-fidelity data. However, its widespread application is limited by challenges in generalization and robustness to inconsistencies between input data of varying fidelity levels. This is especially true for thermal turbulent closures, which inherently depend on momentum statistics provided by low or high fidelity turbulence momentum models. This work investigates the impact of momentum modeling inconsistencies on a data-driven thermal closure trained with a dataset with multiple fidelity (DNS and RANS). The analysis of the model inputs shows that the two fidelity levels correspond to separate regions in the input space. It is here shown that such separation can be exploited by a training with heterogeneous data, allowing the model to detect the level of fidelity in its inputs and adjust its prediction accordingly. In particular, a sensitivity analysis and verification shows that such a model can leverage the data inconsistencies to increase its robustness. Finally, the verification with a CFD simulation shows the potential of this multi-fidelity training approach for flows in which momentum statistics provided by traditional models are affected by model uncertainties.
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