Machine Learning-augmented Predictive Modeling of Turbulent Separated Flows over Airfoils

ArXiv Pub Date : 2016-08-13 DOI:10.2514/1.J055595
Anand Pratap Singh, S. Medida, K. Duraisamy
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引用次数: 270

Abstract

A modeling paradigm is developed to augment predictive models of turbulence by effectively utilizing limited data generated from physical experiments. The key components of our approach involve inverse modeling to infer the spatial distribution of model discrepancies, and, machine learning to reconstruct discrepancy information from a large number of inverse problems into corrective model forms. We apply the methodology to turbulent flows over airfoils involving flow separation. Model augmentations are developed for the Spalart Allmaras (SA) model using adjoint-based full field inference on experimentally measured lift coefficient data. When these model forms are reconstructed using neural networks (NN) and embedded within a standard solver, we show that much improved predictions in lift can be obtained for geometries and flow conditions that were not used to train the model. The NN-augmented SA model also predicts surface pressures extremely well. Portability of this approach is demonstrated by confirming that predictive improvements are preserved when the augmentation is embedded in a different commercial finite-element solver. The broader vision is that by incorporating data that can reveal the form of the innate model discrepancy, the applicability of data-driven turbulence models can be extended to more general flows.
基于机器学习的翼型分离湍流预测模型
通过有效地利用物理实验产生的有限数据,开发了一种建模范式来增强湍流的预测模型。我们方法的关键组成部分包括逆向建模,以推断模型差异的空间分布,以及机器学习,将大量反问题中的差异信息重构为校正模型形式。我们将该方法应用于涉及流动分离的翼型湍流。对实验测得的升力系数数据,采用基于伴随的全场推理对Spalart Allmaras (SA)模型进行了模型增强。当使用神经网络(NN)重建这些模型形式并嵌入到标准求解器中时,我们表明,对于未用于训练模型的几何形状和流动条件,可以获得大大改进的升力预测。神经网络增强型SA模型也能很好地预测地表压力。这种方法的可移植性证明了,当扩展嵌入到不同的商业有限元求解器中时,预测的改进仍然保持不变。更广阔的视野是,通过整合能够揭示固有模型差异形式的数据,数据驱动的湍流模型的适用性可以扩展到更一般的流动。
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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