论文标题

深入学习跨度平均的Navier-Stokes方程

Deep learning of the spanwise-averaged Navier-Stokes equations

论文作者

Font, Bernat, Weymouth, Gabriel D., Nguyen, Vinh-Tan, Tutty, Owen R.

论文摘要

长圆柱结构周围的湍流流量的模拟在计算上是昂贵的,因为长度范围很大,需要简化尺寸降低。当前的维度降低技术(例如脱衣理论和深度平均方法)没有考虑到小规模三维(3-D)涡流结构固有的自然流量耗散机制。我们提出了一种基于流量的局部跨度平均值的新型流量分解,从而产生了跨度平均的Navier-Stokes(SANS)方程。 SANS方程包括闭合术语对3-D效应的说明,否则在2-D配方中未考虑。基于深卷积神经网络的监督机器学习(ML)模型可为SANS系统关闭。 A-Priori结果显示目标和预测的封闭项之间的相关性高达92%;比涡流粘度模型相关性要好得多。还评估了训练有素的ML模型,以针对训练案例的不同雷诺制度和身体形状进行评估,尽管剪切层区域有一些差异,但仍观察到高相关值。新的SANS方程和ML闭合模型也用于A-tosterii预测。尽管我们发现对动态系统的长期ML预测有已知稳定性问题的证据,但封闭的SAN模拟仍然能够预测尾流指标和诱导力,而误差为1-10%。这与标准2-D模拟相比,这大约提高了数量级,同时将3D模拟的计算成本降低了99.5%。

Simulations of turbulent fluid flow around long cylindrical structures are computationally expensive because of the vast range of length scales, requiring simplifications such as dimensional reduction. Current dimensionality reduction techniques such as strip-theory and depth-averaged methods do not take into account the natural flow dissipation mechanism inherent in the small-scale three-dimensional (3-D) vortical structures. We propose a novel flow decomposition based on a local spanwise average of the flow, yielding the spanwise-averaged Navier-Stokes (SANS) equations. The SANS equations include closure terms accounting for the 3-D effects otherwise not considered in 2-D formulations. A supervised machine-learning (ML) model based on a deep convolutional neural network provides closure to the SANS system. A-priori results show up to 92% correlation between target and predicted closure terms; more than an order of magnitude better than the eddy viscosity model correlation. The trained ML model is also assessed for different Reynolds regimes and body shapes to the training case where, despite some discrepancies in the shear-layer region, high correlation values are still observed. The new SANS equations and ML closure model are also used for a-posteriori prediction. While we find evidence of known stability issues with long time ML predictions for dynamical systems, the closed SANS simulations are still capable of predicting wake metrics and induced forces with errors from 1-10%. This results in approximately an order of magnitude improvement over standard 2-D simulations while reducing the computational cost of 3-D simulations by 99.5%.

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