论文标题
卷积网络模型可预测墙数量的壁湍流
Convolutional-network models to predict wall-bounded turbulence from wall quantities
论文作者
论文摘要
训练了基于卷积神经网络的两个模型,以预测湍流开放通道流动中不同壁正常位置的二维速度 - 裂开场,使用壁缝压力组件和壁压作为输入。第一个模型是完全跨跨的神经网络(FCN),它可以直接预测波动,而第二个模型则使用正交基函数的线性组合重建流场,该函数通过适当的正交分解(POD)获得,而命名为FCN-POD。两种模型均使用来自两个直接数值模拟(DNS)的数据训练,摩擦reynolds编号$re_τ= 180 $和$ 550 $。由于他们预测流中非线性相互作用的能力,这两个模型都比扩展的正交分解(EPOD)都表现出更好的预测性能,该分解(EPOD)在输入和输出字段之间建立了线性关系。根据瞬时波动场,湍流统计和功率密度密度的预测,将各种模型的性能进行比较。 FCN表现出更接近壁的最佳预测,而FCN-POD模型在较大的壁正常距离下提供了更好的预测。我们还评估了FCN模型执行转移学习的可行性,使用$re_τ= 180 $的权重来初始化$re_τ= 550 $案例的权重。我们的结果表明,可以获得类似于$ y^{+} = 50 $的参考模型的性能,其中有$ 50 \%$ $和25 \%的原始培训数据。这些非侵入性传感模型将在与壁挂式湍流的闭环控制有关的应用中起重要作用。
Two models based on convolutional neural networks are trained to predict the two-dimensional velocity-fluctuation fields at different wall-normal locations in a turbulent open channel flow, using the wall-shear-stress components and the wall pressure as inputs. The first model is a fully-convolutional neural network (FCN) which directly predicts the fluctuations, while the second one reconstructs the flow fields using a linear combination of orthonormal basis functions, obtained through proper orthogonal decomposition (POD), hence named FCN-POD. Both models are trained using data from two direct numerical simulations (DNS) at friction Reynolds numbers $Re_τ = 180$ and $550$. Thanks to their ability to predict the nonlinear interactions in the flow, both models show a better prediction performance than the extended proper orthogonal decomposition (EPOD), which establishes a linear relation between input and output fields. The performance of the various models is compared based on predictions of the instantaneous fluctuation fields, turbulence statistics and power-spectral densities. The FCN exhibits the best predictions closer to the wall, whereas the FCN-POD model provides better predictions at larger wall-normal distances. We also assessed the feasibility of performing transfer learning for the FCN model, using the weights from $Re_τ=180$ to initialize those of the $Re_τ=550$ case. Our results indicate that it is possible to obtain a performance similar to that of the reference model up to $y^{+}=50$, with $50\%$ and $25\%$ of the original training data. These non-intrusive sensing models will play an important role in applications related to closed-loop control of wall-bounded turbulence.