论文标题

混合深度神经网络基于基于动态边界的不稳定流动的预测方法

Hybrid deep neural network based prediction method for unsteady flows with moving boundaries

论文作者

Han, Renkun, Zhang, Zhong, Wang, Yixing, Liu, Ziyang, Zhang, Yang, Chen, Gang

论文摘要

一种新型的混合深度神经网络结构旨在捕获直接从高维无稳定流场数据的移动边界周围不稳定流动的空间特征。混合深度神经网络由卷积神经网络(CNN),改进的卷积长期术语记忆神经网络(ConvlstM)和DeonScoltolutional神经网络(DECNN)组成。可以通过以前的时间步骤和边界位置通过新型混合深神经网络通过以前的时间步骤和边界位置来预测未来时间步长的流场。计算具有各种振幅的强制振荡圆柱体周围的不稳定唤醒流,以确定数据集作为训练混合深神经网络的训练样本。然后,通过预测具有新振幅的强制振荡圆柱周围的不稳定流场来测试训练有素的杂种深神经网络。分析了神经网络结构参数对预测精度的影响。由最佳参数组合构成的混合深神经网络用于预测将来的流场。预测的流场与通过计算流体动态求解器直接计算的流程非常吻合,这意味着这种深神经网络可以从一系列不稳定的流动围绕移动边界捕获空间 - 周期性序列的精确时空信息。结果显示了这种新型混合深度神经网络在流动缸的流控制中的潜在能力,其中需要在移动边界周围快速计算高维非线性不稳定流动。

A novel hybrid deep neural network architecture is designed to capture the spatial-temporal features of unsteady flows around moving boundaries directly from high-dimensional unsteady flow fields data. The hybrid deep neural network is constituted by the convolutional neural network (CNN), improved convolutional Long-Short Term Memory neural network (ConvLSTM) and deconvolutional neural network (DeCNN). Flow fields at future time step can be predicted through flow fields by previous time steps and boundary positions at those steps by the novel hybrid deep neural network. Unsteady wake flows around a forced oscillation cylinder with various amplitudes are calculated to establish the datasets as training samples for training the hybrid deep neural networks. The trained hybrid deep neural networks are then tested by predicting the unsteady flow fields around a forced oscillation cylinder with new amplitude. The effect of neural network structure parameters on prediction accuracy was analyzed. The hybrid deep neural network, constituted by the best parameter combination, is used to predict the flow fields in the future time. The predicted flow fields are in good agreement with those calculated directly by computational fluid dynamic solver, which means that this kind of deep neural network can capture accurate spatial-temporal information from the spatial-temporal series of unsteady flows around moving boundaries. The result shows the potential capability of this kind novel hybrid deep neural network in flow control for vibrating cylinder, where the fast calculation of high-dimensional nonlinear unsteady flow around moving boundaries is needed.

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