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Multi-Fidelity Aerodynamic Data Fusion with a Deep Neural Network Modeling Method

机译:具有深层神经网络建模方法的多保真空气动力学数据融合

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摘要

To generate more high-quality aerodynamic data using the information provided by different fidelity data, where low-fidelity aerodynamic data provides the trend information and high-fidelity aerodynamic data provides value information, we applied a deep neural network (DNN) algorithm to fuse the information of multi-fidelity aerodynamic data. We discuss the relationships between the low-fidelity and high-fidelity data, and then we describe the proposed architecture for an aerodynamic data fusion model. The architecture consists of three fully-connected neural networks that are employed to approximate low-fidelity data, and the linear part and nonlinear part of correlation for the low- and high-fidelity data, respectively. To test the proposed multi-fidelity aerodynamic data fusion method, we calculated Euler and Navier–Stokes simulations for a typical airfoil at various Mach numbers and angles of attack to obtain the aerodynamic coefficients as low- and high-fidelity data. A fusion model of the longitudinal coefficients of lift CL and drag CD was constructed with the proposed method. For comparisons, variable complexity modeling and cokriging models were also built. The accuracy spread between the predicted value and true value was discussed for both the training and test data of the three different methods. We calculated the root mean square error and average relative deviation to demonstrate the performance of the three different methods. The fusion result of the proposed method was satisfactory on the test case, and showed a better performance compared with the other two traditional methods presented. The results provide evidence that the method proposed in this paper can be useful in dealing with the multi-fidelity aerodynamic data fusion problem.
机译:要使用不同保真数据提供的信息产生更高质量的空气动力学数据,其中低保真空气动力学数据提供趋势信息和高保真空气动力学数据提供价值信息,我们应用了深度神经网络(DNN)算法来保险多保真空气动力学数据的信息。我们讨论了低保真和​​高保真数据之间的关系,然后我们描述了用于空气动力学数据融合模型的提出架构。该架构由三个全连接的神经网络组成,用于分别用于近似低保真数据和线性部分和用于低保真数据的相关性的线性部分和非线性部分。为了测试所提出的多保真空气动力学数据融合方法,我们计算了各种Mach数和攻击角度的典型翼型的欧拉和Navier-Stokes模拟,以获得空气动力学系数作为低保真数据。用所提出的方法构建了升力Cl和拖曳CD的纵向系数的融合模型。为了比较,还建立了可变复杂性建模和Cokriging模型。对三种不同方法的训练和测试数据讨论了预测值和真值之间的准确性。我们计算了根均方误差和平均相对偏差,以证明三种不同方法的性能。该方法的融合结果在测试用例上令人满意,与其他两种传统方法相比,表现出更好的性能。结果提供了证据表明本文提出的方法可用于处理多保真空气动力学数据融合问题。

著录项

  • 期刊名称 Entropy
  • 作者单位
  • 年(卷),期 2020(22),9
  • 年度 2020
  • 页码 1022
  • 总页数 17
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:空气动力学数据融合;多保真数据;机器学习;深神经网络;可变复杂性建模;录音;

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