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首页> 外文期刊>Physics of fluids >Machine learning for nonintrusive model order reduction of the parametric inviscid transonic flow past an airfoil
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Machine learning for nonintrusive model order reduction of the parametric inviscid transonic flow past an airfoil

机译:机器学习非典型模型顺序降低参数型跨型跨越流过翼型

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摘要

Fluid flow in the transonic regime finds relevance in aerospace engineering, particularly in the design of commercial air transportation vehicles. Computational fluid dynamics models of transonic flow for aerospace applications are computationally expensive to solve because of the high degrees of freedom as well as the coupled nature of the conservation laws. While these issues pose a bottleneck for the use of such models in aerospace design, computational costs can be significantly minimized by constructing special, structure-preserving surrogate models called reduced-order models. In this work, we propose a machine learning method to construct reduced-order models via deep neural networks and we demonstrate its ability to preserve accuracy with a significantly lower computational cost. In addition, our machine learning methodology is physics-informed and constrained through the utilization of an interpretable encoding by way of proper orthogonal decomposition. Application to the inviscid transonic flow past the RAE2822 airfoil under varying freestream Mach numbers and angles of attack, as well as airfoil shape parameters with a deforming mesh, shows that the proposed approach adapts to high-dimensional parameter variation well. Notably, the proposed framework precludes the knowledge of numerical operators utilized in the data generation phase, thereby demonstrating its potential utility in the fast exploration of design space for diverse engineering applications. Comparison against a projection-based nonintrusive model order reduction method demonstrates that the proposed approach produces comparable accuracy and yet is orders of magnitude computationally cheap to evaluate, despite being agnostic to the physics of the problem.
机译:跨音制度中的流体流动在航空航天工程中发现了相关性,特别是在商用空运车辆的设计中。由于高度的自由度以及守护法的耦合性质,可以计算出用于航空航天应用的跨音流的计算流体动力学模型。虽然这些问题在航空航天设计中使用这种模型来构成瓶颈,但通过构建称为掉阶模型的特殊结构保存的代理模型,可以显着地减少计算成本。在这项工作中,我们提出了一种机器学习方法,通过深度神经网络构建下降阶模型,我们展示了能够以显着降低的计算成本保持准确性。此外,我们的机器学习方法是通过利用适当的正交分解的解释编码来限制物理信息。应用于诸如变化的自由流马赫数和攻击角度的Rae2822翼型的应用,以及翼型形状参数,表明所提出的方法适应高维参数变化。值得注意的是,所提出的框架阻止了数据生成阶段中使用的数字运算符的知识,从而证明了其在快速探索各种工程应用的设计空间中的潜在效用。抵制基于投影的非流体模型顺序的比较表明,所提出的方法产生可比的准确性,并且尽管对问题的物理不适应,但计算值得的数量级计算。

著录项

  • 来源
    《Physics of fluids》 |2020年第4期|共21页
  • 作者单位

    Argonne Natl Lab Math &

    Comp Sci Div Lemont IL 60439 USA;

    Argonne Natl Lab Argonne Leadership Comp Facil Lemont IL 60439 USA;

    Argonne Natl Lab Math &

    Comp Sci Div Lemont IL 60439 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 流体力学;
  • 关键词

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