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Application of Artificial Neural Networks to Stochastic Estimation and Jet Noise Modeling

机译:人工神经网络在随机估计和喷气噪声建模中的应用

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摘要

In many areas of data science, deep neural networks (DNNs) have shown a remarkable ability to learn complex, nonlinear relationships between sets of variables. In this paper, this network architecture is applied to several different tasks relating to high-speed turbulent flows. In the first section, linear stochastic estimation (LSE) as proposed by Adrian ("On the Role of Conditional Averages in Turbulence Theory," Symposium on Turbulence in Liquids, 1977; and "Conditional Eddies in Isotropic Turbulence," Physics of Fluids, Vol. 22, No. 11, 1979, pp. 2065-2070) is reformulated as a machine learning problem, and the two methods are compared. Both a DNN and a LSE model are trained to estimate fluctuating pressure at a subset of locations in the near field of a Mach 0.6 jet, given the pressure measured at other locations. It is shown that DNNs exhibit a slight performance benefit over traditional LSE models on average. The second part of this paper focuses on the utilization of an artificial neural network (ANN) to predict the directional overall sound pressure level (OASPL) in the far field of a supersonic multistream jet. A database was created, describing the near-field and far-field conditions of a complex nonaxisymmetric jet flow, with Mach numbers ranging from 1.0 to 1.6. The problem was posed as a form of multivariate nonlinear regression, and an ANN was used to create a model. A feature space consisting of plausible predictors of the far-field directional OASPL was defined, based on previous fundamental studies and jet noise scaling laws. On average, the ANN was able to predict the directional far-field OASPL within 0.75 dB, surpassing original goals. In addition to these topics, some limitations and possible extensions of the methods described herein are discussed.
机译:在数据科学的许多领域,深度神经网络(DNN)表现出了出色的学习变量集之间复杂的非线性关系的能力。在本文中,此网络体系结构应用于与高速湍流有关的几个不同任务。在第一部分中,由Adrian提出了线性随机估计(LSE)(“关于湍流理论中的条件平均的作用”,液体湍流专题讨论会,1977年;和“各向同性湍流的条件涡流”,流体物理学,Vol (1979年第11期,第22卷,第2065-2070页)被重新表述为机器学习问题,并比较了这两种方法。在给定在其他位置测量的压力的情况下,均会训练DNN和LSE模型以估计0.6马赫射流近场中一部分位置处的波动压力。结果表明,与传统的LSE模型相比,DNN表现出较小的性能优势。本文的第二部分着重于利用人工神经网络(ANN)来预测超音速多流射流远场中的定向总声压级(OASPL)。创建了一个数据库,描述了复杂的非轴对称射流的近场和远场条件,马赫数范围为1.0至1.6。该问题以多元非线性回归的形式提出,并使用了ANN来创建模型。基于以前的基础研究和射流噪声缩放定律,定义了一个由远场定向OASPL可能的预测因子组成的特征空间。平均而言,人工神经网络能够预测0.75 dB之内的定向远场OASPL,超过了最初的目标。除了这些主题之外,还讨论了本文所述方法的一些限制和可能的扩展。

著录项

  • 来源
    《AIAA Journal》 |2020年第2期|647-658|共12页
  • 作者单位

    Syracuse Univ Dept Mech & Aerosp Engn Syracuse NY 13210 USA;

    Spectral Energies LLC Dayton OH 45430 USA;

    Penn State Univ Flow Acoust Dept Appl Res Lab State Coll PA 16804 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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