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A framework for data-based turbulent combustion closure: A posteriori validation

机译:基于数据的湍流燃烧闭合的框架:后验验证

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In this work, we demonstrate a framework for developing closure models in turbulent combustion using experimental multi-scalar measurements. The framework is based on the construction of conditional means and joint scalar PDFs from experimental data based on the parameterization of the composition space using principal component analysis (PCA). The resulting principal components (PCs) act as both conditioning variables and transported variables. Their chemical source terms are constructed starting from instantaneous temperature and species measurements using a variant of the pairwise mixing stirred reactor (PMSR) approach. A multi-dimensional kernel density estimation (KDE) approach is used to construct the joint PDFs in PC space. Convolutions of these joint PDFs with conditional means are used to determine the unconditional means for the closure terms: the mean PCs chemical source terms and the density. These means are parameterized in terms of the mean PCs using artificial neural networks (ANN). The framework is demonstrated a posteriori using the data from the Sandia piloted turbulent jet flames D, E and F by performing RANS calculations. The radial profiles of mean and RMS of temperature and measured species mass fractions agree well with the experimental means for these flames. (C) 2019 The Combustion Institute. Published by Elsevier Inc. All rights reserved.
机译:在这项工作中,我们演示了使用实验多标量测量开发湍流燃烧闭合模型的框架。该框架基于使用主成分分析(PCA)根据组成空间的参数化,根据实验数据构造条件均值和联合标量PDF。所得的主成分(PC)既充当条件变量,又充当运输变量。它们的化学来源术语是从瞬时温度和物种测量开始,使用成对混合搅拌反应器(PMSR)方法的变体来构造的。多维核密度估计(KDE)方法用于在PC空间中构造联合PDF。这些联合PDF与条件手段的卷积用于确定封闭项的无条件手段:平均PC化学源项和密度。这些均值是使用人工神经网络(ANN)根据平均PC进行参数化的。通过执行RANS计算,使用来自Sandia操纵的湍流射流火焰D,E和F的数据对框架进行了后验证明。温度的均值和RMS的径向曲线以及所测物种的质量分数与这些火焰的实验方法非常吻合。 (C)2019燃烧研究所。由Elsevier Inc.出版。保留所有权利。

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