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Reduced Models for Chemical Kinetics Derived from Parallel Ensemble Simulations of Stirred Reactors

机译:搅拌反应器并行集合模拟得到的化学动力学简化模型

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Detailed chemical kinetic models are essential to improve the predictive capability of computational fluid dynamics (CFD) simulations and to impact the development of next generation combustion technologies. However, such detailed kinetic models are beyond the reach of CFD codes due to the computational cost of transporting additional chemical degrees of freedom. Reduced order models for combustion kinetics exploit the presence of lower dimensional manifolds in the state space and require far fewer number of scalars to be transported as part of CFD simulations. In this paper, we describe the software infrastructure developed to allow large ensembles of stirred reactor configurations with detailed chemical kinetics. The canonical reactor simulations are incorporated in a workflow with sparse grid and data reduction methodologies aimed at development of reduced order models. We present results from analyzing the results of the stirred reactor calculations for syngas mixture using principal component analysis (PCA) and neural network methodologies. The results show that nonlinear autoencoder model can surpass PCA in representing the original dataset with far fewer degrees of freedom.
机译:详细的化学动力学模型对于改善计算流体动力学(CFD)模拟的预测能力并影响下一代燃烧技术的发展至关重要。然而,由于运输额外化学自由度的计算成本,这种详细的动力学模型超出了CFD代码的范围。燃烧动力学的减少级模型利用状态空间中的下尺寸歧管的存在,并且需要较少数量的标量作为CFD模拟的一部分被运输。在本文中,我们描述了开发的软件基础设施,以允许具有详细的化学动力学的搅拌反应器配置的大型集合。规范反应堆模拟结合在具有稀疏电网的工作流程和数据减少方法中,旨在开发减少订单模型。我们使用主成分分析(PCA)和神经网络方法来分析用于合成气混合物的搅拌反应器计算结果的结果。结果表明,非线性AutoEncoder模型可以超越PCA,代表最初的数据集,具有较小程度的自由度。

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