论文标题

导向的诱导预防火焰的数据驱动的运动学模型

A data-driven kinematic model of a ducted premixed flame

论文作者

Yu, Hans, Juniper, Matthew P., Magri, Luca

论文摘要

降低的火焰动力学模型可用于预测和减轻燃气轮机和火箭发动机设计中热声振荡的出现。这些模型虽然通常是正确的,但通常不准确。随着自动化实验和数值模拟产生越来越多的数据,就出现了有关如何将这些数据同化为物理知识的还原阶模型以使这些模型定量准确的问题。在这项研究中,我们开发并测试了一种基于物理的降低阶层模型的预混合火焰,其中从火焰的高速视频中学到了模型参数。使用集合卡尔曼滤波器将实验数据吸收到级别集求解器中。这导致具有量化不确定性的最佳校准降低模型,该模型准确地重现了诸如尖缘形成和捏合等精确的非线性特征。关闭同化后,还原阶模型继续与实验相匹配。此外,模型的参数自动提取,已显示出与物理理由预期的一阶行为相匹配。这项研究表明,每当可用的新实验或数值数据可用时,如何迅速更新降级模型,而无需存储数据本身。

Reduced-order models of flame dynamics can be used to predict and mitigate the emergence of thermoacoustic oscillations in the design of gas turbine and rocket engines. This process is hindered by the fact that these models, although often qualitatively correct, are not usually quantitatively accurate. As automated experiments and numerical simulations produce ever-increasing quantities of data, the question arises as to how this data can be assimilated into physics-informed reduced-order models in order to render these models quantitatively accurate. In this study, we develop and test a physics-based reduced-order model of a ducted premixed flame in which the model parameters are learned from high speed videos of the flame. The experimental data is assimilated into a level-set solver using an ensemble Kalman filter. This leads to an optimally calibrated reduced-order model with quantified uncertainties, which accurately reproduces elaborate nonlinear features such as cusp formation and pinch-off. The reduced-order model continues to match the experiments after assimilation has been switched off. Further, the parameters of the model, which are extracted automatically, are shown to match the first order behavior expected on physical grounds. This study shows how reduced-order models can be updated rapidly whenever new experimental or numerical data becomes available, without the data itself having to be stored.

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