In this investigation, we outline a data-assisted approach that employs random forest classifiers for local and dynamic combustion submodel assignment in turbulent-combustion simulations. This method is applied in simulations of a single-element GOX/GCH4 rocket combustor; a priori as well as a posteriori assessments are conducted to (i) evaluate the accuracy and adjustability of the classifier for targeting different quantities-of-interest (QoIs), and (ii) assess improvements, resulting from the data-assisted combustion model assignment, in predicting target QoIs during simulation runtime. Results from the a priori study show that random forests, trained with local flow properties as input variables and combustion model errors as training labels, assign three different combustion models - finite-rate chemistry (FRC), flamelet progress variable (FPV) model, and inert mixing (IM) - with reasonable classification performance even when targeting multiple QoIs. Applications in a posteriori studies demonstrate improved predictions from data-assisted simulations, in temperature and CO mass fraction, when compared with monolithic FPV calculations. These results demonstrate that this data-driven framework holds promise for the dynamic combustion submodel assignment in reacting flow simulations.
翻译:在这项调查中,我们概述了一种数据辅助方法,在动荡燃烧模拟中,使用随机森林分类器进行局部和动态燃烧亚模模组任务,在动荡燃烧模拟中采用随机森林分类器,这种方法用于模拟单元素GOX/GCH4火箭组合;先验性以及后验性评估,以便(一) 评价分类器针对不同数量的利益对象的准确性和可调整性(QoIs),(二) 评估数据辅助燃烧模型任务导致的改进,在模拟运行期间预测目标QoIs。先验性研究的结果显示,随机森林,以本地流动特性培训为输入变量,燃烧模型错误作为培训标签,指定三种不同的燃烧模型 -- -- 定速化学(FRC)、Flamplet进度变量模型(FPV)和惰性混合(IM) -- 合理分类性表现,即使针对多个QoIs。