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Experimental data-based reduced-order model for analysis and prediction of flame transition in gas turbine combustors

机译:基于实验数据的降低阶模型,用于燃气轮机燃烧器中的火焰过渡的分析与预测

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In lean premixed combustors, flame stabilisation is an important operational concern that can affect efficiency, robustness and pollutant formation. The focus of this paper is on flame lift-off and re-attachment to the nozzle of a swirl combustor. Using time-resolved experimental measurements, a data-driven approach known as cluster-based reduced-order modelling (CROM) is employed to (1) isolate key flow patterns and their sequence during the flame transitions, and (2) formulate a forecasting model to predict the flame instability. The flow patterns isolated by the CROM methodology confirm some of the experimental conclusions about the flame transition mechanism. In particular, CROM highlights the key role of the precessing vortex core (PVC) in the flame detachment process in an unsupervised manner. For the attachment process, strong flow recirculation far from the nozzle appears to drive the flame upstream, thus initiating re-attachment. Different data-types (velocity field, OH concentration) were processed by the modelling tool, and the predictive capabilities of these different models are also compared. It was found that the swirling velocity possesses the best predictive properties, which gives a supplemental argument for the role of the PVC in causing the flame transition. The model is tested against unseen data and successfully predicts the probability of flame transition (both detachment and attachment) when trained with swirling velocity with minimal user input. The model trained with OH-PLIF data was only successful at predicting the flame attachment, which implies that different physical mechanisms are present for different types of flame transition. Overall, these aspects show the great potential of data-driven methods, particularly probabilistic forecasting techniques, in analysing and predicting large-scale features in complex turbulent combustion problems.
机译:在精益预混合燃烧室中,火焰稳定性是一种重要的操作关注,可以影响效率,鲁棒性和污染物形成。本文的重点是火焰升降,并将其重新连接到旋流燃烧器的喷嘴。使用时间分辨的实验测量,以(1)在火焰转换期间使用基于群集的降低阶建筑(CROM)的数据驱动方法,并在火焰过渡期间隔离键流模式及其序列,并且(2)制定预测模型预测火焰不稳定。 CROM方法隔离的流动模式证实了关于火焰过渡机制的一些实验结论。特别是,Crom以无监督的方式突出了精确的涡旋核心(PVC)在火焰脱离过程中的关键作用。对于附接过程,远离喷嘴的强流量再循环出现在上游驱动火焰,从而启动重新附着。通过建模工具处理不同的数据类型(速度场,OH浓度),并且还比较了这些不同模型的预测能力。发现旋流速度具有最佳的预测性质,这给出了PVC在导致火焰过渡时的作用的补充参数。该模型测试针对看不见的数据,并成功地预测在具有旋流速度与最小用户输入的旋流速度训练时火焰过渡(拆卸和附件)的概率。用OH-PLIF数据训练的模型仅成功地预测火焰附件,这意味着针对不同类型的火焰转变存在不同的物理机制。总体而言,这些方面表明了数据驱动方法的巨大潜力,特别是概率预测技术,在分析和预测复杂的湍流燃烧问题中的大规模特征。

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