论文标题

使用时间分辨的火焰化学发光和稀疏的MIE散射对JET A-1喷雾特性的物理信息驱动的预测

Physics-informed data-driven prediction of Jet A-1 spray characteristics using time-resolved flame chemiluminescence and sparse Mie scattering

论文作者

Krebbers, Liam, Mohammadnejad, Sajjad, Rostami, Ali, Kheirkhah, Sina

论文摘要

开发了一个时间段和线性回归的框架,并评估了其性能,用于使用火焰化学发光和稀疏数量的液滴数据来预测液滴数量的液滴数量。用于喷雾表征进行单独的压力,用于液滴尺寸的干涉激光成像,阴影学和火焰化学发光。同时进行了10 kHz火焰化学发光和0.2 Hz MIE散射测量,以进行框架发展和液滴预测的数量。甲烷和/或JET A-1都在实验中使用。三种条件对应于完美预混合的甲烷和空气,喷气A-1喷雾剂以及在预混合甲烷和空气中的喷气A-1喷射。对于所有测试条件,调整燃料和空气流速以产生10 kW的固定功率。结果表明,空间平均火焰化学发光的频率以及液滴的数量和质量(对于反应和非反应条件)振荡频率匹配;但是,这些频率与压力波动的频率不符。这表明火焰化学发光动力学是由燃油喷射系统驱动的。对于具有匹配频率含量的信号,开发了一个数据驱动的框架,用于使用输入信号(火焰化学发光)预测客观信号(液滴的喷雾数)。评估了开发框架的性能,以针对测试的喷雾条件进行评估,预测的液滴数量与所测量的液滴吻合。对于燃气轮机发动机燃烧研究,开发的框架非常重要,因为它有助于了解喷雾数据可用的时间分辨的喷雾特性。

A time-lag and linear regression-based framework is developed and its performance is assessed for predicting temporally resolved spray number of droplets using flame chemiluminescence and a sparse number of droplets data. Separate pressure, interferometric laser imaging for droplet sizing, shadowgraphy, and flame chemiluminescence are performed for the spray characterization. Simultaneous 10 kHz flame chemiluminescence and 0.2 Hz Mie scattering measurements are performed for the purposes of the framework development and the number of droplets prediction. Both methane and/or Jet A-1 are used in the experiments. Three conditions corresponding to perfectly premixed methane and air, Jet A-1 spray, and Jet A-1 spray in premixed methane and air flames are examined. For all test conditions, the fuels and air flow rates are adjusted to produce a fixed power of 10 kW. The results show that the frequency of the spatially averaged flame chemiluminescence as well as the number and the mass of the droplets (for both reacting and non-reacting conditions) oscillations frequencies match; however, these frequencies do not match that of the pressure fluctuations. This suggests that the flame chemiluminescence dynamics is driven by the fuel injection system. For signals with matching frequency content, a data-driven framework is developed for predicting an objective signal (the spray number of droplets) using an input signal (the flame chemiluminescence). The performance of the developed framework is assessed for tested spray conditions and the predicted number of droplets agrees well with those measured. For gas turbine engine combustion research, the developed framework is of importance, as it facilitates understanding the time-resolved spray characteristics for instances that the spray data is available sparsely.

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