Aerospace (Jan 2024)

A Neural Network-Based Flame Structure Feature Extraction Method for the Lean Blowout Recognition

  • Puti Yan,
  • Zhen Cao,
  • Jiangbo Peng,
  • Chaobo Yang,
  • Xin Yu,
  • Penghua Qiu,
  • Shanchun Zhang,
  • Minghong Han,
  • Wenbei Liu,
  • Zuo Jiang

DOI
https://doi.org/10.3390/aerospace11010057
Journal volume & issue
Vol. 11, no. 1
p. 57

Abstract

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A flame’s structural feature is a crucial parameter required to comprehensively understand the interaction between turbulence and flames. The generation and evolution processes of the structure feature have rarely been investigated in lean blowout (LBO) flame instability states. Hence, to understand the precursor features of the LBO flame, this work employed high-speed OH-PLIF measurements to acquire time-series LBO flame images and developed a novel feature extraction method based on a deep neural network to quantify the LBO features in real time. Meanwhile, we proposed a deep neural network segmentation method based on a tri-map called the Fire-MatteFormer, and conducted a statistical analysis on flame surface features, primarily holes. The statistical analysis results determined the relationship between the life cycle of holes (from generation to disappearance) and their area, perimeter, and total number. The trained Fire-MatteFormer model was found to represent a viable method for determining flame features in the detection of incipient LBO instability conditions. Overall, the model shows significant promise in ascertaining local flame structure features.

Keywords