Aerospace (Jun 2024)

Detection of Precursors of Thermoacoustic Instability in a Swirled Combustor Using Chaotic Analysis and Deep Learning Models

  • Boqi Xu,
  • Zhiyu Wang,
  • Hongwu Zhou,
  • Wei Cao,
  • Zhan Zhong,
  • Weidong Huang,
  • Wansheng Nie

DOI
https://doi.org/10.3390/aerospace11060455
Journal volume & issue
Vol. 11, no. 6
p. 455

Abstract

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This paper investigates the role of chaotic analysis and deep learning models in combustion instability predictions. To detect the precursors of impending thermoacoustic instability (TAI) in a swirled combustor with various fuel injection strategies, a data-driven framework is proposed in this study. Based on chaotic analysis, a recurrence matrix derived from combustion system is used in deep learning models, which are able to detect precursors of TAI. More specifically, the ResNet-18 network model is trained to predict the proximity of unstable operation conditions when the combustion system is still stable. The proposed framework achieved state-of-the-art 91.06% accuracy in prediction performance. The framework has potential for practical applications to avoid an unstable operation domain in active combustion control systems and, thus, can offer on-line information on the margin of the combustion instability.

Keywords