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跨马赫数条件下的转按位置迁移学习预测

  • Beijing Institute of Technology
  • China Aerospace Science and Technology Corporation

科研成果: 期刊稿件文章同行评审

摘要

To predict the boundary-layer transition location over a flat plate across varying Mach numbers, an efficient method was developed for small-sample settings. Flow-field disturbance datasets across multiple Mach numbers were generated using the nonlinear parabolized stability equations, with Ma =0.01 designated as the source domain and Ma = 0. 1,0.2,0.4, 0.8, 1.6 as target domains. The influence of Mach number variations on transition patterns was systematically analyzed. A convolutional neural network model was employed to map flow field patterns to transition locations, incorporating a transfer learning strategy with progressive unfreezing and layer-wise learning rates. Results demonstrate that transfer learning significantly outperforms direct training: for Μα&0.4, only 1/10 of the target domain samples are required to achieve a mean absolute error below 2. 04% of the average ground-truth value; for Ma ^0. 8, a progressive domain adaptation strategy controls the error within 6. 19%. The approach enhances transition prediction under small-sample conditions and provides a reliable technical pathway for cross-condition flow modeling.

投稿的翻译标题Transfer-learning prediction of transition location under cross-Mach number conditions
源语言繁体中文
页(从-至)121-130
页数10
期刊Guofang Keji Daxue Xuebao/Journal of National University of Defense Technology
48
2
DOI
出版状态已出版 - 2026

关键词

  • boundary-layer transition
  • convolutional neural network
  • cross-Mach number
  • transfer learning

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