Sensors (Jul 2023)

A Self-Attention Integrated Learning Model for Landing Gear Performance Prediction

  • Lin Lin,
  • Changsheng Tong,
  • Feng Guo,
  • Song Fu,
  • Yancheng Lv,
  • Wenhui He

DOI
https://doi.org/10.3390/s23136219
Journal volume & issue
Vol. 23, no. 13
p. 6219

Abstract

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The landing gear structure suffers from large loads during aircraft takeoff and landing, and an accurate prediction of landing gear performance is beneficial to ensure flight safety. Nevertheless, the landing gear performance prediction method based on machine learning has a strong reliance on the dataset, in which the feature dimension and data distribution will have a great impact on the prediction accuracy. To address these issues, a novel MCA-MLPSA is developed. First, an MCA (multiple correlation analysis) method is proposed to select key features. Second, a heterogeneous multilearner integration framework is proposed, which makes use of different base learners. Third, an MLPSA (multilayer perceptron with self-attention) model is proposed to adaptively capture the data distribution and adjust the weights of each base learner. Finally, the excellent prediction performance of the proposed MCA-MLPSA is validated by a series of experiments on the landing gear data.

Keywords