Applied Sciences (Oct 2018)

Nonlinear Aeroelastic System Identification Based on Neural Network

  • Bo Zhang,
  • Jinglong Han,
  • Haiwei Yun,
  • Xiaomao Chen

DOI
https://doi.org/10.3390/app8101916
Journal volume & issue
Vol. 8, no. 10
p. 1916

Abstract

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This paper focuses on the nonlinear aeroelastic system identification method based on an artificial neural network (ANN) that uses time-delay and feedback elements. A typical two-dimensional wing section with control surface is modelled to illustrate the proposed identification algorithm. The response of the system, which applies a sine-chirp input signal on the control surface, is computed by time-marching-integration. A time-delay recurrent neural network (TDRNN) is employed and trained to predict the pitch angle of the system. The chirp and sine excitation signals are used to verify the identified system. Estimation results of the trained neural network are compared with numerical simulation values. Two types of structural nonlinearity are studied, cubic-spring and friction. The results indicate that the TDRNN can approach the nonlinear aeroelastic system exactly.

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