An FEM-based AI approach to model parameter identification for low vibration modes of wind turbine composite rotor blades

Authors

  • N. Navadeh Department of Aeronautics, South Kensington Campus, Imperial College London, London, UK
  • I. O. Goroshko Department of Theoretical and Applied Mechanics, Taras Shevchenko National University of Kyiv, Kiev, Ukraine
  • Y. A. Zhuk Department of Theoretical and Applied Mechanics, Taras Shevchenko National University of Kyiv, Kiev, Ukraine
  • A. S. Fallah Department of Aeronautics, South Kensington Campus, Imperial College London, London, UK http://orcid.org/0000-0002-0382-633X

DOI:

https://doi.org/10.1080/17797179.2017.1382317

Keywords:

Low-dimensional beam model, AI, optimisation algorithm, vibration coupling, flapwise vibration, lead–lag mode

Abstract

An approach to construction of a beam-type simplified model of a horizontal axis wind turbine composite blade based on the finite element method is proposed. The model allows effective and accurate description of low vibration bending modes taking into account the effects of coupling between flapwise and lead–lag modes of vibration transpiring due to the non-uniform distribution of twist angle in the blade geometry along its length. The identification of model parameters is carried out on the basis of modal data obtained by more detailed finite element simulations and subsequent adoption of the ‘DIRECT’ optimisation algorithm. Stable identification results were obtained using absolute deviations in frequencies and in modal displacements in the objective function and additional a priori information (boundedness and monotony) on the solution properties.

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Published

2019-01-13

How to Cite

Navadeh, N., Goroshko, I. O., Zhuk, Y. A., & Fallah, A. S. (2019). An FEM-based AI approach to model parameter identification for low vibration modes of wind turbine composite rotor blades. European Journal of Computational Mechanics, 26(5-6), 541–556. https://doi.org/10.1080/17797179.2017.1382317

Issue

Section

Original Article