INTELECTUAL APPROACH TO THE DESIGN OF WIND ENERGY PLANT ROTOR PARAMETERS

Authors

  • V. M. Sineglazov National Aviation University, Kyiv
  • S. A. Khok National Aviation University, Kyiv

DOI:

https://doi.org/10.18372/1990-5548.58.13514

Keywords:

Vertical-axis rotor, genetic algorithm, wind turbine optimization

Abstract

It is considered a wind power plant rotor design problem for a rotor with vertical axis of rotation. It is proposed an approarch of efficiency improvement by combined rotor design, consisting of some basic rotors (Darrieus rotors) and some booster rotors (Savonius rotors), with further combined rotor structural parametric synthesis problem solution. This task represents the conditional multicriteria optimization problem, for solution of which it is proposed to use the modificated SPEA2 genetic algorithm. It’s proposed procedure of the fitness function construction. The given purpose is supplied with help of computer-aided design system.

Author Biographies

V. M. Sineglazov, National Aviation University, Kyiv

Aviation Computer-Integrated Complexes Department, Education & Scientific Institute of Information-Diagnostics Systems

Doctor of Engineering Science. Professor. Head of the Department

S. A. Khok, National Aviation University, Kyiv

Aviation Computer-Integrated Complexes Department, Education & Scientific Institute of Information-Diagnostics Systems

Master

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Section

COMPUTER-AIDED DESIGN SYSTEMS