INTELLIGENT SYSTEM OF HELICOPTER PILOTS SIMULATOR TRAINING

Authors

  • V. M. Sineglazov National Aviation University, Kyiv
  • V. O. Glukhov National Aviation University, Kyiv

DOI:

https://doi.org/10.18372/1990-5548.54.12325

Keywords:

Simulator training, intelligent system, artificial neural network, knowledge base

Abstract

The construction of an intelligent training system for helicopter pilots is under consideration. In the article the structural scheme of the simulator is developed, which includes the intellectual part that implements the process of selection of pilots, the adaptation of training assignments to the individual characteristics of the pilots, with the calculation of optimal training times and the number of repetitions of tasks, with the goal of forming stable helicopter control skills and knowledge control. Creation of tasks is carried out based on the usage of knowledge bases. As intellectual elements, artificial neural networks are used, in particular, a multi-layer perseptron and a Kohonen networks. The learning algorithm for Kohonen networks is given. To calculate the optimal training time and the number of repetitions of individual skills, mathematical models of the learning process have been developed.

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

V. O. Glukhov, National Aviation University, Kyiv

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

Bachelor

References

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https://Neuronus.com/theory/961-nejronnye-seti-kokhonena.html

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TRANSPORT SYSTEMS