Partial criteria system of estimation of pilot preparedness level before simulator training

Authors

  • V. M. Syneglazov National Aviation University
  • V. O. Glukhov National Aviation University

DOI:

https://doi.org/10.18372/1990-5548.48.11217

Keywords:

Partial criterion, automated system of helicopter pilots simulator training, effectiveness criterion, aviation simulator

Abstract

The paper deals with partial criteria system of estimation of pilot preparedness level beforesimulator training that allow to evaluate the ability to perform operations of helicopter control by thepilot. Presented the formalized problem statement, which includes the effectiveness criteria of training onthe simulator. Provided the algorithm of of pilot preparedness evaluation on the basis of partial criteria.Presented a comparative analysis of calculation results of pilot preparedness level evaluation by thisalgorithm. The proposed approach provides optimal distribution of trainingload for the pilot based on hisexecutive preparedness

Author Biographies

V. M. Syneglazov, National Aviation University

Doctor of Engineering. Professor. Educational-Scientific Institute of information-diagnostic systems

V. O. Glukhov, National Aviation University

Bachelor. Education-Scientific Institute of Information-Diagnostics Systems

References

D. I. Batishchev, Genetic algorithms for solving extreme problems. A manual, Voronezh: Voronezh State Technical University, 1995, 69 p.

B. S. Bloom, The sigma Problem: The Search for Methods of Group Instruction as Effective as One-to-One Tutoring. Education Researcher. 1984, no. 13, 3 p.

R. R. Burton, and J. Brown, “Toward a naturallanguage capability for computer- assisted instruction”. Procedures for instructional system development, Edited by H. F. O' Neil, New York: Academic, 1979, 273 p.

A. Collins, and A. L. Stevens, Goals and strategies of interactive teachers, Advances in instructional psychology, Edited R. Glaser, Hillsdale, NJ: Erlbaum, 1980, 127 p.

W. G. Dahlstrom, and G. S. Welsh, An MMPI handbook. Minneapolis, 1963.

J. H. Holland, Adaptation in natural and artificial systems. An introductory analysis with application to biology, control and artificial intelligence. London: Bradford book edition, 1994, 211 p.

S. A. Isaev, Popularly about the Genetic Algorithms. URL: http://saisa.chat.m/ga/ga-pop.html#top

V. M. Sineglazov and Ju. M. Shmelev, “Estimation of helicopter pilots training efficiency in the simulator”. Electronics and Control Systems, no. 4(38), Kyiv, NAU, pp. 104–107, 2013.

V. M. Sineglazov and Ju. M. Shmelev, “Improving the efficiency of helicopter pilots training in the simulator”. Electronics and Control Systems, no. 3(37), Kyiv, NAU, pp. 120–123, 2013.

V. M. Sineglazov and Ju. M. Shmelev. “Simulator training optimization”. Electronics and Control Systems, no. 1(39), Kyiv, NAU, pp. 63–66, 2014.

A. Starikov, BaseGroup Labs. Genetic algorithms - mathematical apparatus. URL: http://vyww.basegroup.ru/genetic/rnath.htrri.

Downloads

Issue

Section

TRANSPORT SYSTEMS