The development of advanced network simulators for air transport by using fuzzy models and noise-resistant coding

The article analyzes foreign experience and concludes that one of the ways to improve the efficiency of aviation security in the Russian Federation is to use modern network training complexes. A new approach to the assessment of the competence of the aviation security screeners was proposed and test...

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Main Authors: A. A. Gladkih, L. G. Bolshedvorskaya, An. K. Volkov, Al. K. Volkov
Format: Article
Language:Russian
Published: Moscow State Technical University of Civil Aviation 2019-12-01
Series:Научный вестник МГТУ ГА
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Online Access:https://avia.mstuca.ru/jour/article/view/1616
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author A. A. Gladkih
L. G. Bolshedvorskaya
An. K. Volkov
Al. K. Volkov
author_facet A. A. Gladkih
L. G. Bolshedvorskaya
An. K. Volkov
Al. K. Volkov
author_sort A. A. Gladkih
collection DOAJ
description The article analyzes foreign experience and concludes that one of the ways to improve the efficiency of aviation security in the Russian Federation is to use modern network training complexes. A new approach to the assessment of the competence of the aviation security screeners was proposed and tested, that allows to take into account the parameters of the oculomotor activity and heart rate variability of the aviation security screeners being tested, different from the existing approaches using fuzzy classification models. The eye-tracking technology and the device of psychophysiological testing UPFT-1/30 "Psychophysiologist" were used as instruments of psychophysiological monitoring. The basics of automatic generation of fuzzy models such as Sugeno and Mamdani from experimental data are presented. Experimental studies were conducted on the basis of the Ulyanovsk Civil Aviation Institute. The results of the comparison of the generated models showed that the Sugeno model trained with the use of ANFIS-algorithm is more accurate than the Mamdani model and the linear regression model identifies the dependence being studied, according to the competence of aviation security screeners. As a criterion of quality of models on training and test data the average square error is used. The actual problem of choosing an effective concept of noise-resistant coding in the telecommunication component of advanced training complexes is substantiated. The ways of solving the important problem of increasing the reliability of actual digital data in network training complexes based on the use of noise-resistant coding are described. A model of permutation decoder of non-binary redundant code based on lexicographic cognitive map is presented. This model of redundant code decoder uses methods of cognitive data processing in the implementation of the procedure of permutation decoding to effectively protect remote control commands from the influence of destructive factors on the control process.
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spelling doaj-art-2d4a89f7c64a406d8c7cde211c72ee572025-08-20T03:23:19ZrusMoscow State Technical University of Civil AviationНаучный вестник МГТУ ГА2079-06192542-01192019-12-01226294310.26467/2079-0619-2019-22-6-29-431327The development of advanced network simulators for air transport by using fuzzy models and noise-resistant codingA. A. Gladkih0L. G. Bolshedvorskaya1An. K. Volkov2Al. K. Volkov3Ulyanovsk Civil Aviation InstituteMoscow State Technical University of Civil AviationUlyanovsk Civil Aviation InstituteUlyanovsk Civil Aviation InstituteThe article analyzes foreign experience and concludes that one of the ways to improve the efficiency of aviation security in the Russian Federation is to use modern network training complexes. A new approach to the assessment of the competence of the aviation security screeners was proposed and tested, that allows to take into account the parameters of the oculomotor activity and heart rate variability of the aviation security screeners being tested, different from the existing approaches using fuzzy classification models. The eye-tracking technology and the device of psychophysiological testing UPFT-1/30 "Psychophysiologist" were used as instruments of psychophysiological monitoring. The basics of automatic generation of fuzzy models such as Sugeno and Mamdani from experimental data are presented. Experimental studies were conducted on the basis of the Ulyanovsk Civil Aviation Institute. The results of the comparison of the generated models showed that the Sugeno model trained with the use of ANFIS-algorithm is more accurate than the Mamdani model and the linear regression model identifies the dependence being studied, according to the competence of aviation security screeners. As a criterion of quality of models on training and test data the average square error is used. The actual problem of choosing an effective concept of noise-resistant coding in the telecommunication component of advanced training complexes is substantiated. The ways of solving the important problem of increasing the reliability of actual digital data in network training complexes based on the use of noise-resistant coding are described. A model of permutation decoder of non-binary redundant code based on lexicographic cognitive map is presented. This model of redundant code decoder uses methods of cognitive data processing in the implementation of the procedure of permutation decoding to effectively protect remote control commands from the influence of destructive factors on the control process.https://avia.mstuca.ru/jour/article/view/1616aviation security screenersimulator trainingeye-tracking technologyfuzzy modelsanfis-algorithmsubtractive clusteringnetwork technologiesnoise-resistant coding
spellingShingle A. A. Gladkih
L. G. Bolshedvorskaya
An. K. Volkov
Al. K. Volkov
The development of advanced network simulators for air transport by using fuzzy models and noise-resistant coding
Научный вестник МГТУ ГА
aviation security screener
simulator training
eye-tracking technology
fuzzy models
anfis-algorithm
subtractive clustering
network technologies
noise-resistant coding
title The development of advanced network simulators for air transport by using fuzzy models and noise-resistant coding
title_full The development of advanced network simulators for air transport by using fuzzy models and noise-resistant coding
title_fullStr The development of advanced network simulators for air transport by using fuzzy models and noise-resistant coding
title_full_unstemmed The development of advanced network simulators for air transport by using fuzzy models and noise-resistant coding
title_short The development of advanced network simulators for air transport by using fuzzy models and noise-resistant coding
title_sort development of advanced network simulators for air transport by using fuzzy models and noise resistant coding
topic aviation security screener
simulator training
eye-tracking technology
fuzzy models
anfis-algorithm
subtractive clustering
network technologies
noise-resistant coding
url https://avia.mstuca.ru/jour/article/view/1616
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