Development of Network Training Complexes Using Fuzzy Models and Noise-Resistant Coding

A. Gladkikh, A. K. Volkov, A. Volkov, N. Andriyanov, S. V. Shakhtanov
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引用次数: 1

Abstract

In this paper, an analysis of world experience was conducted and it was concluded 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 assessing the competence of aviation security screeners was proposed and tested, allowing taking into account the parameters of oculomotor activity and heart rate variability of test aviation security screeners, and differing from the existing approaches by using fuzzy classification models. According to the results of an experimental study, three different models were synthesized. The results of the comparison showed that the Sugeno model, trained using the ANFIS-algorithm, is more accurate than the Mamdani model and the linear regression model depends on the competence assessment of aviation security screeners. It described ways of addressing the important task of obtaining more precise relevant digital data in network training complexes using noise-resistant coding tools. It presented a model of a permutation decoder of a non-binary redundant code based on a lexicographic cognitive map. This model of a redundant code decoder uses cognitive data processing methods for completing permutation decoding procedures in order to protect remote control commands from the influence of destructive factors on the control process.
基于模糊模型和抗噪声编码的网络训练复合体的开发
在本文中,对世界经验进行了分析,并得出结论,提高俄罗斯联邦航空安全效率的方法之一是使用现代网络训练综合体。提出并测试了一种新的航空安检人员能力评估方法,该方法考虑了测试航空安检人员的动眼肌活动和心率变异性参数,并使用模糊分类模型与现有方法进行了区别。根据实验研究结果,综合了三种不同的模型。对比结果表明,使用anfiss算法训练的Sugeno模型比Mamdani模型更准确,线性回归模型依赖于航空安检人员的能力评估。它描述了使用抗噪声编码工具解决在网络训练复合体中获得更精确的相关数字数据的重要任务的方法。提出了一种基于词典学认知图的非二进制冗余码排列解码器模型。该冗余码解码器模型采用认知数据处理方法完成排列解码过程,以保护远程控制命令不受破坏性因素对控制过程的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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