Development of an algorithm for constructing selforganizing models in an intelligent aircraft control system
Authors: Volkova D.S., Munkhuu Ch., Khudoyarov V.A.  
Published in issue: #6(35)/2019  
DOI: 10.18698/2541800920196486  
Category: Instrument Engineering, Metrology, InformationMeasuring Instruments and Systems  Chapter: Instruments and Measuring Methods 

Keywords: selforganization method, intelligent control systems, navigation systems, predictive mathematical models, control model design algorithms, control of technical systems, control correction, prediction accuracy 

Published: 06.06.2019 
This article presents the intellectual algorithm for constructing predictive mathematical models using the method of selforganization, which is the main algorithm in the modern intellectual control system based on the theory of functional systems. To overcome the shortcomings of the traditional method of selforganization, the implementation of which requires formidable computational resources, a modified predictive algorithm is proposed, combining the DeMark trend and the method of selforganization. Based on the modified algorithm, predictive models of navigation system inaccuracies are constructed. The results of mathematical modeling of predicting inaccuracies in navigation systems have demonstrated the simplicity, speed and increased accuracy of the developed algorithm for constructing predictive models in an intelligent aircraft control system.
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