Article 2116

Title of the article

METHODOLOGY OF BUILDING ADAPTIVE ALGORITHMS FOR DATA PROCESSING BY MOVING GROUND OBJECT SENSORY DEVICES (PART 2. Data processing methods for adaptive sensory devices) 

Authors

Mitrohin Maksim Aleksandrovich, Candidate of engineering sciences, associate professor, sub-department autonomous information and control systems, Penza State University (40 Krasnaya street, Penza, Russia), aius@pnzgu.ru

Index UDK

004.93::004.942

Abstract

Background. The research object is adaptive devices for sensing moving ground objects. The research subject is the methods of building adaptive data processing algorithms. The aim of the work is to develop the methods being the basis of the moving ground object adaptive sensory devices building methodology.
Materials and methods. The research was carried out using the method of time series prediction and image recognition.
Results. The author has suggested data processing methods to be used in creation of adaptive sensory devices. The efficiency thereof has been proved by experimental data.
Conclusions. The suggested methods of data processing in the structure of the moving ground object adaptice sensory devices building methodology can be used in development of the new and modernization of the existing sensory devices in order to improve efficiency thereof when operating under the influence of changing external factors.

Key words

sensory device, decision rule, prediction

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Дата создания: 01.07.2016 09:08
Дата обновления: 01.07.2016 09:29