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Journal Electromagnetic Waves and Electronic Systems №3 for 2020 г.
Article in number:
Features of forming the algorithm of information processing system based on empirical data
DOI: 10.18127/j15604128-202003-06
UDC: 621.396
Authors:

K.P. Masyukov – Ph.D. (Eng.), Associate Professor,
82 of the Department, Military Space Academy n. a. A.F. Mozhaisky (St.-Petersburg)
E-mail: konstanmasuykov@rambler.ru
D.Yu. Konovalov – Ph.D. (Eng.), Lecturer, 
Military Space Academy n.a. A.F. Mozhaisky (St.-Petersburg)
E-mail: duk2103@rambler.ru
S.V. Kulikov – Ph.D. (Eng.), Senior Lecturer, 
Military Space Academy n.a. A.F. Mozhaisky (St.-Petersburg) E-mail: Kulich-52@mail.ru

Abstract:

At present, the degree of reliability automatically or automatically, of the tasks solved by the radio-technical means, is determined by a combination of factors, the main of which are the value of the experimental design and production potential, investment and manufacturability. The continuously increasing machine intellectualization of control processes also determines the further automation of direct control of the target application, which will allow maintaining the required level of functional state, since automatic control most effectively implements the level of potential reliability of the RES.
Evaluation of the effectiveness of the targeted use of RES with comprehensive reliability indicators is complemented by the most important indicator of the functional availability optimality. The problem consists in the mismatch of the substantiation of the parameters for processing information about the functional state using well-known mathematical models, which are for the most part not very suitable for practical calculations in relation to RES. They either do not quite correspond to the real conditions of the model of the process of changing the functional state of the samples upon target application, or the problem is solved by the usual statistical processing of data with fixing an a posteriori result. The urgent task is to take into account practically significant factors that adequately reflect the processes of changing the functional state and approximate the construction of an optimal system for processing technical information and functional readiness of RES kits.
The aim of the work was to substantiate the basic model and algorithm for changing the functional state based not only on current, but also on the predicted statistical and parametric indicators of the technical state of the RES.
A way of forming an algorithm of functioning regulated on a cycle, but with parameters varying depending on the functional state, is proposed. Moreover, the cycle of technical processing refers to a limited set of types of preventive work of individual elements and the entire sample as a whole, limited by rigid time frames.
Practical significance lies in the development, based on a model of the algorithm, adequately reflecting the processes of changing the functional state of the RES, based not only on the reliability indicators and technical parameters known in advance, but also changing in the process of targeted use, as well as allowing to calculate the parameters of the control actions, rational the timing of preventive measures that provide the required level of readiness of the RES for operation.

Pages: 57-64
For citation

Masyukov K.P., Konovalov D.Yu., Kulikov S.V. Features of forming the algorithm of the information processing system based on empirical data. Electromagnetic waves and electronic systems. 2020. V. 25. № 3. P. 57−[1]. DOI: 10.18127/j15604128-202003-06 (in Russian).

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Date of receipt: 2 апреля 2020 г.