Keywords: traffic distribution, infocommunication networks, tensor analysis of networks, special-use network, mean time delay
The traffic distribution model of the multilevel infocommunication network of special-use.
UDC 621.391
DOI: 10.26102/2310-6018/2021.32.1.024
Infocommunication networks provide the base structure for analysis, processing and transmission of information. Main principles networking and infocommunication networks technologies is independent from type of destination. Therefore, infocommunication networks can be used for dual-use (civil and military purposes). In any case, traffic distribution analysis of infocommunication networks allows to estimate a quality of service of information streams for providing such properties of special-use infocommunication networks as: timeliness of information delivery, promptness, sustainability and continuity of communication. Application of different types of modelling to traffic distribution analysis provides ample opportunities for estimation of infocommunication networks projects under development that it increases the level of practical feasibility of these projects. In this work the tensor analysis of networks is used for modelling of traffic distribution in special-use infocommunication network. The investigated object is the multilevel infocommunication network with several levels: the level of gathering information, the aggregation level, the level of preliminary processing, the level of information centers. The mesh and node tensor models are used for the estimation of mean delay of networks routes. The joint application of two methods of tensor modelling allows to formalize the process of estimation mean delay for set of network routes. In result, the routes with maximal mean delay were determined for infocommunication network of special-use and the conclusion was made about necessity of optimization of traffic distribution to reduce time delay.
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Keywords: traffic distribution, infocommunication networks, tensor analysis of networks, special-use network, mean time delay
For citation: Morozov A.V., Ponomarev D.Y. The traffic distribution model of the multilevel infocommunication network of special-use.. Modeling, Optimization and Information Technology. 2021;9(1). URL: https://moitvivt.ru/ru/journal/pdf?id=899 DOI: 10.26102/2310-6018/2021.32.1.024 (In Russ).
Published 31.03.2021