Development of the method to control telecommunication network congestion based on a neural model

Abstract

<p>The circuit of congestion control using feedback by the sign of function of sensitivity to telecommunications network performance was considered. To determine a given function, the use of a simple neural network model of a dynamic system was proposed. Control over the existence or a threat of congestion is executed based on the analysis of the length of a queue at the side of information receiver. To analyze the system, the cost function was determined as the objective function of congestion existence. The proposed algorithm of optimal control ensures the formation of a control signal in such a way that the system output should maximally match the pre-established features – the key indicators for network efficiency. The congestion control circuit with the feedback based on the sign of sensitivity of the function of system performance was developed. The sign of performance sensitivity provides an optimal direction to configure the data source rate.</p><p>The neural model for a multi-step prediction of the state of the queue at the side of the telecommunication network receiver was proposed. If the neural network is configured to monitor the dynamics of the system and shows that the quadratic error is negligible, it is believed that the executed step corresponds to the system output, predicted in advance.</p><p>The algorithm of additive increase/multiple decrease, which determines the change of the data source rate, depending on the sign of function of sensitivity of performance indicator was proposed. This algorithm is an alternative system of congestion prediction and flow control based on the threshold queue filling.</p><p>A comparative analysis of the effectiveness of controlling circuits for congestion detection based on queues and on the function of sensitivity of telecommunication network performance was performed. It was shown that the magnitude of the queue and fluctuation in the source rate is smaller than that for the queue-based circuit.</p>Results from modeling the performance of the proposed circuit show that the circuit based on a sensitivity function has better key performance indicators in comparison with the conventional circuit of queue threshold selection

Authors and Affiliations

Nikolay Vinogradov, Mikhailo Stepanov, Yaroslav Toroshanko, Vyacheslav Cherevyk, Alina Savchenko, Valerii Hladkykh, Oleksandr Toroshanko, Tetiana Uvarova

Keywords

Related Articles

Forecasting the estimated time of arrival for a cargo dispatch delivered by a freight train along a railway section

<p>This paper reports a method for predicting the expected time of arrival (ETA) of a cargo dispatch taking into consideration determining the duration at which a freight train travels along a railroad section where trai...

Research into cavitation processes in the trapped volume of the gear pump

<p class="1CxSpFirst">We investigated processes in the trapped volume of the gear pump, formed due to the peculiarities in the geometry of the involute gearing characteristic of the pumps of a given type. In the fluid co...

Improvement of the design of hydraulic transport devices for the transport of hydroabrasive media in the enrichment industry

<p>Hydrotransport equipment of mining and processing plants has low operational reliability, insufficient service life due to intense hydroabrasive wear of the working surfaces of pipelines and pumping equipment, design...

Construction and analysis of the model for stochastic optimization of inventory management at a ship repair yard

<p>A stochastic model of work of inventory management system at a ship repair yard (SRY) has been developed. In order to account for factors related to uncertainties and risks (random moments of arrival of ships at SRY,...

Studying the influence of production conditions on the content of operations in logistic systems of milk collection

<p>The algorithm of coordination of the content and time of operations execution in logistic systems of milk collection with manufacturing conditions was developed. The appropriateness of execution of eleven management o...

Download PDF file
  • EP ID EP666327
  • DOI 10.15587/1729-4061.2019.164087
  • Views 46
  • Downloads 0

How To Cite

Nikolay Vinogradov, Mikhailo Stepanov, Yaroslav Toroshanko, Vyacheslav Cherevyk, Alina Savchenko, Valerii Hladkykh, Oleksandr Toroshanko, Tetiana Uvarova (2019). Development of the method to control telecommunication network congestion based on a neural model. Восточно-Европейский журнал передовых технологий, 2(9), 67-73. https://europub.co.uk/articles/-A-666327