Litcius/Paper detail

Queue Management Algorithm for Satellite Networks Based on Traffic Prediction

Yuxia Bie, Zhihan Li, Hu Zhi, Jiamei Chen

2022IEEE Access17 citationsDOIOpen Access PDF

Abstract

In connexion with the effect of the self-similar characteristic of satellite network service traffic on queueing performance, a prediction model with optimised triple exponential smoothing is first established in this paper. This model performs network traffic prediction based on the dynamic triple exponential smoothing model and optimises the smoothing coefficient of the model through the differential evolution algorithm; a cubic function based on traffic prediction is further proposed to improve the adaptive random early detection (ARED) queue management algorithm. Based on the network traffic prediction results and the ARED, this algorithm uses the cubic function to perform nonlinear processing on the packet drop probability function. The simulation results show that the prediction model with optimised triple exponential smoothing has a high prediction accuracy, and the improved ARED algorithm based on the cubic function of traffic prediction in the presence of data bursts in self-similar traffic. It can effectively reduce the packet loss rate and improve the throughput, so as to better control the network congestion caused by self-similar traffic in satellite network.

Topics & Concepts

Exponential smoothingComputer scienceAlgorithmSmoothingRandom early detectionTraffic generation modelQueueNetwork traffic simulationNetwork congestionNetwork traffic controlNetwork packetReal-time computingActive queue managementComputer networkComputer visionNetwork Traffic and Congestion ControlSoftware System Performance and ReliabilitySoftware-Defined Networks and 5G
Queue Management Algorithm for Satellite Networks Based on Traffic Prediction | Litcius