Title
GA-PSO-OPTIMIZED NEURAL-BASED CONTROL SCHEME FOR ADAPTIVE CONGESTION CONTROL TO IMPROVE PERFORMANCE IN MULTIMEDIA APPLICATIONS
Abstract
Active queue control aims to improve the overall communication network throughput while providing lower delay and small packet loss rate. The basic idea is to actively trigger packet dropping (or marking provided by explicit congestion notification (ECN)) before buffer overflow. In this paper, two artificial neural networks (ANN)-based control schemes are proposed for adaptive queue control in TCP communication networks. The structure of these controllers is optimized using genetic algorithm (GA) and the output weights of ANNs are optimized using particle swarm optimization (PSO) algorithm. The controllers are radial bias function (RBF)-based, but to improve the robustness of RBF controller, an error-integral term is added to RBF equation in the second scheme. Experimental results show that GA- PSO-optimized improved RBF (I-RBF) model controls network congestion effectively in terms of link utilization with a low packet loss rate and outperform Drop Tail, proportional-integral (PI), random exponential marking (REM), and adaptive random early detection (ARED) controllers.
Year
Venue
Keywords
2017
Majlesi Journal of Electrical Engineering
neural network,optimization,communication network,adaptive control,queue
Field
DocType
Volume
Random early detection,Particle swarm optimization,Control theory,Control theory,Computer science,Active queue management,Network packet,Network congestion,Throughput,Explicit Congestion Notification
Journal
abs/1711.06317
Issue
ISSN
Citations 
1
Majlesi Journal of Electrical Engineering, [S.l.], v. 6, n. 1, jan. 2012
0
PageRank 
References 
Authors
0.34
29
3
Name
Order
Citations
PageRank
M. Sheikhan1121.63
hemmati ehasn200.34
R. Shahnazi3211.65