Swarm Intelligence Based Self-organizing QoS Framework for Ever-changing Future Networks

We consider a new QoS framework for a wide range of multimedia services in ever-changing networks where traffic is dynamic and network topologies frequently change. In this paper, for such networks, we propose a new self-organizing QoS framework called AntQoS, which is inspired by recent works on an...

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Veröffentlicht in:IEEE journal on selected areas in communications 2013-12, Vol.31 (12), p.735-749
Hauptverfasser: Kim, Young-Min, Lee, Eun-Jung, Jung, Boo-Geum, Kim, Hak-Suh, Park, Hea-Sook, Park, Hong-Shik
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container_issue 12
container_start_page 735
container_title IEEE journal on selected areas in communications
container_volume 31
creator Kim, Young-Min
Lee, Eun-Jung
Jung, Boo-Geum
Kim, Hak-Suh
Park, Hea-Sook
Park, Hong-Shik
description We consider a new QoS framework for a wide range of multimedia services in ever-changing networks where traffic is dynamic and network topologies frequently change. In this paper, for such networks, we propose a new self-organizing QoS framework called AntQoS, which is inspired by recent works on ant colony optimization. Compared with previous QoS frameworks, AntQoS provides two quite promising capabilities: 1) the self-organized network QoS (not pre-defined QoS), which autonomously reconfigures itself by promptly adapting to changing network environments such as sudden arrivals of highly bursty traffic, and 2) the self-organized network controls, which autonomously resolve the network congestion and intrinsically resist the multiple network failures. These two promising capabilities enable the proposed AntQoS framework to efficiently and reliably support a wide range of multimedia services with various quality demands. Especially, these capabilities are provided by making use of swarm intelligence of artificial ants without any supervised control. For this purpose, AntQoS employs one single artificial ant colony on an ever-changing network; a number of artificial ants in the employed colony explore network and measure or gather the status information about the networks. Based on the gathered information, AntQoS organizes and maintains a small number of virtual sub colonies named QoS colonies. The QoS colony is an intelligent virtual colony to be capable of searching the path which guarantees the given quality demands of flows. In addition, it is autonomously generated, maintained, and deleted for promptly adapting to the ever-changing network status. Simulation results demonstrate that AntQoS successfully supports various multimedia services with diverse delay requirements while increasing the network throughput by approximately 20% compared to the well-known IntServ frameworks. Simulation results also show that AntQoS autonomously redistributes the congested traffic and resists the unexpected network failures.
doi_str_mv 10.1109/JSAC.2013.SUP2.1213006
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subjects Admission control
ant colony optimization
Bandwidth
Colonies
Computer networks
Delays
Demand
Diffserv networks
ever-changing networks
Failure
Insects
Multimedia
Multimedia communication
Network topologies
Network topology
Networks
QoS colony
Resists
self-organizing QoS framework
Swarm intelligence
Traffic congestion
Traffic engineering
Traffic flow
title Swarm Intelligence Based Self-organizing QoS Framework for Ever-changing Future Networks
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