A hybrid queueing model for fast broadband networking simulation

This research focuses on the investigation of a fast simulation method for broadband telecommunication networks, such as ATM networks and IP networks. As a result of this research, a hybrid simulation model is proposed, which combines the analytical modelling and event-driven simulation modelling to...

Full description

Bibliographic Details
Main Author: Liu, Enjie
Published: Queen Mary, University of London 2002
Subjects:
621
Online Access:https://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.252190
id ndltd-bl.uk-oai-ethos.bl.uk-252190
record_format oai_dc
spelling ndltd-bl.uk-oai-ethos.bl.uk-2521902019-02-27T03:23:06ZA hybrid queueing model for fast broadband networking simulationLiu, Enjie2002This research focuses on the investigation of a fast simulation method for broadband telecommunication networks, such as ATM networks and IP networks. As a result of this research, a hybrid simulation model is proposed, which combines the analytical modelling and event-driven simulation modelling to speeding up the overall simulation. The division between foreground and background traffic and the way of dealing with these different types of traffic to achieve improvement in simulation time is the major contribution reported in this thesis. Background traffic is present to ensure that proper buffering behaviour is included during the course of the simulation experiments, but only the foreground traffic of interest is simulated, unlike traditional simulation techniques. Foreground and background traffic are dealt with in a different way. To avoid the need for extra events on the event list, and the processing overhead, associated with the background traffic, the novel technique investigated in this research is to remove the background traffic completely, adjusting the service time of the queues for the background traffic to compensate (in most cases, the service time for the foreground traffic will increase). By removing the background traffic from the event-driven simulator the number of cell processing events dealt with is reduced drastically. Validation of this approach shows that, overall, the method works well, but the simulation using this method does have some differences compared with experimental results on a testbed. The reason for this is mainly because of the assumptions behind the analytical model that make the modelling tractable. Hence, the analytical model needs to be adjusted. This is done by having a neural network trained to learn the relationship between the input traffic parameters and the output difference between the proposed model and the testbed. Following this training, simulations can be run using the output of the neural network to adjust the analytical model for those particular traffic conditions. The approach is applied to cell scale and burst scale queueing to simulate an ATM switch, and it is also used to simulate an IP router. In all the applications, the method ensures a fast simulation as well as an accurate result.621Electronic EngineeringQueen Mary, University of Londonhttps://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.252190http://qmro.qmul.ac.uk/xmlui/handle/123456789/3815Electronic Thesis or Dissertation
collection NDLTD
sources NDLTD
topic 621
Electronic Engineering
spellingShingle 621
Electronic Engineering
Liu, Enjie
A hybrid queueing model for fast broadband networking simulation
description This research focuses on the investigation of a fast simulation method for broadband telecommunication networks, such as ATM networks and IP networks. As a result of this research, a hybrid simulation model is proposed, which combines the analytical modelling and event-driven simulation modelling to speeding up the overall simulation. The division between foreground and background traffic and the way of dealing with these different types of traffic to achieve improvement in simulation time is the major contribution reported in this thesis. Background traffic is present to ensure that proper buffering behaviour is included during the course of the simulation experiments, but only the foreground traffic of interest is simulated, unlike traditional simulation techniques. Foreground and background traffic are dealt with in a different way. To avoid the need for extra events on the event list, and the processing overhead, associated with the background traffic, the novel technique investigated in this research is to remove the background traffic completely, adjusting the service time of the queues for the background traffic to compensate (in most cases, the service time for the foreground traffic will increase). By removing the background traffic from the event-driven simulator the number of cell processing events dealt with is reduced drastically. Validation of this approach shows that, overall, the method works well, but the simulation using this method does have some differences compared with experimental results on a testbed. The reason for this is mainly because of the assumptions behind the analytical model that make the modelling tractable. Hence, the analytical model needs to be adjusted. This is done by having a neural network trained to learn the relationship between the input traffic parameters and the output difference between the proposed model and the testbed. Following this training, simulations can be run using the output of the neural network to adjust the analytical model for those particular traffic conditions. The approach is applied to cell scale and burst scale queueing to simulate an ATM switch, and it is also used to simulate an IP router. In all the applications, the method ensures a fast simulation as well as an accurate result.
author Liu, Enjie
author_facet Liu, Enjie
author_sort Liu, Enjie
title A hybrid queueing model for fast broadband networking simulation
title_short A hybrid queueing model for fast broadband networking simulation
title_full A hybrid queueing model for fast broadband networking simulation
title_fullStr A hybrid queueing model for fast broadband networking simulation
title_full_unstemmed A hybrid queueing model for fast broadband networking simulation
title_sort hybrid queueing model for fast broadband networking simulation
publisher Queen Mary, University of London
publishDate 2002
url https://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.252190
work_keys_str_mv AT liuenjie ahybridqueueingmodelforfastbroadbandnetworkingsimulation
AT liuenjie hybridqueueingmodelforfastbroadbandnetworkingsimulation
_version_ 1718983645692166144