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Analysis and Performance Evaluation of SDN Queue Model
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Lecture Notes in Computer Science · June 2017
DOI: 10.1007/978-3-319-61382-6_3
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Analysis and Performance Evaluation of SDN
Queue Model
Samuel Muhizi
1
,
Gregory Shamshin
1
, Ammar Muthanna
1
, Ruslan Kirichek
1,2(
✉
)
,
Andrei Vladyko
1
, and
Andrey Koucheryavy
1
1
The Bonch-Bruevich State University of Telecommunication, 22 Prospekt Bolshevikov,
St. Petersburg, Russia
2
Peoples’ Friendship University of Russia (RUDN University), 6 Miklukho-Maklaya Street,
Moscow, Russia
samno1@yandex.ru, reignsword@gmail.com, ammarexpress@gmail.com,
{kirichek,vladyko}@sut.ru, akouch@mail.ru
Abstract.
In this paper, we present an Openflow-SDN based network visuali‐
zation and performance evaluation model that helps in network designing and
planning to examine how networks’ performance will be affected as the traffic
loads and network utilization change. To achieve the aimed goal, as
a research
method, we used AnyLogic Multimethod simulation tool. This is a first of its kind
where SDN performance evaluation is based on queuing model simulation to
monitor change of average packet processing time for various network parame‐
ters. Using presented in this work SDN model, network administrators and plan‐
ners can better predict likely performance changes arising from traffic variation.
This allows them to make prompt decisions to prevent
seemingly small issues
from becoming major bottlenecks.