Self-similar network traffic using Successive Random Addition (SRA) algorithm / Hani Hamira Harun

Self-similar traffic has an underlying dependence structure which exhibits long-range dependence. This is in contrast to classical traffic models, such as Poisson, which exhibit short-range dependence. Self-similar traffic may also exhibit short-range dependence, but this is on its own insufficie...

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Main Author: Harun, Hani Hamira
Format: Thesis
Language:English
Published: 2006
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Online Access:https://ir.uitm.edu.my/id/eprint/850/1/TB_HANI%20HAMIRA%20HARUN%20%20CS%2006_5%20P01.pdf
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spelling my-uitm-ir.8502018-10-30T02:25:56Z Self-similar network traffic using Successive Random Addition (SRA) algorithm / Hani Hamira Harun 2006 Harun, Hani Hamira Electronic Computers. Computer Science Self-similar traffic has an underlying dependence structure which exhibits long-range dependence. This is in contrast to classical traffic models, such as Poisson, which exhibit short-range dependence. Self-similar traffic may also exhibit short-range dependence, but this is on its own insufficient to accurately parametric the traffic. Studying self-similar traffic requires models for analytical work and generators for simulation. Having generating algorithms that close to reflect real traffic is important as they allow us to perform simulations that are similar to the real network traffic. Without this, the results from simulations would not accurately reflect the results that would be expected in the real world. In this project, we have used the Successive random algorithm (SRA). Then, we have decided to use Variance time plot and R/S statistics as our statistical analysis tools. We have test the sample path between 0.5<H<1. After we test on the SRA algorithm, we found that the results are not accurate. But compares to RMD, the SRA samples result be more accurate. In term data generation, SRA be slower than dFGN. COPYRIGHT 2006 Thesis https://ir.uitm.edu.my/id/eprint/850/ https://ir.uitm.edu.my/id/eprint/850/1/TB_HANI%20HAMIRA%20HARUN%20%20CS%2006_5%20P01.pdf text en public degree Universiti Teknologi MARA Faculty of Information Technology and Quantitative Science
institution Universiti Teknologi MARA
collection UiTM Institutional Repository
language English
topic Electronic Computers
Computer Science
spellingShingle Electronic Computers
Computer Science
Harun, Hani Hamira
Self-similar network traffic using Successive Random Addition (SRA) algorithm / Hani Hamira Harun
description Self-similar traffic has an underlying dependence structure which exhibits long-range dependence. This is in contrast to classical traffic models, such as Poisson, which exhibit short-range dependence. Self-similar traffic may also exhibit short-range dependence, but this is on its own insufficient to accurately parametric the traffic. Studying self-similar traffic requires models for analytical work and generators for simulation. Having generating algorithms that close to reflect real traffic is important as they allow us to perform simulations that are similar to the real network traffic. Without this, the results from simulations would not accurately reflect the results that would be expected in the real world. In this project, we have used the Successive random algorithm (SRA). Then, we have decided to use Variance time plot and R/S statistics as our statistical analysis tools. We have test the sample path between 0.5<H<1. After we test on the SRA algorithm, we found that the results are not accurate. But compares to RMD, the SRA samples result be more accurate. In term data generation, SRA be slower than dFGN. COPYRIGHT
format Thesis
qualification_level Bachelor degree
author Harun, Hani Hamira
author_facet Harun, Hani Hamira
author_sort Harun, Hani Hamira
title Self-similar network traffic using Successive Random Addition (SRA) algorithm / Hani Hamira Harun
title_short Self-similar network traffic using Successive Random Addition (SRA) algorithm / Hani Hamira Harun
title_full Self-similar network traffic using Successive Random Addition (SRA) algorithm / Hani Hamira Harun
title_fullStr Self-similar network traffic using Successive Random Addition (SRA) algorithm / Hani Hamira Harun
title_full_unstemmed Self-similar network traffic using Successive Random Addition (SRA) algorithm / Hani Hamira Harun
title_sort self-similar network traffic using successive random addition (sra) algorithm / hani hamira harun
granting_institution Universiti Teknologi MARA
granting_department Faculty of Information Technology and Quantitative Science
publishDate 2006
url https://ir.uitm.edu.my/id/eprint/850/1/TB_HANI%20HAMIRA%20HARUN%20%20CS%2006_5%20P01.pdf
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