Comparison of Effective Bandwidth Estimation Methods for Data Networks

Article ID

CSTNWS6V6HO

Efficient bandwidth estimation techniques for improving data network performance and reliability.

Comparison of Effective Bandwidth Estimation Methods for Data Networks

José Bavio
José Bavio
Carina Fernández
Carina Fernández
Beatriz Marrón
Beatriz Marrón
DOI

Abstract

Abstract-The purpose of this work is to apply techniques to estimate the Effective Bandwidth, from traffic traces, for the Generalized Markov Fluid Model in data networks. This model is assumed because it is versatile in describing traffic fluctuations. The concept of Effective Bandwidth proposed by Kelly is used to measure the channel occupancy of each source. Since the estimation techniques we will use require prior knowledge of the number of clustering clusters, the Silhouette algorithm is used as a first step to determine the number of classes of the modulating chain involved in the model. Using that optimal number of clusters, the Kernel Estimation and Gaussian Mixture Models techniques are used to estimate the model parameters. After that, the performance of the proposed methods is analyzed using simulated traffic traces generated by Markov Chain Monte Carlo algorithms.

Comparison of Effective Bandwidth Estimation Methods for Data Networks

Abstract-The purpose of this work is to apply techniques to estimate the Effective Bandwidth, from traffic traces, for the Generalized Markov Fluid Model in data networks. This model is assumed because it is versatile in describing traffic fluctuations. The concept of Effective Bandwidth proposed by Kelly is used to measure the channel occupancy of each source. Since the estimation techniques we will use require prior knowledge of the number of clustering clusters, the Silhouette algorithm is used as a first step to determine the number of classes of the modulating chain involved in the model. Using that optimal number of clusters, the Kernel Estimation and Gaussian Mixture Models techniques are used to estimate the model parameters. After that, the performance of the proposed methods is analyzed using simulated traffic traces generated by Markov Chain Monte Carlo algorithms.

José Bavio
José Bavio
Carina Fernández
Carina Fernández
Beatriz Marrón
Beatriz Marrón

No Figures found in article.

José Bavio. 2026. “. Global Journal of Computer Science and Technology – E: Network, Web & Security GJCST-E Volume 22 (GJCST Volume 22 Issue E2): .

Download Citation

Journal Specifications

Crossref Journal DOI 10.17406/gjcst

Print ISSN 0975-4350

e-ISSN 0975-4172

Issue Cover
GJCST Volume 22 Issue E2
Pg. 13- 20
Classification
GJCST-E Classification: DDC Code: 388.31 LCC Code: HE336.T7
Keywords
Article Matrices
Total Views: 2899
Total Downloads: 33
2026 Trends
Research Identity (RIN)
Related Research
Our website is actively being updated, and changes may occur frequently. Please clear your browser cache if needed. For feedback or error reporting, please email [email protected]

Request Access

Please fill out the form below to request access to this research paper. Your request will be reviewed by the editorial or author team.
X

Quote and Order Details

Contact Person

Invoice Address

Notes or Comments

This is the heading

Lorem ipsum dolor sit amet, consectetur adipiscing elit. Ut elit tellus, luctus nec ullamcorper mattis, pulvinar dapibus leo.

High-quality academic research articles on global topics and journals.

Comparison of Effective Bandwidth Estimation Methods for Data Networks

José Bavio
José Bavio
Carina Fernández
Carina Fernández
Beatriz Marrón
Beatriz Marrón

Research Journals