Optimization of Probe Train Size for Available Bandwidth Estimation in High-speed Networks

Available bandwidth parameter is a crucial characteristic in terms of networking and data transmission. The beforehand knowledge of its value and use of this parameter in various traffic engineering algorithms and QoS calculations is a key for high-efficient multigigabit data transport in nowadays n...

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Main Authors: Kirova Veronika, Siemens Eduard, Kachan Dmitry, Vasylenko Oksana, Karpov Kirill
Format: Article
Language:English
Published: EDP Sciences 2018-01-01
Series:MATEC Web of Conferences
Online Access:https://doi.org/10.1051/matecconf/201820802001
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spelling doaj-cd739d534db6482db2dc8a2b71c1e8572021-02-02T04:25:29ZengEDP SciencesMATEC Web of Conferences2261-236X2018-01-012080200110.1051/matecconf/201820802001matecconf_icmie2018_02001Optimization of Probe Train Size for Available Bandwidth Estimation in High-speed NetworksKirova Veronika0Siemens Eduard1Kachan Dmitry2Vasylenko Oksana3Karpov Kirill4Anhalt University of Applied Sciences, Department of Electrical, Mechanical and Industrial EngineeringAnhalt University of Applied Sciences, Department of Electrical, Mechanical and Industrial EngineeringAnhalt University of Applied Sciences, Department of Electrical, Mechanical and Industrial EngineeringO. S. Popov Odessa National Academy of Telecommunications, Department of Higher MathematicsAnhalt University of Applied Sciences, Department of Electrical, Mechanical and Industrial EngineeringAvailable bandwidth parameter is a crucial characteristic in terms of networking and data transmission. The beforehand knowledge of its value and use of this parameter in various traffic engineering algorithms and QoS calculations is a key for high-efficient multigigabit data transport in nowadays networks. The challenge in available bandwidth estimations is not only in its accuracy and processing speed but also in the reduction of the amount of probe traffic injected into the network by keeping an adequate level of estimation accuracy. In this paper we extend existing active probing measurement algorithms for end-to-end available bandwidth estimation along with methods to reduce estimation times and amount of injected traffic while keeping measurement accuracy constant and even reducing the uncertainty of estimations. The main goal of this research was to detect a sufficient ratio of MTU, packet train size with the link capacity and available bandwidth (AvB) in up to 10 Gbps networks. In order to explore measurement accuracy under different conditions, a new tool for the AvB estimation named Kite2 has been developed and is presented in the paper. Comparative performance of AvB estimations using Kite2, Kite and Yaz is presented. Finally we calculate with statistical means dependency between the estimation error probability, measurement probing overhead and the measurement time.https://doi.org/10.1051/matecconf/201820802001
collection DOAJ
language English
format Article
sources DOAJ
author Kirova Veronika
Siemens Eduard
Kachan Dmitry
Vasylenko Oksana
Karpov Kirill
spellingShingle Kirova Veronika
Siemens Eduard
Kachan Dmitry
Vasylenko Oksana
Karpov Kirill
Optimization of Probe Train Size for Available Bandwidth Estimation in High-speed Networks
MATEC Web of Conferences
author_facet Kirova Veronika
Siemens Eduard
Kachan Dmitry
Vasylenko Oksana
Karpov Kirill
author_sort Kirova Veronika
title Optimization of Probe Train Size for Available Bandwidth Estimation in High-speed Networks
title_short Optimization of Probe Train Size for Available Bandwidth Estimation in High-speed Networks
title_full Optimization of Probe Train Size for Available Bandwidth Estimation in High-speed Networks
title_fullStr Optimization of Probe Train Size for Available Bandwidth Estimation in High-speed Networks
title_full_unstemmed Optimization of Probe Train Size for Available Bandwidth Estimation in High-speed Networks
title_sort optimization of probe train size for available bandwidth estimation in high-speed networks
publisher EDP Sciences
series MATEC Web of Conferences
issn 2261-236X
publishDate 2018-01-01
description Available bandwidth parameter is a crucial characteristic in terms of networking and data transmission. The beforehand knowledge of its value and use of this parameter in various traffic engineering algorithms and QoS calculations is a key for high-efficient multigigabit data transport in nowadays networks. The challenge in available bandwidth estimations is not only in its accuracy and processing speed but also in the reduction of the amount of probe traffic injected into the network by keeping an adequate level of estimation accuracy. In this paper we extend existing active probing measurement algorithms for end-to-end available bandwidth estimation along with methods to reduce estimation times and amount of injected traffic while keeping measurement accuracy constant and even reducing the uncertainty of estimations. The main goal of this research was to detect a sufficient ratio of MTU, packet train size with the link capacity and available bandwidth (AvB) in up to 10 Gbps networks. In order to explore measurement accuracy under different conditions, a new tool for the AvB estimation named Kite2 has been developed and is presented in the paper. Comparative performance of AvB estimations using Kite2, Kite and Yaz is presented. Finally we calculate with statistical means dependency between the estimation error probability, measurement probing overhead and the measurement time.
url https://doi.org/10.1051/matecconf/201820802001
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