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Impact of wireless losses on the predictability of end-to-end flow characteristics in Mobile IP Networks

Technological advancements have led to an increase in the number of wireless and
mobile devices such as PDAs, laptops and smart phones. This has resulted in an ever-
increasing demand for wireless access to the Internet. Hence, wireless mobile traffic
is expected to form a significant fraction of Internet traffic in the near future, over
the so-called Mobile Internet Protocol (MIP) networks. For real-time applications,
such as voice, video and process monitoring and control, deployed over standard IP
networks, network resources must be properly allocated so that the mobile end-user
is guaranteed a certain Quality of Service (QoS). As with the wired and fixed IP
networks, MIP networks do not offer any QoS guarantees. Such networks have been
designed for non-real-time applications. In attempts to deploy real-time applications
in such networks without requiring major network infrastructure modifications, the
end-points must provide some level of QoS guarantees. Such QoS guarantees or QoS
control, requires ability of predictive capabilities of the end-to-end flow characteristics.
In this research network flow accumulation is used as a measure of end-to-end
network congestion. Careful analysis and study of the flow accumulation signal shows
that it has long-term dependencies and it is very noisy, thus making it very difficult
to predict. Hence, this work predicts the moving average of the flow accumulation
signal. Both single-step and multi-step predictors are developed using linear system
identification techniques. A multi-step prediction error of up to 17% is achieved for
prediction horizon of up to 0.5sec.
The main thrust of this research is on the impact of wireless losses on the ability to
predict end-to-end flow accumulation. As opposed to wired, congestion related packet
losses, the losses occurring in a wireless channel are to a large extent random, making
the prediction of flow accumulation more challenging. Flow accumulation prediction
studies in this research demonstrate that, if an accurate predictor is employed, the
increase in prediction error is up to 170% when wireless loss reaches as high as 15% ,
as compared to the case of no wireless loss. As the predictor accuracy in the case of
no wireless loss deteriorates, the impact of wireless losses on the flow accumulation
prediction error decreases.

Identiferoai:union.ndltd.org:tamu.edu/oai:repository.tamu.edu:1969.1/1510
Date17 February 2005
CreatorsBhoite, Sameer Prabhakarrao
ContributorsParlos, Alexander G.
PublisherTexas A&M University
Source SetsTexas A and M University
Languageen_US
Detected LanguageEnglish
TypeBook, Thesis, Electronic Thesis, text
Format1752137 bytes, electronic, application/pdf, born digital

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