Mobility and Spatial-Temporal Traffic Prediction In Wireless Networks Using Markov Renewal Theory

An understanding of network traffic behavior is essential in the evolution of today's wireless networks, and thus leads to a more efficient planning and management of the network's scarce bandwidth resources. Prior reservation of radio resources at the future locations of a user's mob...

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Main Author: Abu Ghazaleh, Haitham
Other Authors: Alfa, Attahiru S. (Electrical and Computer Engineering)
Language:en_US
Published: 2010
Subjects:
Online Access:http://hdl.handle.net/1993/3970
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spelling ndltd-LACETR-oai-collectionscanada.gc.ca-MWU.1993-39702014-03-29T03:42:51Z Mobility and Spatial-Temporal Traffic Prediction In Wireless Networks Using Markov Renewal Theory Abu Ghazaleh, Haitham Alfa, Attahiru S. (Electrical and Computer Engineering) Diamond, Jeff (Electrical and Computer Engineering) Thomas, Gabriel (Electrical and Computer Engineering) Peng, Qingjin (Mechanical and Manufacturing Engineering) Williamson, Carey (Computer Science - University of Calgary) Mobility Modeling Wireless Networks An understanding of network traffic behavior is essential in the evolution of today's wireless networks, and thus leads to a more efficient planning and management of the network's scarce bandwidth resources. Prior reservation of radio resources at the future locations of a user's mobile travel path can assist with optimizing the allocation of the network's limited resources. Such actions are intended to support the network with sustaining a desirable Quality-of-Service (QoS) level. To help ensure the availability of the network services to its users at anywhere and anytime, there is the need to predict when and where a user will demand any network usage. In this thesis, the mobility behavior of the wireless users are modeled as a Markov renewal process for predicting the likelihoods of the next-cell transition. The model also includes anticipating the duration between the transitions for an arbitrary user in a wireless network. The proposed prediction technique is further extended to compute the likelihoods of a user being in a particular state after $N$ transitions. This technique can also be applied for estimating the future spatial-temporal traffic load and activity at each location in a network's coverage area. The proposed prediction method is evaluated using some real traffic data to illustrate how it can lead to a significant improvement over some of the conventional methods. The work considers both the cases of mobile users with homogeneous applications (e.g. voice calls) and data connectivity with varying data loads being transferred between the different locations. 2010-04-12T13:41:39Z 2010-04-12T13:41:39Z 2010-04-12T13:41:39Z H. Abu Ghazaleh and A. S. Alfa; “Application of Mobility Prediction in Wireless Networks Using Markov Renewal Theory”, IEEE Transaction on Vehicular Technology. (Accepted for future publication – Nov. 2009). http://hdl.handle.net/1993/3970 en_US
collection NDLTD
language en_US
sources NDLTD
topic Mobility Modeling
Wireless Networks
spellingShingle Mobility Modeling
Wireless Networks
Abu Ghazaleh, Haitham
Mobility and Spatial-Temporal Traffic Prediction In Wireless Networks Using Markov Renewal Theory
description An understanding of network traffic behavior is essential in the evolution of today's wireless networks, and thus leads to a more efficient planning and management of the network's scarce bandwidth resources. Prior reservation of radio resources at the future locations of a user's mobile travel path can assist with optimizing the allocation of the network's limited resources. Such actions are intended to support the network with sustaining a desirable Quality-of-Service (QoS) level. To help ensure the availability of the network services to its users at anywhere and anytime, there is the need to predict when and where a user will demand any network usage. In this thesis, the mobility behavior of the wireless users are modeled as a Markov renewal process for predicting the likelihoods of the next-cell transition. The model also includes anticipating the duration between the transitions for an arbitrary user in a wireless network. The proposed prediction technique is further extended to compute the likelihoods of a user being in a particular state after $N$ transitions. This technique can also be applied for estimating the future spatial-temporal traffic load and activity at each location in a network's coverage area. The proposed prediction method is evaluated using some real traffic data to illustrate how it can lead to a significant improvement over some of the conventional methods. The work considers both the cases of mobile users with homogeneous applications (e.g. voice calls) and data connectivity with varying data loads being transferred between the different locations.
author2 Alfa, Attahiru S. (Electrical and Computer Engineering)
author_facet Alfa, Attahiru S. (Electrical and Computer Engineering)
Abu Ghazaleh, Haitham
author Abu Ghazaleh, Haitham
author_sort Abu Ghazaleh, Haitham
title Mobility and Spatial-Temporal Traffic Prediction In Wireless Networks Using Markov Renewal Theory
title_short Mobility and Spatial-Temporal Traffic Prediction In Wireless Networks Using Markov Renewal Theory
title_full Mobility and Spatial-Temporal Traffic Prediction In Wireless Networks Using Markov Renewal Theory
title_fullStr Mobility and Spatial-Temporal Traffic Prediction In Wireless Networks Using Markov Renewal Theory
title_full_unstemmed Mobility and Spatial-Temporal Traffic Prediction In Wireless Networks Using Markov Renewal Theory
title_sort mobility and spatial-temporal traffic prediction in wireless networks using markov renewal theory
publishDate 2010
url http://hdl.handle.net/1993/3970
work_keys_str_mv AT abughazalehhaitham mobilityandspatialtemporaltrafficpredictioninwirelessnetworksusingmarkovrenewaltheory
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