Context-aware multi-attribute decision multi - attribute decision making for radio access technology selection in ultra dense network

Ultra Dense Network (UDN) is the extreme densification of heterogeneous Radio Access Technology (RAT) that is deployed closely in coordinated or uncoordinated manner. The densification of RAT forms an overlapping zone of signal coverage leading to the frequent service handovers among the RAT, thus...

Full description

Saved in:
Bibliographic Details
Main Author: Goudar, Swetha Indudhar
Format: Thesis
Language:English
English
Published: 2017
Subjects:
Online Access:http://etd.uum.edu.my/6813/
Tags: Add Tag
No Tags, Be the first to tag this record!
id my.uum.etd.6813
record_format eprints
spelling my.uum.etd.68132021-05-09T02:50:26Z http://etd.uum.edu.my/6813/ Context-aware multi-attribute decision multi - attribute decision making for radio access technology selection in ultra dense network Goudar, Swetha Indudhar TK6570 Mobile Communication System. Ultra Dense Network (UDN) is the extreme densification of heterogeneous Radio Access Technology (RAT) that is deployed closely in coordinated or uncoordinated manner. The densification of RAT forms an overlapping zone of signal coverage leading to the frequent service handovers among the RAT, thus degrading overall system performance. The current RAT selection approach is biased towards network-centric criteria pertaining to signal strength. However, the paradigm shift from network-centric to user-centric approach necessitates a multi-criteria selection process, with methodology relating to both network and user preferences in the context of future generation networks. Hence, an effective selection approach is required to avoid unnecessary handovers in RAT. The main aim of this study is to propose the Context-aware Multiattribute decision making for RAT (CMRAT) selection for investigating the need to choose a new RAT and further determine the best amongst the available methods. The CMRAT consists of two mechanisms, namely the Context-aware Analytical Hierarchy Process (CAHP) and Context-aware Technique for Order Preference by Similarity to an Ideal Solution (CTOPSIS). The CAHP mechanism measures the need to switch from the current RAT, while CTOPSIS aids in decision making to choose the best target RAT. A series of experimental studies were conducted to validate the effectiveness of CMRAT for achieving improved system performance. The investigation utilises shopping mall and urban dense network scenarios to evaluate the performance of RAT selection through simulation. The findings demonstrated that the CMRAT approach reduces delay and the number of handovers leading to an improvement of throughput and packet delivery ratio when compared to that of the commonly used A2A4-RSRQ approach. The CMRAT approach is effective in the RAT selection within UDN environment, thus supporting heterogeneous RAT deployment in future 5G networks. With context-aware selection, the user-centric feature is also emphasized. 2017 Thesis NonPeerReviewed text en /6813/1/s95141_01.pdf text en /6813/2/s95141_02.pdf Goudar, Swetha Indudhar (2017) Context-aware multi-attribute decision multi - attribute decision making for radio access technology selection in ultra dense network. Doctoral thesis, Universiti Utara Malaysia.
institution Universiti Utara Malaysia
building UUM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Utara Malaysia
content_source UUM Electronic Theses
url_provider http://etd.uum.edu.my/
language English
English
topic TK6570 Mobile Communication System.
spellingShingle TK6570 Mobile Communication System.
Goudar, Swetha Indudhar
Context-aware multi-attribute decision multi - attribute decision making for radio access technology selection in ultra dense network
description Ultra Dense Network (UDN) is the extreme densification of heterogeneous Radio Access Technology (RAT) that is deployed closely in coordinated or uncoordinated manner. The densification of RAT forms an overlapping zone of signal coverage leading to the frequent service handovers among the RAT, thus degrading overall system performance. The current RAT selection approach is biased towards network-centric criteria pertaining to signal strength. However, the paradigm shift from network-centric to user-centric approach necessitates a multi-criteria selection process, with methodology relating to both network and user preferences in the context of future generation networks. Hence, an effective selection approach is required to avoid unnecessary handovers in RAT. The main aim of this study is to propose the Context-aware Multiattribute decision making for RAT (CMRAT) selection for investigating the need to choose a new RAT and further determine the best amongst the available methods. The CMRAT consists of two mechanisms, namely the Context-aware Analytical Hierarchy Process (CAHP) and Context-aware Technique for Order Preference by Similarity to an Ideal Solution (CTOPSIS). The CAHP mechanism measures the need to switch from the current RAT, while CTOPSIS aids in decision making to choose the best target RAT. A series of experimental studies were conducted to validate the effectiveness of CMRAT for achieving improved system performance. The investigation utilises shopping mall and urban dense network scenarios to evaluate the performance of RAT selection through simulation. The findings demonstrated that the CMRAT approach reduces delay and the number of handovers leading to an improvement of throughput and packet delivery ratio when compared to that of the commonly used A2A4-RSRQ approach. The CMRAT approach is effective in the RAT selection within UDN environment, thus supporting heterogeneous RAT deployment in future 5G networks. With context-aware selection, the user-centric feature is also emphasized.
format Thesis
author Goudar, Swetha Indudhar
author_facet Goudar, Swetha Indudhar
author_sort Goudar, Swetha Indudhar
title Context-aware multi-attribute decision multi - attribute decision making for radio access technology selection in ultra dense network
title_short Context-aware multi-attribute decision multi - attribute decision making for radio access technology selection in ultra dense network
title_full Context-aware multi-attribute decision multi - attribute decision making for radio access technology selection in ultra dense network
title_fullStr Context-aware multi-attribute decision multi - attribute decision making for radio access technology selection in ultra dense network
title_full_unstemmed Context-aware multi-attribute decision multi - attribute decision making for radio access technology selection in ultra dense network
title_sort context-aware multi-attribute decision multi - attribute decision making for radio access technology selection in ultra dense network
publishDate 2017
url http://etd.uum.edu.my/6813/
_version_ 1701165214104289280
score 13.2014675