Multi-objective nodes placement problem in large regions wireless networks

Conference paper


Bekhit, Mahmoud, Morsy, Ehab and Salah, Ahmad. (2014). Multi-objective nodes placement problem in large regions wireless networks. 4th international conference on electronic, communications and networks (CECNet2014). Beijing, China 12 - 15 Dec 2014 China: CRC Press. pp. 61 - 66
AuthorsBekhit, Mahmoud, Morsy, Ehab and Salah, Ahmad
TypeConference paper
Abstract

In this paper, we concern with the problem of node placement in wireless communication networks. Given a set of nodes and a set of communication devices, the node placement problem requires to choose positions from a set of designated candidate sites to place these nodes such that a set of conflicting objectives are met. In particular, we focus on minimizing construction cost and network interference as well as maximizing network coverage and total bandwidth. This problem is formulated as a multi-objective optimization problem using the well-known algorithm Multi-Objective Evolutionary Algorithm Based on Decomposition (MOEA/D) algorithm. Furthermore, we apply an adapting version of this algorithm to solve our problem. Our experimental results show that MOEA/D has a good performance in a reasonable running time. Moreover, comparative results show that our algorithm is effective in all the desired objectives.

KeywordsWireless Networks; Node Placement; Genetic Algorithm; Optimization Problems; Multi-objective Evolutionary Algorithm Based on Decomposition
Year01 Jan 2014
PublisherCRC Press
Web address (URL)https://www.taylorfrancis.com/chapters/edit/10.1201/b18592-12/multi-objective-nodes-placement-problem-large-regions-wireless-networks-mahmoud-gamal-ehab-morsy-ahmad-salah
Open accessPublished as non-open access
Research or scholarlyResearch
Publisher's version
License
All rights reserved
File Access Level
Controlled
Book titleElectronics, Communications and Networks IV
Page range61 - 66
Book editorHussain, Amir
Ivanovic, Mirjana
ISBN9780429226038
Output statusPublished
Publication dates
Online13 Jul 2015
Publication process dates
Deposited04 Sep 2024
Additional information

© 2015 Taylor & Francis Group, London, UK

Place of publicationChina
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https://acuresearchbank.acu.edu.au/item/90q0z/multi-objective-nodes-placement-problem-in-large-regions-wireless-networks

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