A Decentralized Heuristic Approach towards Resource Allocation in Femtocell Networks

Femtocells represent a novel configuration for existing cellular communication, contributing towards the improvement of coverage and throughput. The dense deployment of these femtocells causes significant femto-macro and femto-femto interference, consequently deteriorating the throughput of femtocel...

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Main Authors: Kyung-Geun Lee, Adnan Shahid, Saleem Aslam
Format: Article
Language:English
Published: MDPI AG 2013-06-01
Series:Entropy
Subjects:
Online Access:http://www.mdpi.com/1099-4300/15/7/2524
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spelling doaj-113857937a2a4fe49837a900226a37f92020-11-24T21:28:18ZengMDPI AGEntropy1099-43002013-06-011572524254710.3390/e15072524A Decentralized Heuristic Approach towards Resource Allocation in Femtocell NetworksKyung-Geun LeeAdnan ShahidSaleem AslamFemtocells represent a novel configuration for existing cellular communication, contributing towards the improvement of coverage and throughput. The dense deployment of these femtocells causes significant femto-macro and femto-femto interference, consequently deteriorating the throughput of femtocells. In this study, we compare two heuristic approaches, i.e., particle swarm optimization (PSO) and genetic algorithm (GA), for joint power assignment and resource allocation, within the context of the femtocell environment. The supposition made in this joint optimization is that the discrete power levels are available for the assignment. Furthermore, we have employed two variants of each PSO and GA: inertia weight and constriction factor model for PSO, and twopoint and uniform crossover for GA. The two proposed algorithms are in a decentralized manner, with no involvement of any centralized entity. The comparison is carried out between the two proposed algorithms for the aforementioned joint optimization problem. The contrast includes the performance metrics: including average objective function, min–max throughput of the femtocells, average throughput of the femto users, outage rate and time complexity. The results demonstrate that the decentralized PSO constriction factor outperforms the others in terms of the aforementioned performance metrics.http://www.mdpi.com/1099-4300/15/7/2524power assignmentresource allocationfemtocellparticle swarm optimizationgenetic algorithm
collection DOAJ
language English
format Article
sources DOAJ
author Kyung-Geun Lee
Adnan Shahid
Saleem Aslam
spellingShingle Kyung-Geun Lee
Adnan Shahid
Saleem Aslam
A Decentralized Heuristic Approach towards Resource Allocation in Femtocell Networks
Entropy
power assignment
resource allocation
femtocell
particle swarm optimization
genetic algorithm
author_facet Kyung-Geun Lee
Adnan Shahid
Saleem Aslam
author_sort Kyung-Geun Lee
title A Decentralized Heuristic Approach towards Resource Allocation in Femtocell Networks
title_short A Decentralized Heuristic Approach towards Resource Allocation in Femtocell Networks
title_full A Decentralized Heuristic Approach towards Resource Allocation in Femtocell Networks
title_fullStr A Decentralized Heuristic Approach towards Resource Allocation in Femtocell Networks
title_full_unstemmed A Decentralized Heuristic Approach towards Resource Allocation in Femtocell Networks
title_sort decentralized heuristic approach towards resource allocation in femtocell networks
publisher MDPI AG
series Entropy
issn 1099-4300
publishDate 2013-06-01
description Femtocells represent a novel configuration for existing cellular communication, contributing towards the improvement of coverage and throughput. The dense deployment of these femtocells causes significant femto-macro and femto-femto interference, consequently deteriorating the throughput of femtocells. In this study, we compare two heuristic approaches, i.e., particle swarm optimization (PSO) and genetic algorithm (GA), for joint power assignment and resource allocation, within the context of the femtocell environment. The supposition made in this joint optimization is that the discrete power levels are available for the assignment. Furthermore, we have employed two variants of each PSO and GA: inertia weight and constriction factor model for PSO, and twopoint and uniform crossover for GA. The two proposed algorithms are in a decentralized manner, with no involvement of any centralized entity. The comparison is carried out between the two proposed algorithms for the aforementioned joint optimization problem. The contrast includes the performance metrics: including average objective function, min–max throughput of the femtocells, average throughput of the femto users, outage rate and time complexity. The results demonstrate that the decentralized PSO constriction factor outperforms the others in terms of the aforementioned performance metrics.
topic power assignment
resource allocation
femtocell
particle swarm optimization
genetic algorithm
url http://www.mdpi.com/1099-4300/15/7/2524
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