RBA: Detection and Protection Analysis Using Region-Based Algorithm in Ultra-Dense Networks

Due to broadcast nature of wireless medium, increased density of users, base stations (BSs) and small cell size in the ultra-dense network (UDN), the users are susceptible to be attacked by malicious eavesdroppers (EDs). However, UDN is provisioned with exceptionally adequate performance for all div...

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Main Authors: Garima Chopra, Rakesh Kumar Jha, Sanjeev Jain
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8667418/
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author Garima Chopra
Rakesh Kumar Jha
Sanjeev Jain
author_facet Garima Chopra
Rakesh Kumar Jha
Sanjeev Jain
author_sort Garima Chopra
collection DOAJ
description Due to broadcast nature of wireless medium, increased density of users, base stations (BSs) and small cell size in the ultra-dense network (UDN), the users are susceptible to be attacked by malicious eavesdroppers (EDs). However, UDN is provisioned with exceptionally adequate performance for all diversity of users along with the appearance of low power small cells in abundance. This paper deals with the secure transmission in UDN for high speed (or vehicular) users under the influence of single or multiple EDs. Thereby to ensure secure communication, we design a detection algorithm based on pattern matching for high-speed users by computing the secrecy rate loss (SRL) and simultaneously estimating the ranks to determine the sensitive area for attack. We then also develop the mathematical approach through the formation of a correlation matrix. We formulate the secure and energy efficient algorithm called region-based algorithm (RBA), which will protect users by encrypting the information transmitted in the sensitive area of attack. Simulation results reveal that the proposed algorithm is energy efficient and secure. RBA outperforms the conventional approach of encryption and also helps in saving energy (reserved for encryption) more than 90%. We also propose the optimal utilization of saved encryption energy to further improve the secrecy rate of moving users in the region of attack. The simulation results verify our theoretical approach and proposed approach well meets the target QoS in the attacked zone, to overcome the impact of ED.
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spelling doaj.art-353a3b6e871d4789bbfde02265cf411a2022-12-21T23:48:32ZengIEEEIEEE Access2169-35362019-01-017529975301110.1109/ACCESS.2019.29051658667418RBA: Detection and Protection Analysis Using Region-Based Algorithm in Ultra-Dense NetworksGarima Chopra0Rakesh Kumar Jha1https://orcid.org/0000-0001-7321-4753Sanjeev Jain2Electronics and Communication Department, Shri Mata Vaishno Devi University, Katra, IndiaElectronics and Communication Department, Shri Mata Vaishno Devi University, Katra, IndiaComputer Science Engineering Department, Shri Mata Vaishno Devi University, Katra, IndiaDue to broadcast nature of wireless medium, increased density of users, base stations (BSs) and small cell size in the ultra-dense network (UDN), the users are susceptible to be attacked by malicious eavesdroppers (EDs). However, UDN is provisioned with exceptionally adequate performance for all diversity of users along with the appearance of low power small cells in abundance. This paper deals with the secure transmission in UDN for high speed (or vehicular) users under the influence of single or multiple EDs. Thereby to ensure secure communication, we design a detection algorithm based on pattern matching for high-speed users by computing the secrecy rate loss (SRL) and simultaneously estimating the ranks to determine the sensitive area for attack. We then also develop the mathematical approach through the formation of a correlation matrix. We formulate the secure and energy efficient algorithm called region-based algorithm (RBA), which will protect users by encrypting the information transmitted in the sensitive area of attack. Simulation results reveal that the proposed algorithm is energy efficient and secure. RBA outperforms the conventional approach of encryption and also helps in saving energy (reserved for encryption) more than 90%. We also propose the optimal utilization of saved encryption energy to further improve the secrecy rate of moving users in the region of attack. The simulation results verify our theoretical approach and proposed approach well meets the target QoS in the attacked zone, to overcome the impact of ED.https://ieeexplore.ieee.org/document/8667418/UDNRBAsecurevehicular usersEDcorrelation matrix
spellingShingle Garima Chopra
Rakesh Kumar Jha
Sanjeev Jain
RBA: Detection and Protection Analysis Using Region-Based Algorithm in Ultra-Dense Networks
IEEE Access
UDN
RBA
secure
vehicular users
ED
correlation matrix
title RBA: Detection and Protection Analysis Using Region-Based Algorithm in Ultra-Dense Networks
title_full RBA: Detection and Protection Analysis Using Region-Based Algorithm in Ultra-Dense Networks
title_fullStr RBA: Detection and Protection Analysis Using Region-Based Algorithm in Ultra-Dense Networks
title_full_unstemmed RBA: Detection and Protection Analysis Using Region-Based Algorithm in Ultra-Dense Networks
title_short RBA: Detection and Protection Analysis Using Region-Based Algorithm in Ultra-Dense Networks
title_sort rba detection and protection analysis using region based algorithm in ultra dense networks
topic UDN
RBA
secure
vehicular users
ED
correlation matrix
url https://ieeexplore.ieee.org/document/8667418/
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AT rakeshkumarjha rbadetectionandprotectionanalysisusingregionbasedalgorithminultradensenetworks
AT sanjeevjain rbadetectionandprotectionanalysisusingregionbasedalgorithminultradensenetworks