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Energy-Efficient End-to-End Security for Software-Defined Vehicular Networks - 2020

Author(s) Name:  Gunasekaran Raja; Sudha Anbalagan; Geetha Vijayaraghavan; Priyanka Dhanasekaran; Yasser D. Al-Otaibi; Ali Kashif Bashir
Journal name:  IEEE Transactions on Industrial Informatics
Conferrence name:  
Publisher name:  IEEE
DOI:  10.1109/TII.2020.3012166
Research Area:  Vehicular Ad Hoc Networks
Abstract:

One of the most promising application areas of the industrial Internet of Things (IIoT) is vehicular ad hoc networks (VANETs). VANETs are largely used by intelligent transportation systems to provide smart and safe road transport. To reduce the network burden, software-defined networks (SDNs) act as a remote controller. Motivated by the need for greener IIoT solutions, this article proposes an energy-efficient end-to-end security solution for software-defined vehicular networks (SDVNs). Besides, SDNs flexible network management, network performance, and energy-efficient end-to-end security scheme plays a significant role in providing green IIoT services. Thus, the proposed SDVN provides lightweight end-to-end security. The end-to-end security objective is handled in two levels: 1) in roadside unit (RSU)-based group authentication scheme, each vehicle in the RSU range receives a group ID-key pair for secure communication; and 2) in private collaborative intrusion detection system (p-CIDS), the SDVN detects the potential intrusions inside the VANET architecture using collaborative learning that guarantees privacy through a fusion of differential privacy and homomorphic encryption schemes. The SDVN is simulated in NS2 and MATLAB, and results show increased energy efficiency with lower communication and storage overhead than existing frameworks. In addition, the p-CIDS detects the intruder with an accuracy of 96.81% in the SDVN.

Volume Information:  Volume: 17, Issue: 8, Aug. 2021, 5730 - 5737
Journal Link:

https://ieeexplore.ieee.org/abstract/document/9151385