Intelligent analytics algorithms in breach detection systems for securing VANETs and data for smart transportation management

Author:

J Bhuvana1,HASHMI HINA2,Adhvaryu Rachit3,Kashyap Sneha4,Kumari Savita5,Wadhwa Durgesh6

Affiliation:

1. Jain University

2. Teerthanker Mahaveer University

3. Parul Institute of Engineering and Technology

4. ARKA JAIN University

5. Galgotias University

6. Sanskriti University

Abstract

Abstract In-vehicle communication has developed into a crucial element of today's driving environment as a result of the expanding additions of sensor-centric communication as well as computing devices inside a vehicle for a variety of purposes, consists of vehicle monitoring, physical wiring minimization as well as driving efficiency. The relevant literature on cyber security for in-vehicle communication methods does not, however, currently offer any certain solutions for in-vehicle cyber hazards. The existing solutions, which mostly rely on protocol-specific security approaches, do not provide a comprehensive security framework for in-vehicle communication. This study aims to develop an effective data transmission and intelligent machine learning technique for smart vehicle management in VANET breach detection. In this study, ensemble adversarial Boltzmann CNN architecture is used to detect breaches. The secure short hop opportunistic local routing protocol is then used to send the data. Throughput, QoS, training accuracy, validation accuracy, and network security analysis are all part of the experimental analysis for a variety of security-based datasets. the proposed technique attainedthroughput of 88%, QoS of 77%, training accuracy of 93%, validation accuracy of 96%, network security analysis of 63%, scalability of 75%.

Publisher

Research Square Platform LLC

Reference22 articles.

1. A hybrid machine learning model for intrusion detection in VANET;Bangui H;Computing,2022

2. RSU-based online intrusion detection and mitigation for VANET;Haydari A;Sensors,2022

3. Karthiga B, Durairaj D, Nawaz N, Venkatasamy TK, Ramasamy G, Hariharasudan A (2022) Intelligent Intrusion Detection System for VANET Using Machine Learning and Deep Learning Approaches. Wireless Communications and Mobile Computing, 2022

4. Marwah, G. P. K., Jain, A., Malik, P. K., Singh, M., Tanwar, S., Safirescu, C. O.,… Alkhayyat, A. (2022). An Improved Machine Learning Model with Hybrid Technique in VANET for Robust Communication. Mathematics, 10(21), 4030

5. An Enhanced Elliptic Curve Cryptography Scheme for Secure Data Transmission to Evade Entailment of Fake Vehicles in VANET;Patil MJ,2022

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