Leveraging LSTM and GRU-based deep neural coordination in intelligent transportation to strengthen security in the Internet of Vehicles

Concerns about security and safety are escalating as additional smart cars become part of the Internet of Vehicles (IoV) and link up to the Internet via Internet of Things (IoT) applications. The rising amount of connected vehicles brings about intricate cybersecurity issues, such as unauthorized en...

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Published in:INTERNATIONAL JOURNAL OF MACHINE LEARNING AND CYBERNETICS
Main Authors: Yanmin, Cai; Sarkar, Arindam; Zain, Jasni Mohamad; Bhar, Arindam; Noorwali, Abdulfattah; Othman, Kamal M.
Format: Article; Early Access
Language:English
Published: SPRINGER HEIDELBERG 2024
Subjects:
Online Access:https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001329069500001
author Yanmin
Cai; Sarkar
Arindam; Zain
Jasni Mohamad; Bhar
Arindam; Noorwali
Abdulfattah; Othman
Kamal M.
spellingShingle Yanmin
Cai; Sarkar
Arindam; Zain
Jasni Mohamad; Bhar
Arindam; Noorwali
Abdulfattah; Othman
Kamal M.
Leveraging LSTM and GRU-based deep neural coordination in intelligent transportation to strengthen security in the Internet of Vehicles
Computer Science
author_facet Yanmin
Cai; Sarkar
Arindam; Zain
Jasni Mohamad; Bhar
Arindam; Noorwali
Abdulfattah; Othman
Kamal M.
author_sort Yanmin
spelling Yanmin, Cai; Sarkar, Arindam; Zain, Jasni Mohamad; Bhar, Arindam; Noorwali, Abdulfattah; Othman, Kamal M.
Leveraging LSTM and GRU-based deep neural coordination in intelligent transportation to strengthen security in the Internet of Vehicles
INTERNATIONAL JOURNAL OF MACHINE LEARNING AND CYBERNETICS
English
Article; Early Access
Concerns about security and safety are escalating as additional smart cars become part of the Internet of Vehicles (IoV) and link up to the Internet via Internet of Things (IoT) applications. The rising amount of connected vehicles brings about intricate cybersecurity issues, such as unauthorized entry, data breaches, and potential vehicle misuse. Although research has delved into utilizing Machine Learning (ML) techniques for Intrusion Detection (ID) in IoT networks to avoid vehicle accidents and cyberattacks, there are still major hurdles in accurately detecting unauthorized access and attaining real-time effectiveness. This study tackles these obstacles by suggesting a new Intrusion Detection System (IDS) for the Internet of Vehicles (IoV), utilizing the collective capabilities of Deep Learning (DL). This research addresses existing shortcomings by employing GRU and LSTM models to capture short- and long-term dependencies in attack patterns, improving system detection accuracy and responsiveness. In addition, we present a secure key exchange technique for the IoT network using Artificial Neural Networks (ANNs) to enable mutual learning and enhance key distribution among connected devices, ensuring a strong defense against unauthorized access and data breaches. The proposed strategy's effectiveness is proven by intense training and testing of DL models on various datasets like CSE-CIC-IDS 2018, CI-CIDS 2017, CIC DoS, and a specialized vehicle exploitation dataset, ensuring generalizability and robustness. The tests demonstrate that the IDS has exceptional precision, detecting 99.9% of network attacks and 95.9% of car hacks. Additional evaluation using recall, F1-score, and accuracy measures affirms the efficiency and trustworthiness of the suggested approach. This study enhances IoT security with a novel ANN-based key exchange method and proposes a comprehensive IDS system for IoV using advanced DL methods. The proposed research makes significant progress in network security and intrusion detection accuracy, greatly improving the safety and security of smart cars and the Internet of Vehicles ecosystem, leading to a safer and more secure future in intelligent transportation systems.
SPRINGER HEIDELBERG
1868-8071
1868-808X
2024


10.1007/s13042-024-02401-2
Computer Science

WOS:001329069500001
https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001329069500001
title Leveraging LSTM and GRU-based deep neural coordination in intelligent transportation to strengthen security in the Internet of Vehicles
title_short Leveraging LSTM and GRU-based deep neural coordination in intelligent transportation to strengthen security in the Internet of Vehicles
title_full Leveraging LSTM and GRU-based deep neural coordination in intelligent transportation to strengthen security in the Internet of Vehicles
title_fullStr Leveraging LSTM and GRU-based deep neural coordination in intelligent transportation to strengthen security in the Internet of Vehicles
title_full_unstemmed Leveraging LSTM and GRU-based deep neural coordination in intelligent transportation to strengthen security in the Internet of Vehicles
title_sort Leveraging LSTM and GRU-based deep neural coordination in intelligent transportation to strengthen security in the Internet of Vehicles
container_title INTERNATIONAL JOURNAL OF MACHINE LEARNING AND CYBERNETICS
language English
format Article; Early Access
description Concerns about security and safety are escalating as additional smart cars become part of the Internet of Vehicles (IoV) and link up to the Internet via Internet of Things (IoT) applications. The rising amount of connected vehicles brings about intricate cybersecurity issues, such as unauthorized entry, data breaches, and potential vehicle misuse. Although research has delved into utilizing Machine Learning (ML) techniques for Intrusion Detection (ID) in IoT networks to avoid vehicle accidents and cyberattacks, there are still major hurdles in accurately detecting unauthorized access and attaining real-time effectiveness. This study tackles these obstacles by suggesting a new Intrusion Detection System (IDS) for the Internet of Vehicles (IoV), utilizing the collective capabilities of Deep Learning (DL). This research addresses existing shortcomings by employing GRU and LSTM models to capture short- and long-term dependencies in attack patterns, improving system detection accuracy and responsiveness. In addition, we present a secure key exchange technique for the IoT network using Artificial Neural Networks (ANNs) to enable mutual learning and enhance key distribution among connected devices, ensuring a strong defense against unauthorized access and data breaches. The proposed strategy's effectiveness is proven by intense training and testing of DL models on various datasets like CSE-CIC-IDS 2018, CI-CIDS 2017, CIC DoS, and a specialized vehicle exploitation dataset, ensuring generalizability and robustness. The tests demonstrate that the IDS has exceptional precision, detecting 99.9% of network attacks and 95.9% of car hacks. Additional evaluation using recall, F1-score, and accuracy measures affirms the efficiency and trustworthiness of the suggested approach. This study enhances IoT security with a novel ANN-based key exchange method and proposes a comprehensive IDS system for IoV using advanced DL methods. The proposed research makes significant progress in network security and intrusion detection accuracy, greatly improving the safety and security of smart cars and the Internet of Vehicles ecosystem, leading to a safer and more secure future in intelligent transportation systems.
publisher SPRINGER HEIDELBERG
issn 1868-8071
1868-808X
publishDate 2024
container_volume
container_issue
doi_str_mv 10.1007/s13042-024-02401-2
topic Computer Science
topic_facet Computer Science
accesstype
id WOS:001329069500001
url https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001329069500001
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