Vol. 2 No. 1 (2022): Journal of AI-Assisted Scientific Discovery
Articles

The Role of Computational Intelligence in Real-Time Traffic Management in IoT-enabled Autonomous Vehicle Networks

Dr. Maria Cláudia Barbosa
Associate Professor of Computer Science, Federal University of Minas Gerais (UFMG), Brazil
Cover

Published 24-06-2024

Keywords

  • cellular technologies,
  • air pollutant

How to Cite

[1]
Dr. Maria Cláudia Barbosa, “The Role of Computational Intelligence in Real-Time Traffic Management in IoT-enabled Autonomous Vehicle Networks”, Journal of AI-Assisted Scientific Discovery, vol. 2, no. 1, pp. 1–23, Jun. 2024, Accessed: Nov. 23, 2024. [Online]. Available: https://scienceacadpress.com/index.php/jaasd/article/view/43

Abstract

The Internet of Things (IoT) and the Internet of Vehicles (IoV) have revolutionized the multi-purpose operational systems of vehicular transportation mechanisms in today’s era. IoT is a network of devices, which can communicate with each other through the internet [1]. The key technologies of IoT are cloud computing and big data analytics helpful in monitoring, tracking, and controlling vehicular pollution, traffic, and mobility. Cloud computing provides resources for services, management, and application support. Machine learning and big data analytics analyze the available data for extracting the meaningful insights, trends, and predictions, therefore, assisting in managing, controlling traffic, and pollutants [2]. The future of vehicular mobility is envisioned with autonomous, intelligent, and connected vehicles such as self-driven cars. Autonomous vehicles are fully developed to operate independently of human interaction. The most critical problem in intelligent autonomous vehicle networks is to analyze, monitor, and control traffic intelligently, ensuring minimal fuel consumption along with achieving reduced CO2 emissions which also enables the sustainable growth of the economy. In the developed world, the usage of automobiles has significantly increased during the twenty-first century. This gradually increased the demand for fossil fuels which ultimately produced air pollutants due to vehicle emissions. The literature survey regarding autonomous and connected vehicle networks represents the real-time traffic management, the navigation of vehicles in vehicular communication systems, real-time traffic signals with vehicular ad hoc networks, and lastly, energy-efficient resource management in vehicular networks.

Downloads

Download data is not yet available.

References

  1. S. Kumar Panigrahy and H. Emany, "A Survey and Tutorial on Network Optimization for Intelligent Transport System Using the Internet of Vehicles," 2023. ncbi.nlm.nih.gov
  2. Tatineni, Sumanth. "Federated Learning for Privacy-Preserving Data Analysis: Applications and Challenges." International Journal of Computer Engineering and Technology 9.6 (2018).
  3. Shaik, Mahammad, et al. "Granular Access Control for the Perpetually Expanding Internet of Things: A Deep Dive into Implementing Role-Based Access Control (RBAC) for Enhanced Device Security and Privacy." British Journal of Multidisciplinary and Advanced Studies 2.2 (2018): 136-160.
  4. Vemoori, V. “Towards Secure and Trustworthy Autonomous Vehicles: Leveraging Distributed Ledger Technology for Secure Communication and Exploring Explainable Artificial Intelligence for Robust Decision-Making and Comprehensive Testing”. Journal of Science & Technology, vol. 1, no. 1, Nov. 2020, pp. 130-7, https://thesciencebrigade.com/jst/article/view/224.
  5. T. Hossain, S. Dev, and S. Singh, "MISGENDERED: Limits of Large Language Models in Understanding Pronouns," 2023. [PDF]
  6. Q. Noorulhasan Naveed, H. Alqahtani, R. Ullah Khan, S. Almakdi et al., "An Intelligent Traffic Surveillance System Using Integrated Wireless Sensor Network and Improved Phase Timing Optimization," 2022. ncbi.nlm.nih.gov
  7. H. Chang and N. Ning, "An Intelligent Multimode Clustering Mechanism Using Driving Pattern Recognition in Cognitive Internet of Vehicles," 2021. ncbi.nlm.nih.gov
  8. G. B. Santhi, S. Sira Jacob, D. Sheela, and P. Kumaran, "Traffic coordination by reducing jamming attackers in VANET using probabilistic Manhattan Grid Topology for automobile applications," 2024. ncbi.nlm.nih.gov
  9. Y. Li and W. Zhang, "Traffic flow digital twin generation for highway scenario based on radar-camera paired fusion," 2023. ncbi.nlm.nih.gov
  10. R. Basir, S. Qaisar, M. Ali, M. Aldwairi et al., "Fog Computing Enabling Industrial Internet of Things: State-of-the-Art and Research Challenges," 2019. ncbi.nlm.nih.gov
  11. S. Danba, J. Bao, G. Han, S. Guleng et al., "Toward Collaborative Intelligence in IoV Systems: Recent Advances and Open Issues," 2022. ncbi.nlm.nih.gov
  12. M. Shoaib Farooq and S. Kanwal, "Traffic Road Congestion System using by the internet of vehicles (IoV)," 2023. [PDF]
  13. L. Zhang, M. Khalgui, and Z. Li, "Predictive Intelligent Transportation: Alleviating Traffic Congestion in the Internet of Vehicles," 2021. ncbi.nlm.nih.gov
  14. O. Rinchi, A. Alsharoa, I. Shatnawi, and A. Arora, "The Role of Intelligent Transportation Systems and Artificial Intelligence in Energy Efficiency and Emission Reduction," 2024. [PDF]
  15. J. Wang, X. Guo, and X. Yang, "Efficient and Safe Strategies for Intersection Management: A Review," 2021. ncbi.nlm.nih.gov
  16. K. Fida Hasan, A. Overall, K. Ansari, G. Ramachandran et al., "Security, Privacy and Trust: Cognitive Internet of Vehicles," 2021. [PDF]
  17. K. Elgazzar, H. Khalil, T. Alghamdi, A. Badr et al., "Revisiting the Internet of Things: New Trends, Opportunities and Grand Challenges," 2022. [PDF]
  18. Y. Li, "Deep Reinforcement Learning," 2018. [PDF]
  19. H. Cao, M. Wachowicz, R. Richard, and C. H. Hsu, "Fostering new Vertical and Horizontal IoT Applications with Intelligence Everywhere," 2023. [PDF]
  20. M. Schutera, N. Goby, D. Neumann, and M. Reischl, "Transfer Learning versus Multi-agent Learning regarding Distributed Decision-Making in Highway Traffic," 2018. [PDF]
  21. E. Adi, A. Anwar, Z. Baig, and S. Zeadally, "Machine learning and data analytics for the IoT," 2020. [PDF]
  22. D. Wang, W. Li, and J. Pan, "Large-scale Mixed Traffic Control Using Dynamic Vehicle Routing and Privacy-Preserving Crowdsourcing," 2023. [PDF]
  23. Z. Qin, A. Ji, Z. Sun, G. Wu et al., "Game Theoretic Application to Intersection Management: A Literature Review," 2023. [PDF]
  24. C. Poncinelli Filho, E. Marques, V. Chang, L. dos Santos et al., "A Systematic Literature Review on Distributed Machine Learning in Edge Computing," 2022. ncbi.nlm.nih.gov