Journal Screenshot

International Journal of Academic Research in Business and Social Sciences

Open Access Journal

ISSN: 2222-6990

Enhancing V2x Communication in Intelligent Vehicles Using Deep Learning Models

Jiang Yi, Shamsul Arrieya Bin Ariffin

http://dx.doi.org/10.6007/IJARBSS/v14-i10/23255

Open access

The surge in Vehicle-to-Everything (V2X) communication marks a pivotal evolution in intelligent transportation systems, enhancing safety, efficiency, and sustainability in urban mobility. This thesis introduces a groundbreaking framework that harnesses deep learning models to elevate V2X communication in intelligent vehicles. This framework focuses on adapting and optimizing communication protocols via an innovative algorithm. It specifically targets the prevalent challenges of latency, reliability, and scalability by dynamically predicting and managing communication patterns using advanced deep learning techniques. A key innovation of this study is the development of an adapted algorithm that real-time optimizes data transmission paths and schedules, considering the dynamic nature of urban traffic environments.

Abdellah, A., Muthanna, A., Essai, M., & Koucheryavy, A. (2022). Deep learning for predicting traffic in V2X networks. Applied Sciences, 12(19), 10030. https://doi.org/10.3390/app121910030
Abegaz, B. (2022). A parallelized self-driving vehicle controller using unsupervised machine learning. IEEE Transactions on Industry Applications, 58, 5148-5156.
Ahn, S., & Lim, E. (2020). SoftMemoryBox II: A scalable, shared memory buffer framework for accelerating distributed training of large-scale deep neural networks. IEEE Access, 8, 207097-207111. https://doi.org/10.1109/ACCESS.2020.3038112
An, G., Wu, Z., Shen, Z., Shang, K., & Ishibuchi, H. (2023). Evolutionary multi-objective deep reinforcement learning for autonomous UAV navigation in large-scale complex environments. In Proceedings of the Genetic and Evolutionary Computation Conference.
An, S., & Chang, K. (2023). Resource management for collaborative 5G-NR-V2X RSUs to enhance V2I/N link reliability. Sensors.
Aradi, S. (2020). Survey of deep reinforcement learning for motion planning of autonomous vehicles. IEEE Transactions on Intelligent Transportation Systems.
Barbieri, L., Savazzi, S., & Nicoli, M. (2022). Communication-efficient distributed learning in V2X networks: Parameter selection and quantization. In 2022 IEEE Global Communications Conference (GLOBECOM) (pp. 603-608). https://doi.org/10.1109/GLOBECOM48099.2022.10001364
Bauer, G. R., Churchill, S. M., Mahendran, M., Walwyn, C., Lizotte, D., & Villa-Rueda, A. A. (2021). Intersectionality in quantitative research: A systematic review of its emergence and applications of theory and methods. SSM-Population Health, 14, 100798.
Bautista-Montesano, R., Bustamante-Bello, R., & Ramírez-Mendoza, R. (2020). Explainable navigation system using fuzzy reinforcement learning. International Journal on Interactive Design and Manufacturing (IJIDeM), 14, 1411-1428.
Bhardwaj, A., Kumar, Y., & Hasteer, N. (2021). A hybrid model to investigate perception towards adoption of autonomous vehicles in India. In 2021 IEEE 4th International Conference on Computing, Power and Communication Technologies (GUCON) (pp. 1-5).
Bigdeli, B., Pahlavani, P., & Amirkolaee, H. A. (2021). An ensemble deep learning method as data fusion system for remote sensing multisensor classification. Applied Soft Computing, 110, 107563. https://doi.org/10.1016/j.asoc.2021.107563
Boukhalfa, F., Alami, R., Achab, M., Moulines, E., & Bennis, M. (2023). Deep reinforcement learning algorithms for hybrid V2X communication: A benchmarking study. ArXiv. https://doi.org/10.48550/arXiv.2310.03767
Busch, J. V. S., Latzko, V., Reisslein, M., & Fitzek, F. (2020). Optimised traffic light management through reinforcement learning: Traffic state agnostic agent vs. holistic agent with current V2I traffic state knowledge. IEEE Open Journal of Intelligent Transportation Systems, 1, 201-216.
Chai, X., Cheng, M., Chen, Q., Song, X., & Song, T. (2022). An energy-efficient V2X resource allocation for user privacy protection: A learning-based approach. In Proceedings of the 2022 2nd International Conference on Control and Intelligent Robotics.
Chelghoum, M., Bendiab, G., Benmohammed, M., Shiaeles, S., & Bellini, E. (2023). BTV2P: Blockchain-based trust model for secure vehicles and pedestrians networks. In 2023 IEEE International Conference on Cyber Security and Resilience (CSR) (pp. 148-153).
Chen, C., Liu, Z., Wan, S., Luan, J., & Pei, Q. (2021). Traffic flow prediction based on deep learning in Internet of Vehicles. IEEE Transactions on Intelligent Transportation Systems.
Chen, C.-Y., Ni, J., Lu, S., Cui, X., Chen, P.-Y., Sun, X., Wang, N., Venkataramani, S., Srinivasan, V., Zhang, W., & Gopalakrishnan, K. (2021). ScaleCom: Scalable sparsified gradient compression for communication-efficient distributed training. ArXiv. https://doi.org/10.48550/arXiv.2104.11125
Chen, D., Wang, N., Chen, F., & Pipe, A. (2023). Detrive: Imitation learning with transformer detection for end-to-end autonomous driving. ArXiv.
Cheng, S., Li, L., Chen, X., Fang, S., Wang, X., Wu, X., & Li, W. (2020). Longitudinal autonomous driving based on game theory for intelligent hybrid electric vehicles with connectivity. Applied Energy.
Chi, F., Wang, Y., Nasiopoulos, P., Leung, V. C. M., & Pourazad, M. (2023). Federated semi-supervised learning for object detection in autonomous driving. In 2023 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP) (pp. 1-5).

Yi, J., & Ariffin, S. A. Bin. (2024). Enhancing V2x Communication in Intelligent Vehicles Using Deep Learning Models. International Journal of Academic Research in Business and Social Sciences, 14(10), 1506–1517.