Volume 15 , Issue 1 , PP: 115-132, 2025 | Cite this article as | XML | Html | PDF | Full Length Article
Mohanapriya .M 1 * , V. Anusuya 2 , K. Aravindhan 3 , N. Krishnaveni 4 , R. Santhosh 5 , D. Gowthami 6
Doi: https://doi.org/10.54216/JCIM.150110
In VANETs, user equipment (UE) schedules tasks by prioritizing them based on urgency and resource availability to ensure timely and efficient communication and processing. Effective task scheduling and resource allocation in VANET are crucial for maintaining low latency, high reliability, and optimal resource utilization for real-time vehicular communications. However, existing works often face limitations such as inadequate handling of dynamic network conditions, leading to increased latency and suboptimal resource usage. In this paper, we introduced a precise model by proposing Optimizing Task Offloading in Vehicular Network named as OTO framework. Initially, UEs are clustered using an Improved Fuzzy Algorithm (IFA) to reduce latency and energy consumption, with optimal clusters determined by a cluster validity index. Clustering considers distance, location, RSSI, link stability, and trust values, and cluster heads (CH) chosen based on distance, trust, and link stability. Following this, tasks from UE are classified using a Hybrid Deep Learning (HDL) algorithm, with LiteCNN for classification into emergency and non-emergency tasks and LiteLSTM for scheduling to reduce the weight matrix and overfitting. Dual scheduling based on task length, delay sensitivity, QoS, priority, resource consumption, and queue length reduces execution time and latency. Finally, the scheduled tasks are allocated to the optimal edge server based on task load, resource availability, waiting time, and distance using the RL-based Multi-agent Deep Reinforcement Learning (MA-DRL) algorithm, where edge servers act as sellers and users as buyers, reducing latency due to high convergence. In order to, evaluate and prove the efficacy of proposed OTO framework, we performed comparative analysis in terms of several performance metrics where our proposed OTO model outperforms other existing approaches.
Task Scheduling , Game Theory , Resource Allocation , Task Classification , Hybrid Deep Learning (HDL) , Multi-agent Deep Reinforcement Learning (MA-DRL)
[1] Gupta, B. B., Gaurav, A., Marín, E. C., & Alhalabi, W. (2022). Novel graph-based machine learning technique to secure smart vehicles in intelligent transportation systems. IEEE transactions on intelligent transportation systems.
[2] Kumar, N., Poonia, V., Gupta, B. B., & Goyal, M. K. (2021). A novel framework for risk assessment and resilience of critical infrastructure towards climate change. Technological Forecasting and Social Change, 165, 120532.
[3] Devi Murugavel, Kiruthiga, Parthasarathy Ramadass, Rakesh Kumar Mahendran, Arfat Ahmad Khan, Mohd Anul Haq, Sultan Alharby, and Ahmed Alhussen. 2022. "Maintaining Effective Node Chain Connectivity in the Network with Transmission Power of Self-Arranged AdHoc Routing in Cluster Scenario" Electronics 11, no. 15: 2455. https://doi.org/10.3390/electronics11152455.
[4] Ruphitha, S.V., Ambeth Kumar, V.D., “ Predictive analysis of postpartum haemorrhage using deep learning technique”, Advances in Parallel Computing, 2021, 38, pp. 168–172.
[5] Liu, Z., Weng, J., Guo, J., Ma, J., Huang, F., Sun, H., & Cheng, Y. (2021). PPTM: A privacy-preserving trust management scheme for emergency message dissemination in space–air–ground-integrated vehicular networks. IEEE Internet of Things Journal, 9(8), 5943-5956.
[6] Avasalcai, C., Zarrin, B., &Dustdar, S. (2021). EdgeFlow—Developing and deploying latency-sensitive IoT edge applications. IEEE Internet of Things Journal, 9(5), 3877-3888.
[7] Iqbal, U., Tandon, A., Gupta, S., Yadav, A. R., Neware, R., &Gelana, F. W. (2022). A novel secure authentication protocol for IoT and cloud servers. Wireless Communications and Mobile Computing, 2022(1), 7707543.
[8] R. K. Mahendran, S. Rajendran, P. Pandian, R. S. Rathore, F. Benedetto and R. H. Jhaveri, "A Novel Constructive Unceasement Conditional Random Field and Dynamic Bayesian Network Model for Attack Prediction on Internet of Vehicle," in IEEE Access, vol. 12, pp. 24644-24658, 2024, doi: 10.1109/ACCESS.2024.3363420.
[9] Zhang, Y., Zhang, H., Zhou, H., Long, K., & Karagiannidis, G. K. (2022). Resource allocation in terrestrial-satellite-based next generation multiple access networks with interference cooperation. IEEE Journal on Selected Areas in Communications, 40(4), 1210-1221.
[10] Indhumathi, M., Ambeth Kumar, V.D, “ Future prediction of cardiovascular disease using deep learning technique”, Advances in Parallel Computing, 2021, 38, pp. 219–223.
[11] Mohtavipour, S. M., Saeidi, M., &Arabsorkhi, A. (2022). A multi-stream CNN for deep violence detection in video sequences using handcrafted features. The Visual Computer, 38(6), 2057-2072.
[12] Bute, M. S., Fan, P., Zhang, L., & Abbas, F. (2021). An efficient distributed task offloading scheme for vehicular edge computing networks. IEEE Transactions on Vehicular Technology, 70(12), 13149-13161.
[13] Dai, X., Xiao, Z., Jiang, H., & Lui, J. C. (2023). UAV-assisted task offloading in vehicular edge computing networks. IEEE Transactions on Mobile Computing.
[14] Zeng, F., Chen, Y., Yao, L., & Wu, J. (2021). A novel reputation incentive mechanism and game theory analysis for service caching in software-defined vehicle edge computing. Peer-to-Peer Networking and Applications, 14(2), 467-481.
[15] Wu, L., Zhang, R., Li, Q., Ma, C., & Shi, X. (2022). A mobile edge computing-based applications execution framework for Internet of Vehicles. Frontiers of Computer Science, 16(5), 165506.
[16] Rostami, M., Berahmand, K., & Forouzandeh, S. (2021). A novel community detection based genetic algorithm for feature selection. Journal of Big Data, 8(1), 2.
[17] Anagnostaki, A. P., Pavlopoulos, S., Kyriakou, E., &Koutsouris, D. (2002). A novel codification scheme based on the" VITAL" and" DICOM" standards for telemedicine applications. IEEE Transactions on Biomedical Engineering, 49(12), 1399-1411.
[18] T.S. Shanthi, L. Dheepanbalaji, R. Priya, V.D. Ambeth Kumar, Abhishek Kumar, P. Sindhu, Ankit Kumar, Illegal fishing, anomalous vessel behavior detection through automatic identification system, Materials Today: Proceedings, Volume 62, Part 7, 2022, Pages 4685-4690, 2022
[19] R. K. Mahendran, A. Thiyagarajan, A. G. A and K. P, "Multi-Modal Visual Features Perception Technology for Internet of Vehicles (IoV)," 2024 International Conference on Emerging Smart Computing and Informatics (ESCI), Pune, India, 2024, pp. 1-5, doi: 10.1109/ESCI59607.2024.10497246.
[20] Ye, J., Zhan, J., & Xu, Z. (2020). A novel decision-making approach based on three-way decisions in fuzzy information systems. Information Sciences, 541, 362-390.
[21] Sherubha, “Graph Based Event Measurement for Analyzing Distributed Anomalies in Sensor Networks”, Sådhanå(Springer), 45:212, https://doi.org/10.1007/s12046-020-01451-w
[22] Piyush K. Pareek, Pixel Level Image Fusion in Moving objection Detection and Tracking with Machine Learning “,Fusion: Practice and Applications, Volume 2 , Issue 1 , PP: 42-60, 2020
[23] Shivam Grover, Kshitij Sidana, Vanita Jain, “Egocentric Performance Capture: A Review”, Fusion: Practice and Applications, Volume 2, Issue 2 , PP: 64-73, 2020.
[24] Abdel Nasser H. Zaied, Mahmoud Ismail and Salwa El- Sayed, A Survey on Meta-heuristic Algorithms for Global Optimization Problems, Journal of Intelligent Systems and Internet of Things,Volume 1 , Issue 1 , PP: 48-60, 2020
[25] Mahmoud H.Alnamoly, Ahmed M. Alzohairy, Ibrahim M. El-Henawy, “A survey on gel images analysis software tools, Journal of Intelligent Systems and Internet of Things,Volume 1 , Issue 1 , PP: 40-47, 2021.
[26] S. Hemamalini ,V. D. Ambeth Kumar ,R. Venkatesan,S. Malathi. (2023). Relevance Mapping based CNN model with OSR-FCA Technique for Multi-label DR Classification. Journal of Fusion: Practice and Applications, 11 ( 2 ), 90-110.
[27] C. S. Manigandaa,V. D. Ambeth Kumar,G. Ragunath,R. Venkatesan,N. Senthil Kumar. (2023). De-Noising and Segmentation of Medical Images using Neutrophilic Sets. Journal of Fusion: Practice and Applications, 11 ( 2 ), 111-123.