Dynamic Resource Management and Task Offloading Framework for Fog Computing (original) (raw)

References

  1. Rathore, R., Kaushik, P., Sikarwar, S. S., Joshi, H., Mishra, A. K., & Hudda, Y. (2024, March). Intelligent transportation systems make use of fog and edge computing for navigation. In 2024 IEEE International Conference on Interdisciplinary Approaches in Technology and Management for Social Innovation (IATMSI) (Vol. 2, pp. 1–6). IEEE.
  2. Rajkumar, Y., Santhosh Kumar, S.V.N.: A comprehensive survey on communication techniques for the realization of intelligent transportation systems in IoT based smart cities. Peer Peer Netw. Appl. 17(3), 1263–1308 (2024)
    Article Google Scholar
  3. Al-Dulaimy, A., Jansen, M., Johansson, B., Trivedi, A., Iosup, A., Ashjaei, M., Galletta, A., Kimovski, D., Prodan, R., Tserpes, K., Kousiouris, G., Giannakos, C., Brandic, I., Ali, N., Bondi, A.B., Papadopoulos, A.V.: The computing continuum: From IoT to the cloud. Internet of Things 27, 101272 (2024). https://doi.org/10.1016/j.iot.2024.101272
    Article Google Scholar
  4. Goudarzi, M., Rodriguez, M., Sarvi, M., Buyya, R.: μ-DDRL: A QoS-Aware Distributed Deep Reinforcement Learning Technique for Service Offloading in Fog Computing Environments. IEEE Trans. Serv Comput 17(1), 47–59 (2024). https://doi.org/10.1109/TSC.2023.3332308
    Article Google Scholar
  5. Chen, Y., Liu, Z., Zhang, Y., Wu, Y., Chen, X., Zhao, L.: Deep reinforcement learning-based dynamic resource management for mobile edge computing in industrial internet of things. IEEE Trans. Industr. Inf. 17(7), 4925–4934 (2020)
    Article Google Scholar
  6. Patel, M., Bhatt, M., & Patel, A. (2024). Fog Computing for Intelligent Cloud–IoT System: Optimization of Fog Computing in Industry 4.0. Fog Computing for Intelligent Cloud IoT Systems 45–70.
  7. Suganya, B., Gopi, R., Kumar, A.R., Singh, G.: Dynamic task offloading edge-aware optimization framework for enhanced UAV operations on edge computing platform. Sci. Rep. 14(1), 16383 (2024)
    Article Google Scholar
  8. Pakmehr, A. (2024). "Task Offloading in Fog Computing with Deep Reinforcement Learning: Future Research Directions Based on Security and Efficiency Enhancements." arXiv preprint arXiv:2407.19121.
  9. Shen, X., Tang, W.: Deep Reinforcement Learning for Latency-Aware Task Scheduling in Edge Networks. IEEE Internet Things J. 9(4), 2750–2761 (2022)
    Google Scholar
  10. Wang, F., Xu, K.: Adaptive Resource Allocation in Fog Computing: A Multi-Agent Deep Reinforcement Learning Approach. IEEE Trans. Netw. Serv. Manage. 20(2), 315–327 (2023)
    MathSciNet Google Scholar
  11. Latip, R., Aminu, J., Hanafi, Z.M., Kamarudin, S., Gabi, D.: Metaheuristic task offloading approaches for minimization of energy consumption on edge computing: a systematic review. Discover Internet of Things 4(1), 1–30 (2024)
    Article Google Scholar
  12. Zaidi, S., Attalah, M.A., Khamer, L., Calafate, C.T.: Task Offloading Optimization Using PSO in Fog Computing for the internet of Drones. Drones 9(1), 23 (2024)
    Article Google Scholar
  13. Xie, B., Cui, H.: Deep reinforcement learning-based dynamical task offloading for mobile edge computing. J. Supercomput. 81(1), 35 (2025)
    Article Google Scholar
  14. Anand, J., Karthikeyan, B.: Dynamic priority-based task scheduling and adaptive resource allocation algorithms for efficient edge computing in healthcare systems. Results Eng 25, 104342 (2025). https://doi.org/10.1016/j.rineng.2024.104342
    Article Google Scholar
  15. Yang, K., Liu, F.: Delay-Sensitive Task Offloading in Fog Computing Using Reinforcement Learning. IEEE Trans. Green Commun. Netw. 6(1), 123–135 (2022)
    Google Scholar
  16. Zhang, L., Jiang, Y., Zheng, F.-C., Bennis, M., & You, X. (2022). "Computation Offloading and Resource Allocation in F-RANs: A Federated Deep Reinforcement Learning Approach." arXiv preprint arXiv:2206.05881.
  17. Sheikh Sofla, M., Haghi Kashani, M., Mahdipour, E., Faghih Mirzaee, R.: Toward effective offloading mechanisms in fog computing. Multimed. Tools Appl. 81, 1997–2042 (2022). https://doi.org/10.1007/s11042-021-11423-9
    Article Google Scholar
  18. Zhou, Z., Liao, H., Zhao, X., Ai, B., Guizani, M.: Reliable task offloading for vehicular fog computing under information asymmetry and information uncertainty. IEEE Trans. Veh. Technol. 68(9), 8322–8335 (2019)
    Article Google Scholar
  19. Wang, S., Zhang, X., Zhang, Y., Wang, L., Yang, J., Wang, W.: A survey on mobile edge networks: Convergence of computing, caching and communications. Ieee Access 5, 6757–6779 (2017)
    Article Google Scholar
  20. Kazmi, S.A., Dang, T.N., Yaqoob, I., Manzoor, A., Hussain, R., Khan, A., Hong, C.S., Salah, K.: A novel contract theory-based incentive mechanism for cooperative task-offloading in electrical vehicular networks. IEEE Trans. Intell. Transp. Syst. 23(7), 8380–8395 (2021)
    Article Google Scholar
  21. Feng, J., Ren, J., Zhang, H., Wu, Z.: Intelligent Resource Allocation for Edge Computing Using Multi-Agent Reinforcement Learning. IEEE Trans. Mob. Comput. 22(6), 2315–2328 (2023)
    Google Scholar
  22. Zhang, X., Lin, S., Wang, Q.: AI-Driven Predictive Maintenance for IoT Devices in Fog Networks. IEEE Trans. Industr. Inf. 16(3), 1847–1855 (2020)
    Google Scholar
  23. Du, Z., Li, Y., Wang, K.: Federated Learning-Based Computation Offloading in Fog-Edge Networks. IEEE Internet Things J. 10(5), 4502–4515 (2023)
    Google Scholar
  24. Li, J., Wang, P., Wang, K., Huang, M.: Adaptive Learning-Based Stable Matching for Fog Resource Allocation. ACM Trans. Internet Technol. 21(4), 1–15 (2021)
    Article Google Scholar
  25. Priyadarshi, R.: Exploring machine learning solutions for overcoming challenges in IoT-based wireless sensor network routing: a comprehensive review. Wireless Netw. 30(4), 2647–2673 (2024)
    Article MathSciNet Google Scholar
  26. Iftikhar, S. (2024). Artificial Intelligence based Resource Management in Fog Computing (Doctoral dissertation, Queen Mary University of London).
  27. Aimtongkham, P., Musikawan, P., Kongsorot, Y., So-In, C.: A Novel Congestion Control Scheme Using Fuzzy Logic Systems to Enhance the Path Selection Criteria in Routing Protocols for Low-Power and Lossy Networks on the Internet of Things. SN Comput. Sci 5(5), 610 (2024)
    Article Google Scholar
  28. Karunkuzhali, D., Meenakshi, B., & Lingam, K. (2024). A QoS-aware routing approach for Internet of Things-enabled wireless sensor networks in smart cities. Multimed. Tools Appl. 1–27.
  29. Javadpour, A., Sangaiah, A. K., Zaviyeh, H., & Ja’fari, F. (2023). Enhancing energy efficiency in IOT networks through fuzzy clustering and optimization. Mobile Netw. Appl. 1–24.
  30. Liu, W., Gao, Y., Liu, H.: Adaptive Fog Resource Allocation Using AI Algorithms. IEEE Trans. Industr. Inf. 19(2), 1274–1284 (2023)
    Google Scholar
  31. Zhou, Z., Liu, P., Feng, J., Zhang, Y., Mumtaz, S., Rodriguez, J.: Computation resource allocation and task assignment optimization in vehicular fog computing: A contract-matching approach. IEEE Trans. Veh. Technol. 68(4), 3113–3125 (2019)
    Article Google Scholar
  32. Sun, H., Yu, H., Fan, G.: Contract-based resource sharing for time effective task scheduling in fog-cloud environment. IEEE Trans. Netw. Serv. Manage. 17(2), 1040–1053 (2020)
    Article Google Scholar
  33. Toopchinezhad, M. P., & Ahmadi, M. (2024). Deep Reinforcement Learning for Delay-Optimized Task Offloading in Vehicular Fog Computing. arXiv preprint arXiv:2410.03472.
  34. Huang, C., Lin, T., Wang, J.: Adaptive Offloading Strategies in Fog Computing: A Deep Learning Approach. IEEE Trans. Serv. Comput. 13(5), 1078–1089 (2020)
    Google Scholar
  35. Yao, C., Qin, W., Zeng, F.: Reinforcement Learning for QoS-Driven Task Offloading in Fog Computing. IEEE Trans. Netw. Sci Eng 8(4), 3252–3264 (2021)
    Google Scholar
  36. Lee, S., Lee, S.K.: Resource Allocation for Vehicular Fog Computing Using Reinforcement Learning Combined with Heuristic Information. IEEE Internet Things J. 7(12), 11872–11883 (2020)
    Google Scholar
  37. Liu, T., Yu, W., Wu, X.: Adaptive Offloading Using Federated Learning in Fog Environments. IEEE Trans. Cloud Comput. 11(4), 2341–2352 (2023)
    Google Scholar
  38. Zhang, F., Han, G., Li, A., Lin, C., Liu, L., et al.: QoS-Driven Distributed Cooperative Data Offloading and Heterogeneous Resource Scheduling for IIoT. IEEE Internet Things J. 10(2), 1289–1302 (2023)
    Google Scholar
  39. Gao, C., Mohammed, A.S.: A new fuzzy-based nature-inspired routing method for mobile internet of things. Int. J. Mobile Commun. 25(2), 208–228 (2025)
    Article Google Scholar
  40. Trabelsi, M., & Ben Ahmed, S. (2024). Real-Time Task Scheduling and Dynamic Resource Allocation in Fog Infrastructure. Proceedings of the International Conference on Advanced Information Networking and Applications (AINA), Lecture Notes on Data Engineering and Communications Technologies, 2024, pp. 393–403. Springer.
  41. Bensaid, R., Labraoui, N., Saidi, H., Bany Salameh, H.: Securing fog-assisted IoT smart homes: A federated learning-based intrusion detection approach. Springer, Cluster Computing (2025)
    Google Scholar
  42. Hota, L., Nayak, B. P., & Kumar, A. (2025). Machine Learning Algorithms for Optimization and Intelligence in Wireless Networks: WSNs, MANETs, VANETs, and USNs. In 5G and Beyond Wireless Communications (pp. 306–332). CRC Press.

Download references