Advancing Industrial IoT: A Swarm-Intelligent-Based Job Offloading in Edge Computing

Authors

  • Krishan Assistant Professor Department of Electronics and Communication Engineering,Bhagat Phool Singh Mahila Vishwavidyalaya kanpur kalan ,Sonipat, Haryana , India
  • Rajni Assistant Professor (corresponding Author) Electronics and communication engineering University: Deenbandhu Chhotu Ram University of Science and Technology, Murthal, Sonipat
  • Priyanka Associate Professor Department of Electronics and Communication Engineering, Bhagat Phool Singh Mahila Vishwavidyalaya, Khanpur kalan, Sonipat, Haryana, India
  • Prachi Chaudhary Assistant Professor Electronics and Communications Engineering College: DCRUST, Murthal, Sonipat , India

Keywords:

Industrial Internet of Things (IIoT), Edge Computing, Latency, Energy Consumption, Job Offloading, Boosted Beetle Swarm Optimization (BBSO).

Abstract

By integrating detectors, supervision and communication tools into manufacturing processes, the Industrial Internet of Things (IoT) raises productivity, lowers costs and improves the value of products. It is difficult to process enormous amounts of information, which makes it difficult to swiftly transition conventional sectors to edge computing. This paper provides a unique swarm-intelligent technique named boosted beetle swarm optimization (BBSO) for offloading jobs from edge gadgets to edge servers with the lowest latency and energy consumption, taking into account the rapidly growing number of industrialized edge items and heterogeneous edge servers. The presented multi-objective optimization issue considers job performance cost, consumption of energy and latency. The entire cost of assigning each work to a separate mobile edge computing (MEC) server is represented by the fitness coefficient. Using experimentation, the effectiveness of the suggested BBSO-driven offloading technique is contrasted with alternative techniques.

Downloads

Download data is not yet available.

References

Zhao, L., Li, T., Zhang, E., Lin, Y., Wan, S., Hawbani, A., & Guizani, M. (2023). Adaptive Swarm Intelligent Offloading Based on Digital Twin-assisted Prediction in VEC. IEEE Transactions on Mobile Computing.

Pan, I., Abd Elaziz, M., & Bhattacharyya, S. (Eds.). (2020). Swarm intelligence for cloud computing. CRC Press.

Jun, S., Kang, Y., Kim, J., & Kim, C. (2020). Ultra‐low‐latency services in 5G systems: A perspective from 3GPP standards. ETRI journal, 42(5), 721-733.

Liu, X., Qiu, T., Dai, B., Yang, L., Liu, A., & Wang, J. (2020). Swarm-intelligence-based rendezvous selection via edge computing for mobile sensor networks. IEEE Internet of Things Journal, 7(10), 9471-9480.

Guo, F., Tang, B., Kang, L., & Zhang, L. (2021). Mobile edge server placement based on bionic swarm intelligent optimization algorithm. In Collaborative Computing: Networking, Applications and Worksharing: 16th EAI International Conference, CollaborateCom 2020, Shanghai, China, October 16–18, 2020, Proceedings, Part II 16 (pp. 95-111). Springer International Publishing.

Gupta, S., Singh, P., & Singh, R. M. (2023, May). A firefly based approach for scheduling of tasks for fog networks. In 2023 Third International Conference on Secure Cyber Computing and Communication (ICSCCC) (pp. 356-361). IEEE.

Yang, B., Pang, Z., Wang, S., Mo, F., & Gao, Y. (2022). A coupling optimization method of production scheduling and computation offloading for intelligent workshops with cloud-edge-terminal architecture. Journal of Manufacturing Systems, 65, 421-438.

Kashyap, V., Ahuja, R., & Kumar, A. (2022, November). Nature Inspired Meta-Heuristic Algorithms based Load Balancing in Fog Computing Environment. In 2022 Seventh International Conference on Parallel, Distributed and Grid Computing (PDGC) (pp. 396-401). IEEE.

Wang, C., Yu, W., Lu, J., Zhu, F., Fan, L., & Li, S. (2022). UAV-based physical-layer intelligent technologies for 5G-enabled internet of things: A survey. Wireless Communications and Mobile Computing, 2022, 1-5.

Li, H., Liu, L., Duan, X., Li, H., Zheng, P., & Tang, L. (2024). Energy-efficient offloading based on hybrid bio-inspired algorithm for edge-cloud integrated computation. Sustainable Computing: Informatics and Systems, 100972.

Malik, P. K., Sharma, R., Singh, R., Gehlot, A., Satapathy, S. C., Alnumay, W. S., ... & Nayak, J. (2021). Industrial Internet of Things and its applications in industry 4.0: State of the art. Computer Communications, 166, 125-139.

Malik, P. K., Sharma, R., Singh, R., Gehlot, A., Satapathy, S. C., Alnumay, W. S., ... & Nayak, J. (2021). Industrial Internet of Things and its applications in industry 4.0: State of the art. Computer Communications, 166, 125-139.

Christou, I. T., Kefalakis, N., Soldatos, J. K., & Despotopoulou, A. M. (2022). End-to-end industrial IoT platform for Quality 4.0 applications. Computers in Industry, 137, 103591.

Arachchige, P. C. M., Bertok, P., Khalil, I., Liu, D., Camtepe, S., & Atiquzzaman, M. (2020). A trustworthy privacy preserving framework for machine learning in industrial IoT systems. IEEE Transactions on Industrial Informatics, 16(9), 6092-6102.

Singh, J., Gimekar, A., & Venkatesan, S. (2023). An efficient lightweight authentication scheme for human‐centered industrial Internet of Things. International Journal of Communication Systems, 36(12), e4189.

Tripathi, A. K., Sharma, K., Bala, M., Kumar, A., Menon, V. G., & Bashir, A. K. (2020). A parallel military-dog-based algorithm for clustering big data in cognitive industrial internet of things. IEEE Transactions on Industrial Informatics, 17(3), 2134-2142.

Khang, A., Abdullayev, V., Hahanov, V., & Shah, V. (Eds.). (2024). Advanced IoT Technologies and Applications in the Industry 4.0 Digital Economy. CRC Press.

Sun, W., Lei, S., Wang, L., Liu, Z., & Zhang, Y. (2020). Adaptive federated learning and digital twin for industrial internet of things. IEEE Transactions on Industrial Informatics, 17(8), 5605-5614.

Aheleroff, S., Xu, X., Lu, Y., Aristizabal, M., Velásquez, J. P., Joa, B., & Valencia, Y. (2020). IoT-enabled smart appliances under industry 4.0: A case study. Advanced engineering informatics, 43, 101043.

Sisinni, E., Saifullah, A., Han, S., Jennehag, U., & Gidlund, M. (2018). Industrial internet of things: Challenges, opportunities, and directions. IEEE transactions on industrial informatics, 14(11), 4724-4734.

Khalil, R. A., Saeed, N., Masood, M., Fard, Y. M., Alouini, M. S., & Al-Naffouri, T. Y. (2021). Deep learning in the industrial internet of things: Potentials, challenges, and emerging applications. IEEE Internet of Things Journal, 8(14), 11016-11040.

Liang, W., Tang, M., Long, J., Peng, X., Xu, J., & Li, K. C. (2019). A secure fabric blockchain-based data transmission technique for industrial Internet-of-Things. IEEE Transactions on Industrial Informatics, 15(6), 3582-3592.

You, Q., & Tang, B. (2021). Efficient task offloading using particle swarm optimization algorithm in edge computing for industrial internet of things. Journal of Cloud Computing, 10, 1-11.

Downloads

Published

24.03.2024

How to Cite

Krishan, K., Rajni, R., Priyanka, P., & Chaudhary, P. . (2024). Advancing Industrial IoT: A Swarm-Intelligent-Based Job Offloading in Edge Computing. International Journal of Intelligent Systems and Applications in Engineering, 12(19s), 842–849. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/5219

Issue

Section

Research Article