Abstract
In recent years, with the rapid growth of Internet of Things (IoT) and cloud services having received special attention from the research community across the world. IoT provides a platform of creating a world connected through internet. The implementation of smart devices collects information from our surroundings and works as per our needs. The implementation of IoT is very challenging as it requires the use of different new technologies like the emergence of fog and edge computing. The growth of fog and edge computing introduces many new requirements that needs to be investigated. The line monitoring system requirements for edge computing scenarios are not yet fully accomplished. The prime focus behind this study is to identify the challenges in the field of line monitoring within the application based on edge computing and to present the requirements of line monitoring for adaptive applications depending on edge computing frameworks. In this article we describes the architecture of fog and edge computing and presented their benefits among each other. The objective behind this study is to study the evolution of edge computing and present their benefits. The main contribution of this article is to present the layered architecture study for fog and edge computing. Moreover this article presents the key differences of fog and edge computing. On comparison with cloud computing, the edge computing performs the processing and storage on network edge closer to the user. The latest advances in the edge computing states that edge technology is an optimal solution for issues like latency, data privacy and bandwidth requirements.
Similar content being viewed by others
References
Armbrust, M., Fox, A., Griffith, R., Joseph, A. D., Katz, R., Konwinski, A., & Zaharia, M. (2010). A view of cloud computing. Communications of the ACM, 53(4), 50–58.
Dillon, T., Wu, C., & Chang, E. (2010). Cloud computing: issues and challenges. In 2010 24th IEEE international conference on advanced information networking and applications (pp. 27–33).
Li, H., Dong, M., Ota, K., & Guo, M. (2016). Pricing and repurchasing for big data processing in multi-clouds. IEEE Transactions on Emerging Topics in Computing, 4(2), 266–277.
Stojmenovic, I., & Wen, S. (2014). The fog computing paradigm: Scenarios and security issues. In 2014 federated conference on computer science and information systems (pp. 1–8). IEEE.
Shi, W., Cao, J., Zhang, Q., Li, Y., & Xu, L. (2016). Edge computing: Vision and challenges. IEEE Internet of Things Journal, 3(5), 637–646.
Mahmud, R., Kotagiri, R., & Buyya, R. (2018). Fog computing: A taxonomy, survey and future directions. In B. Di Martino, K.-C. Li, L. T. Yang, & A. Esposito (Eds.), Internet of everything (pp. 103–130). Singapore: Springer.
Lee, I., & Lee, K. (2015). The Internet of Things (IoT): Applications, investments, and challenges for enterprises. Business Horizons, 58(4), 431–440.
Hu, Y. C., Patel, M., Sabella, D., Sprecher, N., & Young, V. (2015). Mobile edge computing—A key technology towards 5G. ETSI white paper, 11(11), 1–16.
Marston, S., Li, Z., Bandyopadhyay, S., Zhang, J., & Ghalsasi, A. (2011). Cloud computing—The business perspective. Decision Support Systems, 51(1), 176–189.
Benazzouz, Y., Munilla, C., Günalp, O., Gallissot, M., & Gürgen, L. (2014). Sharing user IoT devices in the cloud. In 2014 IEEE world forum on internet of things (WF-IoT) (pp. 373–374). IEEE.
Khan, M. A., & Salah, K. (2018). IoT security: Review, blockchain solutions, and open challenges. Future Generation Computer Systems, 82, 395–411.
Mao, Y., You, C., Zhang, J., Huang, K., & Letaief, K. B. (2017). A survey on mobile edge computing: The communication perspective. IEEE Communications Surveys and Tutorials, 19(4), 2322–2358.
Mach, P., & Becvar, Z. (2017). Mobile edge computing: A survey on architecture and computation offloading. IEEE Communications Surveys and Tutorials, 19(3), 1628–1656.
Zhang, K., Mao, Y., Leng, S., Zhao, Q., Li, L., Peng, X., & Zhang, Y. (2016). Energy-efficient offloading for mobile edge computing in 5G heterogeneous networks. IEEE Access, 4, 5896–5907.
Pellicer, S., Santa, G., Bleda, A. L., Maestre, R., Jara, A. J., & Skarmeta, A. G. (2013). A global perspective of smart cities: A survey. In 2013 Seventh International Conference on Innovative Mobile and Internet Services in Ubiquitous Computing (pp. 439–444). IEEE.
Akcin, M., Kaygusuz, A., Karabiber, A., Alagoz, S., Alagoz, B. B., & Keles, C. (2016). Opportunities for energy efficiency in smart cities. In 2016 4th International Istanbul Smart Grid Congress and Fair (ICSG) (pp. 1–5). IEEE.
Polianytsia, A., Starkova, O., & Herasymenko, K. (2016). Survey of hardware IoT platforms. In 2016 Third International Scientific-Practical Conference Problems of Infocommunications Science and Technology (PIC S&T) (pp. 152–153). IEEE.
Kaur, N., & Sood, S. K. (2015). An energy-efficient architecture for the Internet of Things (IoT). IEEE Systems Journal, 11(2), 796–805.
Kaur, K., Garg, S., Aujla, G. S., Kumar, N., Rodrigues, J. J., & Guizani, M. (2018). Edge computing in the industrial internet of things environment: Software-defined-networks-based edge-cloud interplay. IEEE Communications Magazine, 56(2), 44–51.
Beck, M. T., Werner, M., Feld, S., & Schimper, S. (2014). Mobile edge computing: A taxonomy. In Proc. of the Sixth International Conference on Advances in Future Internet (pp. 48–55). Citeseer.
Dolui, K., & Datta, S. K. (2017). Comparison of edge computing implementations: Fog computing, cloudlet and mobile edge computing. In 2017 Global Internet of Things Summit (GIoTS) (pp. 1–6). IEEE.
Li, H., Ota, K., & Dong, M. (2018). Learning IoT in edge: Deep learning for the Internet of Things with edge computing. IEEE Network, 32(1), 96–101.
Varghese, B., Wang, N., Barbhuiya, S., Kilpatrick, P., & Nikolopoulos, D. S. (2016). Challenges and opportunities in edge computing. In 2016 IEEE International Conference on Smart Cloud (SmartCloud) (pp. 20–26). IEEE.
Tran, T. X., Hajisami, A., Pandey, P., & Pompili, D. (2017). Collaborative mobile edge computing in 5G networks: New paradigms, scenarios, and challenges. IEEE Communications Magazine, 55(4), 54–61.
Samie, F., Tsoutsouras, V., Bauer, L., Xydis, S., Soudris, D. & Henkel, J. (2016). Computation offloading and resource allocation for low-power IoT edge devices. In 2016 IEEE 3rd World Forum on Internet of Things (WF-IoT) (pp. 7–12). IEEE.
Al-Turjman, F. (2019). 5G-enabled devices and smart-spaces in social-IoT: An overview. Future Generation Computer Systems, 92, 732–744.
Elijah, O., Rahman, T. A., Orikumhi, I., Leow, C. Y., & Hindia, M. N. (2018). An overview of Internet of Things (IoT) and data analytics in agriculture: Benefits and challenges. IEEE Internet of Things Journal, 5(5), 3758–3773.
Hwang, Y. H. (2015). IoT security and privacy: Threats and challenges. In Proceedings of the 1st ACM workshop on IoT privacy, trust, and security (pp. 1–1).
Nastic, S., Rausch, T., Scekic, O., Dustdar, S., Gusev, M., Koteska, B., & Prodan, R. (2017). A serverless real-time data analytics platform for edge computing. IEEE Internet Computing, 21(4), 64–71.
Al-Ali, A. R., Zualkernan, I. A., Rashid, M., Gupta, R., & AliKarar, M. (2017). A smart home energy management system using IoT and big data analytics approach. IEEE Transactions on Consumer Electronics, 63(4), 426–434.
Mao, Y., Zhang, J., & Letaief, K. B. (2016). Dynamic computation offloading for mobile-edge computing with energy harvesting devices. IEEE Journal on Selected Areas in Communications, 34(12), 3590–3605.
Guo, M., Li, L., & Guan, Q. (2019). Energy-efficient and delay-guaranteed workload allocation in IoT-edge-cloud computing systems. IEEE Access, 7, 78685–78697.
Cao, K., Li, L., Cui, Y., Wei, T., & Hu, S. (2020). Exploring placement of heterogeneous edge servers for response time minimization in mobile edge-cloud computing. IEEE Transactions on Industrial Informatics. https://doi.org/10.1109/TII.2020.2975897.
Zhu, Z., Peng, J., Gu, X., Li, H., Liu, K., Zhou, Z., & Liu, W. (2018). Fair resource allocation for system throughput maximization in mobile edge computing. IEEE Access, 6, 5332–5340.
Wang, T., Zhang, G., Liu, A., Bhuiyan, M. Z. A., & Jin, Q. (2018). A secure IoT service architecture with an efficient balance dynamics based on cloud and edge computing. IEEE Internet of Things Journal, 6(3), 4831–4843.
Mao, S., Leng, S., Yang, K., Zhao, Q. & Liu, M. (2017). Energy efficiency and delay tradeoff in multi-user wireless powered mobile-edge computing systems. In GLOBECOM 2017–2017 IEEE Global Communications Conference (pp. 1–6). IEEE.
Lee, Y. C., & Zomaya, A. Y. (2012). Energy efficient utilization of resources in cloud computing systems. The Journal of Supercomputing, 60(2), 268–280.
Sardellitti, S., Scutari, G., & Barbarossa, S. (2015). Joint optimization of radio and computational resources for multicell mobile-edge computing. IEEE Transactions on Signal and Information Processing over Networks, 1(2), 89–103.
Li, X., Li, D., Wan, J., Liu, C., & Imran, M. (2018). Adaptive transmission optimization in SDN-based industrial Internet of Things with edge computing. IEEE Internet of Things Journal, 5(3), 1351–1360.
Long, C., Cao, Y., Jiang, T., & Zhang, Q. (2017). Edge computing framework for cooperative video processing in multimedia IoT systems. IEEE Transactions on Multimedia, 20(5), 1126–1139.
Casado-Vara, R., de la Prieta, F., Prieto, J., & Corchado, J. M. (2018). Blockchain framework for IoT data quality via edge computing. In Proceedings of the 1st Workshop on Blockchain-enabled Networked Sensor Systems (pp. 19–24).
Vimal, S., Kalaivani, L., Kaliappan, M., Suresh, A., Gao, X. Z., & Varatharajan, R. (2020). Development of secured data transmission using machine learning-based discrete-time partially observed Markov model and energy optimization in cognitive radio networks. Neural Computing and Applications, 32(1), 151–161.
Vimal, S., Kalaivani, L., & Kaliappan, M. (2019). Collaborative approach on mitigating spectrum sensing data hijack attack and dynamic spectrum allocation based on CASG modeling in wireless cognitive radio networks. Cluster Computing, 22(5), 10491–10501.
Subbulakshmi, P., & Vimal, S. (2016). Secure data packet transmission in manet using enhanced identity-based cryptography (EIBC). International Journal of New Technologies in Science and Engineering, 3(12), 35–42.
Vimal, S., Khari, M., Dey, N., Crespo, R. G., & Robinson, Y. H. (2020). Enhanced resource allocation in mobile edge computing using reinforcement learning based MOACO algorithm for IIOT. Computer Communications, 151, 355–364.
Vimal, S., Khari, M., Crespo, R. G., Kalaivani, L., Dey, N., & Kaliappan, M. (2020). Energy enhancement using multiobjective ant colony optimization with Double Q learning algorithm for IoT based cognitive radio networks. Computer Communications, 154, 481–490.
Robinson, Y. H., Vimal, S., Julie, E. G., Khari, M., Expósito-Izquierdo, C., & Martínez, J. (2020). Hybrid optimization routing management for autonomous underwater vehicle in the internet of underwater things. Earth Science Informatics. https://doi.org/10.1007/s12145-020-00538-6.
Pasupathi, S., Vimal, S., Harold-Robinson, Y., Khari, M., Verdú, E., & Crespo, R. G. (2020). Energy efficiency maximization algorithm for underwater Mobile sensor networks. Earth Science Informatics. https://doi.org/10.1007/s12145-020-00478-1.
Annamalai, S., Udendhran, R., & Vimal, S. (2019). An intelligent grid network based on cloud computing infrastructures. In Novel Practices and Trends in Grid and Cloud Computing (pp. 59–73). IGI Global.
Annamalai, S., Udendhran, R., & Vimal, S. (2019). Cloud-based predictive maintenance and machine monitoring for intelligent manufacturing for automobile industry. In Novel Practices and Trends in Grid and Cloud Computing (pp. 74–89). IGI Global.
Vimal, S., Suresh, A., Subbulakshmi, P., Pradeepa, S., & Kaliappan, M. (2020). Edge Computing-Based Intrusion Detection System for Smart Cities Development Using IoT in Urban Areas. In Internet of Things in Smart Technologies for Sustainable Urban Development (pp. 219–237). Springer, Cham.
Kanagachidambaresan, G. R., Maheswar, R., Manikandan, V., & Ramakrishnan, K. (Eds.). (2020). Internet of Things in Smart Technologies for Sustainable Urban Development. Cham: Springer.
Gopikumar, S., Raja, S., Robinson, Y. H., Shanmuganathan, V., Chang, H., & Rho, S. (2020). A method of landfill leachate management using internet of things for sustainable smart city development. Sustainable Cities and Society, 2020, 102521.
Sharma, A., Singh, P. K., Sharma, A., & Kumar, R. (2019). An efficient architecture for the accurate detection and monitoring of an event through the sky. Computer Communications, 148, 115–128.
Sharma, A., Singh, P. K., & Kumar, Y. (2020). An integrated fire detection system using IoT and image processing technique for smart cities. Sustainable Cities and Society, 61, 102332.
Kumar, D., Sharma, A., Kumar, R., & Sharma, N. (2019). Restoration of the Network for Next Generation (5G) Optical Communication Network. In 2019 International Conference on Signal Processing and Communication (ICSC) (pp. 64–68). IEEE.
Sharma, A., Tomar, R., Chilamkurti, N., & Kim, B. G. (2020). Blockchain based smart contracts for internet of medical things in e-healthcare. Electronics, 9(10), 1609.
Sharma, A., & Kumar, R. (2019). Computation of the reliable and quickest data path for healthcare services by using service-level agreements and energy constraints. Arabian Journal for Science and Engineering, 44(11), 9087–9104.
Barshandeh, S., Piri, F., & Sangani, S. R. (2020). HMPA: An innovative hybrid multi-population algorithm based on artificial ecosystem-based and Harris Hawks optimization algorithms for engineering problems. Engineering with Computers. https://doi.org/10.1007/s00366-020-01120-w.
Barshandeh, S., & Haghzadeh, M. (2020). A new hybrid chaotic atom search optimization based on tree-seed algorithm and Levy flight for solving optimization problems. Engineering with Computers. https://doi.org/10.1007/s00366-020-00994-0.
Dhiman, G., & Kumar, V. (2017). Spotted hyena optimizer: A novel bio-inspired based metaheuristic technique for engineering applications. Advances in Engineering Software, 114, 48–70.
Dhiman, G., & Kumar, V. (2018). Emperor penguin optimizer: A bio-inspired algorithm for engineering problems. Knowledge-Based Systems, 159, 20–50.
Dhiman, G., & Kumar, V. (2018). Multi-objective spotted hyena optimizer: A multi-objective optimization algorithm for engineering problems. Knowledge-Based Systems, 150, 175–197.
Dhiman, G., & Kumar, V. (2019). Seagull optimization algorithm: Theory and its applications for large-scale industrial engineering problems. Knowledge-Based Systems, 165, 169–196.
Dhiman, G., & Kaur, A. (2019). STOA: a bio-inspired based optimization algorithm for industrial engineering problems. Engineering Applications of Artificial Intelligence, 82, 148–174.
Kaur, S., Awasthi, L. K., Sangal, A. L., & Dhiman, G. (2020). Tunicate swarm algorithm: A new bio-inspired based metaheuristic paradigm for global optimization. Engineering Applications of Artificial Intelligence, 90, 103541.
Dhiman, G. (2019). ESA: a hybrid bio-inspired metaheuristic optimization approach for engineering problems. Engineering with Computers. https://doi.org/10.1007/s00366-019-00826-w.
Dhiman, G., & Garg, M. (2020). MoSSE: A novel hybrid multi-objective meta-heuristic algorithm for engineering design problems. Soft Computing. https://doi.org/10.1007/s00500-020-05046-9.
Dhiman, G., Singh, K. K., Slowik, A., Chang, V., Yildiz, A. R., Kaur, A., & Garg, M. (2020). EMoSOA: a new evolutionary multi-objective seagull optimization algorithm for global optimization. International Journal of Machine Learning and Cybernetics. https://doi.org/10.1007/s13042-020-01189-1.
Dhiman, G., Oliva, D., Kaur, A., Singh, K. K., Vimal, S., Sharma, A., & Cengiz, K. (2021). BEPO: A novel binary emperor penguin optimizer for automatic feature selection. Knowledge-Based Systems, 211, 106560.
Dhiman, G., Singh, K. K., Soni, M., Nagar, A., Dehghani, M., Slowik, A., et al. (2020). MOSOA: A new multi-objective seagull optimization algorithm. Expert Systems with Applications, 20, 114150.
Kaur, H., Rai, A., Bhatia, S. S., & Dhiman, G. (2020). MOEPO: A novel Multi-objective Emperor Penguin Optimizer for global optimization: Special application in ranking of cloud service providers. Engineering Applications of Artificial Intelligence, 96, 104008.
Dehghani, M., Montazeri, Z., Dehghani, A., Samet, H., Sotelo, C., Sotelo, D., et al. (2020). DM: Dehghani method for modifying optimization algorithms. Applied Sciences, 10(21), 7683.
Author information
Authors and Affiliations
Corresponding author
Additional information
Publisher's Note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Rights and permissions
About this article
Cite this article
Liu, Y., Sun, Q., Sharma, A. et al. Line Monitoring and Identification Based on Roadmap Towards Edge Computing. Wireless Pers Commun 127, 441–464 (2022). https://doi.org/10.1007/s11277-021-08272-y
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s11277-021-08272-y