A Systematic Review of Internet of Things Routing Protocols with Clustering and Technique for Order of Preference by Similarity to Ideal Solution (2010–2025)
الموضوعات : Majlesi Journal of Telecommunication Devices
Mohamad Ali Azimi
1
,
Mohsen َAshourian
2
,
Farhad Mesrinejad
3
,
Hosein Emami
4
1 -
2 - Islamic Azad University , khorasgan branch
3 - Islamic Azad University ,Tiran branch
4 - Islamic Azad University , mobarake branch
الکلمات المفتاحية: Internet of Things (IoT), routing algorithms, energy efficiency, latency reduction, clustering,
ملخص المقالة :
The Internet of Things (IoT) broadly refers to interconnected objects and devices that can be monitored and controlled via Internet-enabled applications. Despite its rapid growth, IoT networks face significant challenges in ensuring reliable communication and efficient energy utilization, due to factors such as dynamic topology, resource constraints, and heterogeneous network environments. Routing, in particular, remains a critical concern, as conventional protocols often fail to deliver the performance required for large-scale, resource-limited IoT deployments. Energy scarcity at sensor nodes and the need to minimize multi-hop transmissions to the sink node necessitate the design of energy-aware routing algorithms capable of reducing latency and extending network lifetime. This review systematically analyzes recent routing approaches—emphasizing clustering-based methods and multi-criteria decision-making techniques such as TOPSIS—by examining their operational principles, advantages, and limitations. The findings highlight emerging trends and research gaps, with a focus on integrating clustering and TOPSIS weighting methods to improve routing performance in next-generation IoT systems.
• [1] L. Atzori, A. Iera, G. Morabito, “The Internet of Things: A Survey,” Computer Networks, 2010.
[2] A. Al-Fuqaha, M. Guizani, M. Mohammadi, M. Aledhari, M. Ayyash, “Internet of Things: A Survey on Enabling Technologies, Protocols, and Applications,” IEEE Communications Surveys & Tutorials, 2015.
[3] M. R. Poornima, et al., “Energy-aware routing techniques for IoT: A holistic survey,” Journal of Network and Computer Applications, 2023.
[4] P. Bekal, et al., “Energy-efficient routing in wireless sensor networks: A comprehensive review,” IEEE Access, 2024.
[5] A. Sen, R. Jana, P. Mitra, “Entropy-weighted TOPSIS for IoT decision-making,” Telecom (MDPI), 2023.
[6] C. Z. Radulescu, M. Radulescu, “Hybrid SAW/TOPSIS/VIKOR/COPRAS frameworks for complex IoT selections,” Electronics, 2024.
[7] PRISMA 2020—official guideline resource (website/handbook).
[8] W. R. Heinzelman, A. Chandrakasan, H. Balakrishnan, “Energy-Efficient Communication Protocol for Wireless Microsensor Networks (LEACH),” HICSS 2000 / IEEE TWC 2002.
[9] S. Lindsey, C. Raghavendra, “PEGASIS: Power-Efficient Gathering in Sensor Information Systems,” IEEE Aerospace Conference, 2002.
[10] A. Manjeshwar, D. Agrawal, “TEEN: A Routing Protocol for Enhanced Efficiency in WSNs,” IEEE IPDPS, 2001.
[11] O. Younis, S. Fahmy, “HEED: A Hybrid, Energy-Efficient, Distributed Clustering Approach for Ad Hoc Sensor Networks,” IEEE Transactions on Mobile Computing, 2004.
[12] M. Ye, C. Li, G. Chen, J. Wu, “EEUC: An Energy-Efficient Unequal Clustering Mechanism for Wireless Sensor Networks,” Massive Ad Hoc Networking / Ad Hoc Networks, 2005; see also unequal-clustering surveys.
[13] L. Qing, Q. Zhu, M. Wang, “Design of a Distributed Energy-Efficient Clustering Algorithm for Heterogeneous WSNs (DEEC),” Computer Communications, 2006.
[14] L. Abualigah, et al., “Swarm Intelligence to Face IoT Challenges: Survey and Taxonomy,” Sensors, 2023.
[15] M. Jeevanantham, R. Kumar, V. Rajendran, “Distributed neuro-fuzzy routing for IoT smart cities,” Telecommunication Systems, 2024.
[16] C. Wang, et al., “DPFCP: A Distributed PSO-Based Fuzzy Clustering Protocol for Energy Balancing,” Electronics, 2023.
[17] S. S. S. Paulraj, T. Deepa, “Neuro-fuzzy data routing (NFDR) for IoT-enabled WSNs,” Scientific Reports, 2024.
[18] A. Musaddiq, et al., “Reinforcement learning-based routing/resource management in IoT: A survey,” Sensors, 2023.
[19] N. Liu, et al., “EDRP-GTDQN: Game-theoretic DRL for adaptive IoT routing,” Ad Hoc Networks, 2025.
[20] B. Suh, et al., “Resilient IoT routing with ultra-low latency constraints via DRL,” Electronics, 2025.
[21] LEACH-C overview and analyses in WSN/IoT clustering surveys (2002–2015 corpus).
[22] S. Arjunan, S. Pothula, “A survey on unequal clustering in WSN,” Journal of King Saud University – Computer and Information Sciences, 2019.
[23] C. Z. Radulescu, M. Radulescu, “Multi-criteria decision frameworks for IoT,” Electronics, 2024.
[24] Entropy-weighted TOPSIS + Katz centrality for CH selection (graph-aware MCDM), 2024 (workshop/proceedings).
[25] R. Somula, et al., “SWARAM: Osprey optimization for cluster-head selection,” Sensors, 2024.
[26] C. Lei, et al., “Energy-aware IoT routing using PSO + fuzzy clustering,” SpringerOpen / Journal of Engineering Applications, 2024.
[27] P. Suresh Kumar, et al., “Fuzzy clustering with optimal routing (FCOR) for IoT,” Journal of Intelligent & Fuzzy Systems, 2023.
[28] C. Wang, et al., “Distributed PSO-fuzzy clustering for large-scale IoT,” 2023 (open-access).
[29] P. Chithaluru, et al., “Energy-balanced neuro-fuzzy dynamic clustering,” Sustainable Computing: Informatics and Systems, 2023.
[30] S. S. S. Paulraj, et al., “Neuro-fuzzy cluster formation for IoT routing,” International Journal of Communication Systems, 2025.
[31] S. Jeevanantham, et al., “Distributed neuro-fuzzy routing for IoT smart-city deployments,” Telecommunication Systems, 2024.
[32] L. Yang, et al., “Secure clustering with fuzzy trust and outlier detection,” arXiv preprint, 2022.
[33] T. Winter, et al., “RPL: IPv6 Routing Protocol for Low-Power and Lossy Networks,” RFC 6550, IETF, 2012 (and subsequent OF/updates literature).
[34] P. Thubert, et al., “IPv6 over TSCH (6TiSCH) Architecture,” RFC 9030, IETF, 2021 (incl. minimal scheduling function body of work).
[35] H. Fotouhi, et al., “Queue-aware objective functions and congestion avoidance for RPL,” studies 2016–2020.
[36] L. T. Tan, et al., “Cross-layer latency minimization in low-power IoT,” Computer Networks / IEEE Access, 2018–2020.
[37] C. Vallati, et al., “6TiSCH inside: MAC–routing co-design and latency,” Sensors, 2019.
[38] M. Gormus, et al., “Opportunistic and multipath forwarding in LLNs,” Ad Hoc Networks, 2017–2020.
[39] S. H. Ahmed, D. Kim, “Software-defined networking for IoT—low-latency routing and control,” IEEE Communications Magazine / IEEE Access, 2021–2023.
[40] N. Gaddour, A. Koubaa, “Multipath extensions to RPL (M-RPL) for congestion avoidance,” International Journal of Communication Systems / Ad Hoc Networks, 2014–2018; follow-ups 2021–2023.
[41] H. Ning, et al., “Fog/edge computing for latency-sensitive IoT analytics,” IEEE Internet of Things Journal / Future Generation Computer Systems, 2021–2023.
[42] Y. Mao, C. You, K. Huang, “Mobile edge computing—task offloading and latency,” Proceedings of the IEEE / IEEE IoT Journal, 2022–2024.
[43] X. Chen, et al., “Joint routing and computation offloading for MEC-IoT,” IEEE Transactions on Mobile Computing, 2023–2024.
[44] Z. Wang, et al., “Deep reinforcement learning for delay-aware routing in IoT,” Ad Hoc Networks / Computer Networks, 2023–2025.
[45] H. Sun, et al., “Actor–critic routing for dynamic IoT with bounded delay,” IEEE Access, 2024–2025.
[46] 3GPP TS 38.xxx and IEEE Communications Magazine articles on URLLC for industrial IoT; TSN integration evaluations, 2022–2024.
[47] L. Wang, et al., “NDN-IoT and CoAP/QUIC for low-latency retrieval,” Computer Communications / IEEE Access, 2023–2024.
[48] M. J. Page, J. E. McKenzie, P. M. Bossuyt, et al., “The PRISMA 2020 statement,” BMJ, 2021.
[49] IEEE Xplore Digital Library (official site), accessed 2025.
[50] Scopus Database (Elsevier), accessed 2025.
[51] Web of Science (Clarivate), accessed 2025.
[52] SpringerLink (Springer), accessed 2025.
[53] B. Kitchenham, et al., “Guidelines for systematic literature reviews in software engineering,” Information & Software Technology, 2009.
