Energy Consumption Management in IoT by Load Balancing at Near-Root Nodes in RPL Protocol
Downloads
Managing energy consumption in Internet of Things constitutes a challenge for researchers. Many existing works address this question. Some approaches propose solutions based on artificial intelligence. Other studies are based on improving existing routing protocols. The results obtained are promising and the energy gains recorded are remarkable. However, the majority of works in the literature propose a global optimization approach in the network to manage traffic flow. In doing so, we are led to neglect the bottlenecks especially around the convergence point. The objective of this work is to propose an improvement of RPL protocol, a popular routing protocol in Internet of Things.
Djemai, T. (2021). Optimized placement of services in fog computing and internet of things architectures under energy, QoS and mobility constraints (Doctoral dissertation, Paul Sabatier-Toulouse III University)
BENCHALGO, S., & CHIKH, A. (2023). Visualization of time series in industrial systems (Doctoral dissertation, Director: Ms. OUHOUD Amina)
Kurode, E., Vora, N., Patil, S., & Attar, V. (2021, August). MANET routing protocols with emphasis on zone routing protocol–an overview. In 2021 IEEE Region 10 Symposium (TENSYMP) (pp. 1-6). IEEE
Musaddiq, A., Zikria, YB, Zulqarnain, & Kim, SW (2020). Routing protocol for Low-Power and Lossy Networks for heterogeneous traffic networks. EURASIP Journal on Wireless Communications and Networking, 2020, 1-23
Fatiha, KHALIFA (2023). Advanced Networks
Tanguy ROPITAULT, (2016). RPL routing protocol. Engineering Techniques, (TE 7 516), 1-29
Winter, T., Thubert, P., Brandt, A., Hui, J., Kelsey, R., Levis, P., ... & Alexander, R. (2012). RPL: IPv6 routing protocol for low-power and lossy networks (No. rfc6550)
THUBERT (P.). – Objective function zero for the routing protocol for low-power andlossynetworks(RPL).https://tools.ietf.org/html/rfc6552
GNAWALI (W.). – The minimum rank with Hysteresis objectiveFunctionhttps://tools.ietf.org/html/rfc6719
C. Cobarzan, J. Montavont, and T. Noel, “Analysis and performance evaluation of RPL under mobility,” in IEEE Symposium on Computers and Communications (ISCC), pp. 1–6, 2014
Khalil, A., Mbarek, N., & Togni, O. (2022). Optimization of energy consumption of IoT devices, ISTE Group, pp.79-106
Bekkai, B. (2023). The Discovery of Services in the Internet of Things (Doctoral dissertation, Echahid Cheikh Larbi-Tebessi-Tébessa University).
Osman Abdi, M. (2020). Optimization of the performance of a wireless sensor network for low energy and short latency data collection applications (Doctoral dissertation, École de Technologie Supérieure).
Alilou, M., Sangar, AB, Majidzadeh, K., & Masdari, M. (2023). QFS-RPL: RPL Based Energy and Mobility Aware Multi Path Routing Protocol for the Internet of Mobile Things Data Transfer Infrastructures.
Kala Venugopal, TG Basavaraju, A Combined Metric Objective Function for RPL Load Balancing in Internet of Things, International Journal of Internet of Things, Vol. 10 No. 1, 2022, pp. 22-31. doi: 10.5923/j.ijit.20221001.02.
Simha, SV, Mathew, R., Sahoo, S., & Biradar, RC (2020, June). A review of RPL protocol using contiki operating system. In 2020 4th International Conference on Trends in Electronics and Informatics (ICOEI)(48184) (pp. 259-264). IEEE.
Abdulkarem, M., Samsudin, K., A. Rasid, MF, & Rokhani, FZ (2022). Contiki IEEE 802.15. 4 MAC Layer Protocols: Implementation and Evaluation of Node's Throughput and Power Consumption. Wireless Personal Communications, 124(3), 2367-2390.
Solapure, S. S., & Kenchannavar, H. H. (2020). Design and analysis of RPL objective functions using variant routing metrics for IoT applications. Wireless Networks, 26(6), 4637-4656.
Darabkh, K. A., Al-Akhras, M., Zomot, J. N., & Atiquzzaman, M. (2022). RPL routing protocol over IoT: A comprehensive survey, recent advances, insights, bibliometric analysis, recommendations, and future directions. Journal of Network and Computer Applications, 207, 103476.
Cao, K., Xu, G., Zhou, J., Wei, T., Chen, M., & Hu, S. (2018). QoS-adaptive approximate real-time computation for mobility-aware IoT lifetime optimization. IEEE Transactions on Computer-Aided Design of Integrated. Circuits and Systems, 38(10), 1799-1810.