Energy Saving Routing Algorithm for Wireless Sensor Networks Based on Minimum Spanning Hyper Tree

Authors

  • Hongzhang Han School of Computer Engineering, Jiangsu University of Technology, Changzhou 213001, China
  • Peizhong Shi School of Computer Engineering, Jiangsu University of Technology, Changzhou 213001, China

DOI:

https://doi.org/10.15837/ijccc.2023.6.5706

Keywords:

minimum spanning tree algorithm, undirected graph, DRL agent, clustering, multi hop transmission energy consumption

Abstract

With the rapid development of wireless sensor networks (WSNs), designing energy-efficient routing protocols has become essential to prolong network lifetime. This paper proposes a minimum spanning tree-based energy-saving routing algorithm for WSNs. First, sensor nodes are clustered using the LEACH protocol and minimum spanning trees are constructed within clusters and between cluster heads. The spanning tree edge weights are optimized considering transmission energy, residual energy, and energy consumption rate. This avoids channel competition and improves transmission efficiency. An energy-saving routing model is then built whereby deep reinforcement learning (DRL) agents calculate paths optimizing the energy utilization rate. The DRL reward function integrates network performance metrics like energy consumption, delay, and packet loss. Experiments show the proposed approach leads to 10-15W lower average switch energy consumption compared to existing methods. The throughput is high since overloaded shortest paths are avoided. The average path length is close to shortest path algorithms while maintaining energy efficiency. In summary, the proposed minimum spanning tree-based routing algorithm successfully achieves energy-saving goals for WSNs while guaranteeing network performance. It provides an efficient and adaptive routing solution for resource-constrained WSNs.

References

Zhou, C.; Tian, H.; Dong, Y.; Zhong, B. (2021). An energy-saving routing algorithm for opportunity networks based on asynchronous sleeping mode, Computers & Electrical Engineering, 92(4): 107088-107095.

https://doi.org/10.1016/j.compeleceng.2021.107088

Kumar, M.; Mittal, S.; Akhtar, A.K. (2021). Energy efficient clustering and routing algorithm for WSN, Recent Advances in Computer Science and Communications, , 18(1): 14-23.

https://doi.org/10.2174/2213275912666190716112254

Sennan, S.; Ramasubbareddy, S.; Nayyar, A.; Nam, Y.; Abouhawwash, M. (2021). LOA-RPL: Novel energy-efficient routing protocol for the internet of things using lion optimization algorithm to maximize network lifetime, Computers, Materials & Continua, 18(22): 162-169.

https://doi.org/10.32604/cmc.2021.017360

Feroz Khan, A.B. (2023). ECO-LEACH: A Blockchain-Based Distributed Routing Protocol for Energy-Efficient Wireless Sensor Networks. Information Dynamics and Applications, 2(1): 1-7.

https://doi.org/10.56578/ida020101

Liang, C.H.; Ding, C.; Li, J.F.; Zuo, X.Y. (2022). Research on state detection method of electrical equipment based on wireless sensor network signal processing. Traitement du Signal, 39(6): 2237- 2245.

https://doi.org/10.18280/ts.390640

Majid, A. (2021). Lifetime extension of three-dimensional wireless sensor networks, based on gaussian coverage probability. Journal Europén des Systèmes Automatisés

https://doi.org/10.18280/jesa.540406

Natarajan, V.P.; Thandapani, K. (2021). Adaptive time difference of time of arrival in wireless sensor network routing for enhancing quality of service. Instrumentation Mesure Métrologie, 20(6): 301-307.

https://doi.org/10.18280/i2m.200602

Pandith, M.M.; Ramaswamy, N.K.; Srikantaswamy, M.; Ramaswamy, R.K. (2022). A Comprehensive Review of Geographic Routing Protocols in Wireless Sensor Network. Information Dynamics and Applications, 1(1): 14-25.

https://doi.org/10.56578/ida010103

Wei, H.; Li, Z. (2022). Anycast service grooming algorithm of cloud computing based on wireless communication network, Journal of Interconnection Networks, 16(28): 112-116.

https://doi.org/10.1142/S0219265921410292

Kaddi, M.; Banana, A.; Omari, M. (2021). ECO-BAT: A new routing protocol for energy consumption optimization based on BAT algorithm in WSN, Computers, Materials & Continua, 16(2): 168-175.

https://doi.org/10.32604/cmc.2020.012116

Yari, M.; Hadikhani, P.; Yaghoubi, M.; Nowrozy, R.; Asgharzadeh, Z. (2021). An energy efficient routing algorithm for wireless sensor networks using mobile sensors, arXiv preprint arXiv:2103.04119, 19(56): 189-196.

Liu, Y.; Liu, X.; Liu, C.; Liu, M.; Cheng, Q.; Yu, X. (2021). Energy efficient routing algorithm based on harmony search, Journal of Physics: Conference Series, 1828(1): 12181-12189.

https://doi.org/10.1088/1742-6596/1828/1/012181

Li, W.; Zhang, F.M. (2021). Research on energy saving algorithms for wireless sensor networks based on k-means, Transducer and Microsystem Technologies, 40(4): 41-44.

Zhang, H.J. (2022). A Dijkstra algorithm-based clustering routing for wireless sensor networks, Fire Control & Command Control, 47(2): 134-139+145.

Liu, W.C. (2021). Research on routing optimization algorithm of wireless sensor network based on grey prediction, Journal of Qiqihar University (Natural Science Edition), 37(4): 54-58.

Diratie, E.D.; Sharma, D.P.; Agha, K.A. (2021). Energy aware and quality of service routing mechanism for hybrid internet of things network, Computers, 16(8): 182-188.

https://doi.org/10.3390/computers10080093

Valles, R.A.; Marques, A.G.; Sueiro, J.C. (2022). A learning algorithm for energy-efficient routing of prioritized messages in wireless sensor networks, Universidad Rey Juan Carlos, 19(6): 163-178.

Hussein, M.; Alabbasi, W.; Alsadeh, A. (2021). Green distributed algorithm for energy saving in IP wired networks using sleep scheduling, Institute of Advanced Engineering and Science, 19(6): 155-159.

https://doi.org/10.11591/ijece.v11i6.pp5160-5169

Jin, Y.; Zhou, L.; Wei, Q.; Bai, K.; Wang, C.; Li, J.F. (2021). Tree-based multihop routing method for energy efficiency of wireless sensor networks, Journal of Sensors, 18(16): 110-118.

Liu, J.; Shang, G. (2020). Simulation study on cross coverage node routing deletion in wireless sensor networks, Computer Simulation, 37(3): 284-287+300.

Additional Files

Published

2023-10-30

Most read articles by the same author(s)

Obs.: This plugin requires at least one statistics/report plugin to be enabled. If your statistics plugins provide more than one metric then please also select a main metric on the admin's site settings page and/or on the journal manager's settings pages.