Cluster Head Selection Method for Edge Computing WSN Based on Improved Sparrow Search Algorithm
Author:
Qiu Shaoming1, Zhao Jiancheng1ORCID, Zhang Xuecui2, Li Ao1ORCID, Wang Yahui1ORCID, Chen Fen1ORCID
Affiliation:
1. Communication and Network Laboratory, Dalian University, Dalian 116622, China 2. North Automatic Control Technology Institute, Taiyuan 030006, China
Abstract
Sensor nodes are widely distributed in the Internet of Things and communicate with each other to form a wireless sensor network (WSN), which plays a vital role in people’s productivity and life. However, the energy of WSN nodes is limited, so this paper proposes a two-layer WSN system based on edge computing to solve the problems of high energy consumption and short life cycle of WSN data transmission and establishes wireless energy consumption and distance optimization models for sensor networks. Specifically, we propose the optimization objective of balancing load and distance factors. We adopt an improved sparrow search algorithm to evenly distribute sensor nodes in the system to reduce resource consumption, consumption, and network life. Through the simulation experiment, our method is illustrated, effectively reducing the network’s energy consumption by 26.8% and prolonging the network’s life cycle.
Funder
Equipment Development Department of the Central Military Commission Dalian University
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
Reference34 articles.
1. A review paper on wireless sensor network techniques in Internet of Things (IoT);Gulati;Mater. Today Proc.,2022 2. Majid, M., Habib, S., Javed, A.R., Rizwan, M., Srivastava, G., Gadekallu, T.R., and Lin, J.C.W. (2022). Applications of Wireless Sensor Networks and Internet of Things Frameworks in the Industry Revolution 4.0: A Systematic Literature Review. Sensors, 22. 3. Clustering objectives in wireless sensor networks: A survey and research direction analysis;Shahraki;Comput. Netw.,2020 4. Qiu, S., Zhao, J., Lv, Y., Dai, J., Chen, F., Wang, Y., and Li, A. (2022). Digital-Twin-Assisted Edge-Computing Resource Allocation Based on the Whale Optimization Algorithm. Sensors, 22. 5. Jararweh, Y., Doulat, A., AlQudah, O., Ahmed, E., Al-Ayyoub, M., and Benkhelifa, E. (2016, January 16–18). The future of mobile cloud computing: Integrating cloudlets and Mobile Edge Computing. Proceedings of the 2016 23rd International Conference on Telecommunications (ICT), Thessaloniki, Greece.
|
|