Node clustering and data aggregation in wireless sensor network using sailfish optimization

被引:3
作者
Amutha R. [1 ]
Sivasankari G.G. [1 ]
Venugopal K.R. [2 ]
机构
[1] Department of CSE, AMC Engineering College, Bengaluru
[2] Bangalore University, Bengaluru
关键词
Accuracy; Clustering; Data aggregation; Hyperparameter; SFO; WSN;
D O I
10.1007/s11042-023-15225-z
中图分类号
学科分类号
摘要
Wireless sensor networks (WSN) are an assortment of sensor nodes that are used in multiple fields. Wireless sensor networks, often known as WSNs, have garnered much interest recently owing to their limitless potential. Because the WSN field is barely ten years old and WSN has typical characteristics and constraints, there are many problems associated with WSN that need to be studied, analyzed, and solved as well as many challenges that need to be met for its widespread use and easy acceptance by users. These problems and challenges can be attributed to WSNs having typical characteristics and constraints. The growth of WSN technology is limited by lifetime issues. A major portion of power is wasted by forwarding redundant data from the sensor nodes (SN) to the base station (BS). So, a specific and accurate data aggregation technique is needed for successful WSN use. In this work, two major contributions are proposed. Initially, Sail Fish Optimization (SFO) based on cluster head selection algorithm was introduced for clustering. Then, an improved SVM classification algorithm was proposed for data aggregation. The hyperparameters of SVM are adjusted by using Sailfish Optimization. Sailfish Optimization is one of the many nature-inspired optimization techniques. It is based on the hunting nature of sailfish in oceans. In comparison to existing algorithms, the proposed algorithm’s performance is measured in terms of delay, energy, packet delivery ratio, and data classification accuracy compared to other algorithms. The proposed work achieves the overhead with minimal value of 5.56% compared to existing methods. © 2023, The Author(s), under exclusive licence to Springer Science+Business Media, LLC, part of Springer Nature.
引用
收藏
页码:44107 / 44122
页数:15
相关论文
共 27 条
  • [11] Zheng J., Wang P., Li C., Distributed data aggregation using slepian-wolf coding in cluster-based wireless sensor networks, IEEE Trans Veh Technol, 59, 5, pp. 2564-2574, (2010)
  • [12] Kamalesh S., Ganesh Kumar P., Data aggregation in wireless sensor network using SVM-based failure detection and loss recovery, J Exp Theor Artif Intell, 29, 1, pp. 133-147, (2017)
  • [13] Maivizhi R., Yogesh P., Spatial correlation based data redundancy elimination for data aggregation in wireless sensor networks, 2020 International Conference on Innovative Trends in Information Technology (ICITIIT), Kottayam, India, pp. 1-5, (2020)
  • [14] Miranda K., Ramos V., Improving data aggregation in wireless sensor networks with time series estimation, IEEE Lat Am Trans, 14, 5, pp. 2425-2432, (2016)
  • [15] Mohanaradhya S.D.K.A., Novel Approaches to Enhance Wireless Sensor Network Life Time by Even Distribution of Cluster Heads and Avoiding Redundant Data, 2019 1St International Conference on Advanced Technologies in Intelligent Control, Environ Comput Commun Eng (ICATIECE), (2019)
  • [16] Morell A., Correa M.B., Vicario J.L., Data Aggregation and Principal Component Analysis in WSNs, IEEE Trans Wirel Commun, 15, 6, pp. 3908-3919, (2016)
  • [17] Nyo M.T., Mebarek-Oudina F., Hlaing S.S., Khan N.A., Otsu’s thresholding technique for MRI image brain tumor segmentation, Multimed Tools Appl, pp. 1-13, (2022)
  • [18] Ram M.S., Rao K.N., Basha S.J., Cluster Head and Optimal Path Slection Using K-GA and T-FA Algorithms for Wireless Sensor Networks, 2020 4Th International Conference on Electronics, Communication and Aerospace Technology (ICECA), (2020)
  • [19] Ren F., Zhang J., Wu Y., He T., Chen C., Lin C., Attribute-Aware Data Aggregation Using Potential-Based Dynamic Routing in Wireless Sensor Networks, IEEE Trans Parallel Distrib Syst, 24, 5, pp. 881-892, (2013)
  • [20] Roy N.R., Chandra P., EEDAC-WSN: Energy Efficient Data Aggregation in Clustered WSN, 2019 International Conference on Automation, Computational and Technology Management (ICACTM), (2019)