Browse > Article
http://dx.doi.org/10.3837/tiis.2022.04.008

Lifetime Escalation and Clone Detection in Wireless Sensor Networks using Snowball Endurance Algorithm(SBEA)  

Sathya, V. (Department of CSE, S.A Engineering College)
Kannan, Dr. S. (Department of CSE, E.G.S Pillai Engineering College)
Publication Information
KSII Transactions on Internet and Information Systems (TIIS) / v.16, no.4, 2022 , pp. 1224-1248 More about this Journal
Abstract
In various sensor network applications, such as climate observation organizations, sensor nodes need to collect information from time to time and pass it on to the recipient of information through multiple bounces. According to field tests, this information corresponds to most of the energy use of the sensor hub. Decreasing the measurement of information transmission in sensor networks becomes an important issue.Compression sensing (CS) can reduce the amount of information delivered to the network and reduce traffic load. However, the total number of classification of information delivered using pure CS is still enormous. The hybrid technique for utilizing CS was proposed to diminish the quantity of transmissions in sensor networks.Further the energy productivity is a test task for the sensor nodes. However, in previous studies, a clustering approach using hybrid CS for a sensor network and an explanatory model was used to investigate the relationship between beam size and number of transmissions of hybrid CS technology. It uses efficient data integration techniques for large networks, but leads to clone attacks or attacks. Here, a new algorithm called SBEA (Snowball Endurance Algorithm) was proposed and tested with a bow. Thus, you can extend the battery life of your WSN by running effective copy detection. Often, multiple nodes, called observers, are selected to verify the reliability of the nodes within the network. Personal data from the source centre (e.g. personality and geographical data) is provided to the observer at the optional witness stage. The trust and reputation system is used to find the reliability of data aggregation across the cluster head and cluster nodes. It is also possible to obtain a mechanism to perform sleep and standby procedures to improve the life of the sensor node. The sniffers have been implemented to monitor the energy of the sensor nodes periodically in the sink. The proposed algorithm SBEA (Snowball Endurance Algorithm) is a combination of ERCD protocol and a combined mobility and routing algorithm that can identify the cluster head and adjacent cluster head nodes.This algorithm is used to yield the network life time and the performance of the sensor nodes can be increased.
Keywords
Clone detection; Compressive Sensing; Life time escalation; Sleep and wake-up technique; SBEA; Wireless Sensor Network;
Citations & Related Records
Times Cited By KSCI : 2  (Citation Analysis)
연도 인용수 순위
1 KriangsiriMalasri and Lan Wang, "Design And Implementation Of A Secure Wireless Mote-Based Medical Sensor Network," Sensors, vol. 9, pp. 6273-6297, 2009.   DOI
2 HaafizahRameezaShaukat, FazirulhisyamHashim, Muhammad ArslanShaukat and Kamal Ali Alezabi, "Hybrid Multi-Level Detection And Mitigation Of Clone Attacks In Mobile Wireless Sensor Network (MWSN)," Sensors, vol. 20, p. 2283, 2020.   DOI
3 J.Anthoniraj and T.AbdulRazak, "Clone Attack Detection Protocols In Wireless Sensor Networks: A Survey," International Journal of Computer Applications (0975 - 8887), Vol. 98, No.5, pp. 43-49, July 2014.   DOI
4 Euisin Lee, Soochang Park, Fucai Yu, and Sang-Ha Kim, "Communication Model And Protocol Based On Multiple Static Sinks For Supporting Mobile Users In Wireless Sensor Networks," IEEE Transactions on Consumer Electronics, Vol. 56, No. 3, pp. 1652-1660, August 2010.   DOI
5 Dong-Yu Cao, Kai Yu, Shu-GuoZhuo, Yu-Hen Hu, Fellow, and Zhi Wang, "On The Implementation Of Compressive Sensing On Wireless Sensor Network," in Proc. of 2016 IEEE First International Conference on Internet-of-Things Design and Implementation, 2016.
6 NayanaHegde and SunilkumarS.Manvi, "Implementation Of Security Mechanism In Wireless Sensor Network Using Crossbow Motes," in Proc. of 2014 International Conference on Advances in Electronics, Computers and Communications (ICAECC), IEEE, 2014.
7 Miriam Carlos-Mancilla, Ernesto Lopez-Mellado and Mario Siller, "Wireless Sensor Networks Formation: Approaches And Techniques," Hindawi Publishing Corporation Journal of Sensors, Vol. 2016, 18 pages, 2016, Article ID 2081902.
8 Joel Trubilowicz, KanCai and Markus Weiler, "Viability Of Motes For Hydrological Measurement," water resources research, vol. 45, 2009.
9 G. Tuna and V.C. Gungor, "Energy Harvesting And Battery Technologies For Powering Wireless Sensor Networks," Industrial Wireless Sensor Networks, pp. 25-38, 2016.
10 M.Bhavana and B.Vijay Kumar, "Data Efficient And Clone Detection In Wsn Using Ercd Convention," International Journal for Modern Trends in Science and Technology, Vol. 03, No. 06, June 2017.
11 Osamah Ibrahim Khalaf, GhaidaMuttasharAbdulsahib and MuayedSadik, "A Modified Algorithm For Improving Lifetime In Wsn," Journal of Engineering and Applied Sciences, Vol. 13, No. 21, pp. 9277-9282, 2018.
12 KimonFountoulakis, Jacek Gondzio and Pavel Zhlobich, "Matrix-Free Interior Point Method For Compressed Sensing Problems," arXiv:1208.5435v3[math.OC], 16 Nov 2013.
13 Sachin Lalar, Shashi Bhushan and Surender, "Analysis Of Clone Detection Approaches In Static Wireless Sensor Networks," Oriental Journal of Computer Science and Technology, Vol. 10, No. 3, pp. 653-659, 2017.   DOI
14 RamadhaniSinde, Feroza Begum, KaroliNjau and ShubiKaijage, "Refining Network Lifetime Of Wireless Sensor Network Using Energy-Efficient Clustering And Drl-Based Sleep Scheduling," Journal of Sensors, vol. 20, 2020.
15 SuchitaR.WankhadeandNekitaA.Chavhan, "A Review On Data Collection Method With Sink Node In Wireless Sensor Network," IJDPS, Vol.4, No.1, pp. 67-74, January 2013.   DOI
16 Md. Mofijul Islam, Md. Ahasanuzzaman, Md. AbdurRazzaque, Mohammad Mehedi Hassan, AbdulhameedAlelaiwi and Yang Xiang, "Target Coverage Through Distributed Clustering In Directional Sensor Networks," EURASIP Journal on Wireless Communications and Networking, vol. 2015, p. 167, 2015.   DOI
17 Nikolaos Ploskas and Nikolaos Samaras, "Efficient Gpu-Based Implementations Of Simplex Type Algorithms," Applied Mathematics and Computation, Vol. 250, pp. 552-570, 1 January 2015.   DOI
18 V A Kamaev, A G Finogeev, A AFinogeev and D S Parygin, "Attacks And Intrusion Detection In Wireless Sensor Networks Of Industrial Scada Systems," in Proc. of International Conference on Information Technologies in Business and Industry 2016, IOP Conf. Series: Journal of Physics: Conf. Series, vol. 803, p. 012063, 2017.
19 By JyotiSaraswat, Neha Rathiand ParthaPratim Bhattacharya, "Techniques To Enhance Lifetime Of Wireless Sensor Networks: A Survey," Global Journal of Computer Science and Technology Network, Web & Security, Vol. 12, No. 14, 2012.
20 Leonardo M. Rodrigues, Carlos Montez, Gerson Budke, Francisco Vasques and Paulo Portugal, "Estimating The Lifetime Of Wireless Sensor Network Nodes Through The Use Of Embedded Analytical Battery Models," Journal of Sensors and Actuators, J. Sens. Actuator Netw., vol. 6, p. 8, 2017.   DOI