EASND: Energy Adaptive Secure Neighbour Discovery Scheme for Wireless Sensor Networks

Main Article Content

Sagar Mekala
Mallareddy A
D. Baswaraj
Jyothirmai Joshi
Raghava M

Abstract

Wireless Sensor Network (WSN) is defined as a distributed system of networking, which is enabled with set of resource constrained sensors, thus attempt to providing a large set of capabilities and connectivity interferences. After deployment nodes in the network must automatically affected heterogeneity of framework and design framework steps, including obtaining knowledge of neighbor nodes for relaying information. The primary goal of the neighbor discovery process is reducing power consumption and enhancing the lifespan of sensor devices. The sensor devices incorporate with advanced multi-purpose protocols, and specifically communication models with the pre-eminent objective of WSN applications. This paper introduces the power and security aware neighbor discovery for WSNs in symmetric and asymmetric scenarios. We have used different of neighbor discovery protocols and security models to make the network as a realistic application dependent model. Finally, we conduct simulation to analyze the performance of the proposed EASND in terms of energy efficiency, collisions, and security. The node channel utilization is exceptionally elevated, and the energy consumption to the discovery of neighbor nodes will also be significantly minimized. Experimental results show that the proposed model has valid accomplishment.

Article Details

How to Cite
Mekala, S. ., A, M. ., Baswaraj, D. ., Joshi, J. ., & M, R. . (2023). EASND: Energy Adaptive Secure Neighbour Discovery Scheme for Wireless Sensor Networks. International Journal on Recent and Innovation Trends in Computing and Communication, 11(5s), 446–458. https://doi.org/10.17762/ijritcc.v11i5s.7097
Section
Articles

References

Elyes, Ben. Hamida.; and Guillaume, Chelius.; “ Neighbor discovery Analysis in Wireless Sensor Networks”, ACM, 2006.

Daniele, Angelosante.; Ezio, Biglieni.; and Marco, Kops.; “ Neighbor discovery for Wireless Networks”, ISIT, 2007.

I.F.Akyildiz.; W, Su*; Y. Sankarasubramaniam; E.Cayirci,; “Wireless Sensor Networks: a Survey”

Beakcheol. Jang.; Jun Bum, Lim.; Mihail, L. Sichitiu.; “AS-MAC: An Asynchronous Scheduled MAC protocol for Wireless Sensor Network”, IEEE,2008, 434-441.

Bang Jun.Choi, and Xuemin.Shen, “Adaptive Asynchronous Sleep Scheduling Protocols for Delay Tolerant Networks”, IEEE Transactions on Mobile Computing, 2011,10,1283-1295.

Harish. R, Lei. P, James XZ, et al. “Practical overview of Security issuses in Wireless Sensor Network applications. IJCA, 2017.

C.T Seng, C.S Hsu, and T.Y. Hsieh, “ Power Saving Protocols for IEEE 802.11 Based Multi-hop Ad Hoc Networks”, IEEE INFOCOM, 2002.

Cohen, R.; Kapchits, B.; “Continuous Neighbor Discovery in Asynchronous Sensor Networks”, In IEEE TON, 2011, 19, 69-79.

Hussain Bukhari, S. N. . (2021). Data Mining in Product Cycle Prediction of Company Mergers . International Journal of New Practices in Management and Engineering, 10(03), 01–05. https://doi.org/10.17762/ijnpme.v10i03.127.

Michnel.Segal, “Improving Lifetime of Wireless Sensor Networks”, Network Protocols and Algorithms, 2009,1,48-60.

J.Wiesellwer, G.Nguyen, and A.Ephrimides, ”On Construction of Energy Efficient broadcast and multicast trees in Wireless Networks”, INFOCOM, 2000.

Singh, M. ., Angurala, D. M. ., & Bala, D. M. . (2020). Bone Tumour detection Using Feature Extraction with Classification by Deep Learning Techniques. Research Journal of Computer Systems and Engineering, 1(1), 23–27. Retrieved from https://technicaljournals.org/RJCSE/index.php/journal/article/view/21

Elaine. Shi, Adrian.Perrig, “Designing Secure Sensor Networks”,IEEE, 2004

Borbash, S. A.; Ephremides, A.; McGlynn, M. J.; “ An Asynchronous Neighbor Discovery Algorithm for Wireless Sensor Networks”, Elsevier Ad Hoc Networks, 2007, 5, 998-1016.

McGlynn, M.J.; Borbash, S.A.; “Birthday Protocols for Low Energy Deployment and Flexible Neighbor Discovery in Ad Hoc Wireless Networks.” In the Proceedings of the 2nd ACM International Symposium on Mobile Ad Hoc Networking & Computing, USA, 2001.

Dutta. P,; Cullar.D; “A Practical Asynchronous Neighbor Discovery and Rendezvous fo Mobile Sensing Applications.” In Proceedings of the 6th ACM Conference Embedded Network Systems, Releigh, NC,USA, 2008, 71-84.

Kandhalu, A.; Lakshmanan, K.; Rajkumar,R.R.; “ U-Connect: A Lower Latency Energy Efficient Asynchronous Neighbor Discovery Protocol”, In Proceedings of of the 9th IEEE Conference on Information Processing in Sensor Networks, Sweden, 2010, 12-16.

Bakht, M.; Trower, M.; Kravets, R.H.; “Searchlight: Won’t you be my neighbour?”, In proceedings of the 18th Annual Internation Conference on Mobile Computing nad Networking, Turkey, 2012, 22-26.

Aveek, Purohit.; Bodhi, Priyanath.; Jie, Liu.; “WiFlock: Collaborative group Discovery and Maintenance in Mobile Sensor Networks”, In the Proceedings of the 10th International Confereence on Information Processing in Sensor Networks, USA, 2011.

Chen, L.; Fan, R.; Bian, K.; Che, L.; Gerla, M.; Wang, T., Li, X.; “ On Hetrogeneous Neighbor Discovery in Wireless Sensor Networks”, In Proceedings of th IEEE Conference on Computer Communications (INFOCOM), China, 2015.

Robert Roberts, Daniel Taylor, Juan Herrera, Juan Castro, Mette Christensen. Leveraging Machine Learning for Educational Data Mining. Kuwait Journal of Machine Learning, 2(1). Retrieved from http://kuwaitjournals.com/index.php/kjml/article/view/176.

Nathanson, M.B.; “Elementary Methods in Number Theory”, Springer, Germany, 2000, Vol, 195.

Vasudevan, S.; Towsley, D.; Goeckel,D.; Khalili, R.; “ Neighbor Discovery in Wireless Networks and the Coupon Collector’s Problem”, In Proceedings of the 15th Annual International Conference on Mobile Computing and Networking, China, 2009.

Dhabliya, D. (2021). An Integrated Optimization Model for Plant Diseases Prediction with Machine Learning Model . Machine Learning Applications in Engineering Education and Management, 1(2), 21–26. Retrieved from http://yashikajournals.com/index.php/mlaeem/article/view/15.

Wang,K.; Mao, X.; Liu, Y.; “BlindDate: A Neighbor Discovery Protocol”, TPDS, 2015, 26, 949-959.

Sun, W.; Yang, Z.; Zhang, X.; Liu, Y.; “Hello: A Generic Flexible Protocol for Neighbor Discovery”, In Proceedings of the IEEE INFOCOM, Canada, 2014.

Qiu, Y.; Li, S.; Xu, X.; Li, Z.; “Talk More Listen Less: Energy Efficient Neighbor Discovery in Wireless Sensor Networks”, In Proceedings of the 35th IEEE INFOCOM, USA, 2016

Wang Wei, Natural Language Processing Techniques for Sentiment Analysis in Social Media , Machine Learning Applications Conference Proceedings, Vol 1 2021.

Lai, S.; Ravindran, B., Cho, H.; “ Heterogeneous Quorum-based Wake-up Scheduling in Wireless Sensor Networks”, IEEE Trans. Computing, 2010,59,1562-1575.

Zikria, Y.B.; Afzal, M.K.; Ishmanov, F.; Kim, S.W.; Yu, H.; “ A Survey on Routing Protocols supported by the Contiki Internet of Things Operating System”, Future Gener. Comput.Syst, 2018, 88, 699-706.

Jiang, J.R.; Tseng, Y.C.; Hsu, C.S.; Lai, T.H.; “ Quorum-based Asynchonous Power-Saving Protocols for IEEE 802.11 Ad Hoc Networks. Mob. Netw. 2005,10,169-181.

Margolies, R.; Grebla, G.; Chen, T.; Rubenstein, D.; Zussman, G.; “Panda: Neighbor Discovery on a Power Harvesting Budget”, IEEE J.Sel, Areas Commun. 2016, 34, 3606-3619.

Zanella, A.; Bazzi, A.; Pasolini, G.; Masini, B.M.; “ On the Impact of Routing Strategies on the Interference of Adhoc Wireless Networks”, IEEE Trnas. Commun, 2013,61, 4322-4333.

Zheng, R.; Hou, J.C.; Sha, L.; “Asynchronous Wakeup for Ad Hoc Networks”, In Proceedings of the 4th ACM International Symposium on Mobile Ad Hoc Networking & Computing, USA, 2003.

Sagar Mekala, Chatrapati, K.S “Hybrid Approach to Neighbour Discovery in Wireless Sensor Networks” Intelligent Automation and Soft Computing, 35(1), pp. 581–593, 2022.

Sagar Mekala, Chatrapati, K.S. “Present State-of-the-Art of Continuous Neighbor Discovery in Asynchronous Wireless Sensor Networks” EAI Endorsed Transactions on Energy Web, 8(33), pp. 1–7, 2021.

Sagar Mekala, Chatrapati, K.S. “A continuous neighbour discovery protocol for asymmetric wireless sensor networks”, Journal of Advanced Research in Dynamical and Control Systems, 2020, 12(7 Special Issue), pp. 633–645

F. F. Jurado-Lasso, K. Clarke and A. Nirmalathas, "Performance Analysis of Software-Defined Multihop Wireless Sensor Networks," in IEEE Systems Journal, vol. 14, no. 4, pp. 4653-4662, Dec. 2020.

Ruchika, & Chhilar, R. S. . (2023). Novel Approach for Improving Secure Scheduling in Fog Environment and in Context of Smart Homes. International Journal of Intelligent Systems and Applications in Engineering, 11(1s), 23–29. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/2473

P. H. Kindt, D. Yunge, G. Reinerth, et al, “Griassdi: Mutually assisted Slotless Neighbor Discovery,” ACM/IEEE International Conference on Information Processing in Sensor Networks, pp. 93–104, 2017.

X. Luo et al., "CREDND: A Novel Secure Neighbor Discovery Algorithm for Wormhole Attack," in IEEE Access, vol. 7, pp. 18194-18205, 2019.

Hao Cai, and Tilman Wolf . Self-Adapting Quorum-Based Neighbor Discovery in Wireless Sensor Networks. In IEEE INFOCOM 2018 - IEEE Conference on Computer Communications

Y. Wang, G. Sun, G. Yang and X. Ding, "XgBoosted Neighbor Referring in Low-Duty-Cycle Wireless Sensor Networks," in IEEE Internet of Things Journal, vol. 8, no. 5, pp. 3446-3461, 1 March1, 2021. (xBOND)

O. A. Saraereh, I. Khan and B. M. Lee, "An Efficient Neighbor Discovery Scheme for Mobile WSN," in IEEE Access, vol. 7, pp. 4843-4855, 2019.

M. Jamalabdollahi and S. A. R. Zekavat, "Joint Neighbor Discovery and Time of Arrival Estimation in Wireless Sensor Networks via OFDMA," in IEEE Sensors Journal, vol. 15, no. 10, Oct. 2015, pp. 5821 - 5833.

L. Chen, Y. Shu, Y. Gu, et al, “Group-based neighbor discovery in low duty-cycle mobile sensor networks,” IEEE Transactions on Mobile Computing, vol. 15, no. 8, pp. 1996–2009, 2016.