Abstract
Wireless Sensor Networks (WSNs) is composed of self-organizing and tiny nodes that can process and transmit the data over wireless medium. The energy conservation and effective energy utilization is a significant problem to be considered in WSN. Many previous cluster based solutions relied on routing protocols, considered the relationship between sensor nodes and cluster head. It might lead to the probability of nodes that are left without being a member of any of the clusters called as residual nodes. These residual nodes might decrease the network's lifetime. The resource-constrained sensor nodes have been included in specific networks for exploring their surroundings and processing through one or multiple gateways to send the gathered data. Gateways in the network could be done in a controlled manner to communicate between sensors of WSN that can be utilized for several applications. For improving the lifetime of WSN, several sinks are deployed optimally which has been considered as one of the efficient energy techniques. This work presents the latest structure which would comprise the mechanism of effective clustering along with Intra Cluster Gateway (IC-GW). IC-GW depends on Particle Swarm Optimization with Genetic Algorithm (PSO-GA) termed as ICGW-PSOGA for distance-communication and optimal SINK placement in WSNs. This Intra Gateway would gather the data from the heads of cluster and would be delivering to the SINK. The PSO-GA relied estimation of location algorithm has been initiated for finding the most excellent arrangement for the Gateway and SINK relied on the structure of the network. This algorithm has been extensively examined on several scenarios with the variation in the simulation duration; numerous sensor nodes and range of communication. The simulation results are promising and the obtained results are compared and validated with the earlier mechanisms.





Similar content being viewed by others
References
Bal, H., Epema, D., de Laat, C., van Nieuwpoort, R., Romein, J., Seinstra, F., et al. (2016). A medium-scale distributed system for computer science research: Infrastructure for the long term. Computer, 49(5), 54–63.
Rashid, B., & Rehmani, M. H. (2016). Applications of wireless sensor networks for urban areas: A survey. Journal of Network and Computer Applications, 60, 192–219.
Raghavendra, Y. M., & Mahadevaswamy, U. B. (2020). Energy efficient routing in wireless sensor network based on composite fuzzy methods. Wireless Personal Communications, 114, 2569–2590.
Yim, Y., Kim, K. H., Aldwairi, M., & Kim, K.-I. (2017). Energy-efficient region shift scheme to support mobile sink group in wireless sensor networks. Sensors, 18(1), 90.
Khan, A. W., Abdullah, A. H., Razzaque, M. A., & Bangash, J. I. (2015). VGDRA: A virtual grid-based dynamic routes adjustment scheme for mobile sink-based wireless sensor networks. IEEE Sensors Journal, 15(1), 526–534.
Tunca, C., Isik, S., Donmez, M. Y., & Ersoy, C. (2014). Ring routing: An energy-efficient routing protocol for wireless sensor networks with a mobile sink. IEEE Transactions on Mobile Computing, 14(9), 1947–1960.
Zhao, H., GuoS, WangX., & Wang, F. (2015). Energy-efficient topology control algorithm for maximizing network lifetime in wireless sensor networks with mobile sink. Applied Soft Computing, 34, 539–550.
Raghavendra Y. M., & Dr. Mahadevaswamy, U. B. (2020). Energy-efficient routing in wireless sensor network based on mobile sink guided by stochastic hill climbing. International Journal of Electrical and Computer Engineering, 10(6), 5965–5973.
Hu, Y.-F., Ding, Y.-S., Ren, L.-H., Hao, K.-R., & Han, H. (2015). An endocrine cooperative particle swarm optimization algorithm for routing recovery problem of wireless sensor networks with multiple mobile sinks. Information Sciences, 300, 100–113.
Shah, I. K., Maity, T., & Doha, Y. S. (2020). Weight based approach for optimal position of base station in wireless sensor network. In 2020 international conference on inventive computation technologies (ICICT) (pp. 734–738). IEEE.
Bachelor, R., & Shrimankar, D. (2018). EEHCCP: An energy-efficient hybrid clustering communication protocol for wireless sensor network. In Y. Zhou & T. Kunz (Eds.), Ad hoc networks (pp. 199–207). Cham: Springer.
Salehi Panahi, M., & Abbaszadeh, M. (2018). Proposing a method to solve the energy hole problem in wireless sensor networks. Alexandria Engineering Journal, 57(3), 1585–1590.
Mohajerani, A., & Gharavian, D. (2016). An ant colony optimization based routing algorithm for extending network lifetime in wireless sensor networks. Wireless Networks, 22(8), 2637–2647.
Lohani, D., & Varma, S. (2016). Energy efficient data aggregation in mobile agent based wireless sensor network. Wireless Personal Communications, 89(4), 1165–1176.
Kong, L., Pan, J. S., Snášel, V., Tsai, P. W., & Sung, T. W. (2018). An energy-aware routing protocol for wireless sensor network based on genetic algorithm. Telecommunication Systems, 67(3), 451–463.
Kaswan, A., Singh, V., & Jana, P. K. (2018). A multi-objective and PSO based energy-efficient path design for a mobile sink in wireless sensor networks. Pervasive and Mobile Computing, 46, 122–136. https://doi.org/10.1016/j.pmcj.2018.02.003.
Cheng, D., Xun, Y., Zhou, T., & Li, W. (2011). An energy-aware ant colony routing algorithms for the routing of wireless sensor networks. In ICICIS 2011, part I, CCIS-134 (pp. 395–401). Heidelberg: Springer.
Wang, X., Li, Q., Xiong, N., & Pan, Y. (2008). Ant colony optimization-based location-aware routing for wireless sensor networks. In Y. Li, D. T. Huynh, S. K. Das, & D. Z. Du (Eds.), WASA 2008, LNCS (Vol. 5258, pp. 109–120). Heidelberg: Springer.
Shih, H.-C., Chu, S.-C., Roddick, J. F., Hung, M.-H., & Pan, J.-S. (2010). Power reduction of wireless sensor networks using ant colony optimization. In 2010 international conference on computational aspects of social networks (pp. 464–467). IEEE
Zhong, Z., Tian, Z., Li, Z., &Xu, P. (2008). An ant colony optimization competition routing algorithm for WSN. In 4th International Conference on Wireless Communications, Networking and Mobile Computing, 2008 (pp. 1–4). IEEE.
Amgoth, T., & Jana, P. K. (2014). An energy-aware routing algorithm for wireless sensor networks. Computers & Electrical Engineering, 41, 357–367.
Kassotakis, I. E., Markaki, M. E., & Vasilakos, A. V. (2000). A hybrid genetic approach for channel reuse in multiple access telecommunication networks. IEEE Journal on Selected Areas in Communications, 18(2), 234–243.
Kobo, H. I., Abu-Mahfouz, A. M., & Hancke, G. P. (2017). A survey on software-defined wireless sensor networks: Challenges and design requirements. IEEE Access, 5, 1872–1899.
Lingaraj, K., Biradar, R. V., & Patil, V. C. (2017). OMMIP: An optimized multiple mobile agents itinerary planning for wireless sensor networks. Journal of Information and Optimization Sciences, 38(6), 1067–1076.
Lohani, D., & Varma, S. (2016). Energy-efficient data aggregation in a mobile agent-based wireless sensor network. Wireless Personal Communications, 89(4), 1165–1176.
Wu, Q., Rao, N. S. V., Barhen, J., SitharamaIyengar, S., Vaishnavi, V. K., Qi, H., & Chakrabarty, K. (2004). On computing mobile agent routes for data fusion in distributed sensor networks. IEEE Transactions on Knowledge and Data Engineering, 16(6), 740–753.
Chen, M., Leung, V., Mao, S., Kwon, T., & Li, M. (2009). Energy-efficient itinerary planning for mobile agents in wireless sensor networks. In Proceedings of the IEEE international conference on communications (ICC), Dresden, Germany (pp. 1–5).
Yu, J., Qi, Y., Wang, G., & Gu, X. (2012). A cluster-based routing protocol for wireless sensor networks with non-uniform node distribution. AEU-International Journal of Electronics and Communications, 66(1), 54–61.
Bagci, H., & Yazici, A. (2013). An energy-aware fuzzy approach to unequal clustering in wireless sensor networks. Applied Soft Computing, 13(4), 1741–1749. https://doi.org/10.1016/j.asoc.2012.12.029.
Yu, Y., Govindan, R., & Estrin, D. (2001). Geographical and energy-aware routing: A recursive data dissemination protocol for wireless sensor networks.
Tabibi, S., & Ghaffari, A. (2018). Energy-efficient routing mechanism for Mobile sink in wireless sensor networks using particle swarm optimization algorithm. Wireless Personal Communications, 104, 199–216.
Kumar, P., Amgoth, T., & Annavarapu, C. S. R. (2018). ACO-based mobile sink path determination for wireless sensor networks under non-uniform data constraints. Applied Soft Computing, 69, 528–540.
Acknowledgements
I would like to sincerely thank my guide Dr U.B. Mahadevaswamy for his constant support to write this research paper. This research was supported in part by Sri Jayachamarajendra College of Engineering, Mysore, India.
Author information
Authors and Affiliations
Corresponding author
Additional information
Publisher's Note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Rights and permissions
About this article
Cite this article
Raghavendra, Y.M., Mahadevaswamy, U.B. Energy Efficient Intra Cluster Gateway Optimal Placement in Wireless Sensor Network. Wireless Pers Commun 119, 1009–1028 (2021). https://doi.org/10.1007/s11277-021-08247-z
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s11277-021-08247-z