Abstract
From last few years, advance researches in wireless sensor network have been extensively taken place. One of the major challenges in WSN is to prolong sensor node’s operational lifetime. For this, many clustering algorithms have been proposed that provide an effective way to improve energy efficiency. However, they rarely consider the position of base station and hot-spot problem during multihop routing. To solve such routing layer problem, we propose an energy-efficient routing in unequal clustering (EERUC) technique. This technique starts with preparation phase in which base station plays important role in deciding prerequired parameter like optimal probability threshold by applying genetic algorithm on node’s geographical position and residual energy. We have fixed base station location in the middle of sensor network which balances energy consumption load equally among clusters. During setup phase, final CHs are selected based on internal competition between temporary CHs whose competitive radius range intercepts with each other. In this technique, distance factor and node’s residual energy are considered as important clustering parameters. These parameters are normalized to produce different competitive radii of CHs as normalization provides better selection of radius in comparison with existing approach. Our novel approach retains unequal size cluster for few rounds and cluster head selection will rotate within a cluster for every round. This method effectively reduces clustering overhead by balancing energy consumption of network. The results show that the proposed technique improves network lifetime as compared to existing techniques.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
References
Li, C., Ye, M., & Chen, G. (2005). An energy-efficient unequal clustering mechanism for wireless sensor networks. IEEE.
Moschitto, A., & Igor, N. Power consumption assessment in WSN. InTech.
Gupta, V., & Pandey, R. (2016). An improved energy aware distributed unequal clustering protocol for heterogeneous wireless sensor networks. Engineering Science and Technology, An International Journal, 1050–1058 (Elsevier).
Mammu, A. S. K., Sharma, A., Hernandez-Jayo, U., & Sainz, N. (2013). A novel cluster based Energy-efficient routing in wireless sensor network. In IEEE 27th International Conference on Advanced Information Networking and Communication. IEEE.
Chaubey, N. K., & Dharti, H. P. (2016). Energy efficient clustering algorithm for decreasing energy consumption and delay in wireless sensor network. International Journal of Innovative Research in Computer and communication Engineering, 4.
Rajeshwari, P., Shanthini, B., & Prince, M. (2015). Hierarchical energy efficient clustering algorithm for WSN. Middle-East Journal of Scientific Research, Sensing, Signal Processing and Security, 108–117.
Zhang, D., Ki, G., et al. (2014). An energy-balanced routing method based on forward aware factor for wireless sensor networks. IEEE Transactions on Industrial Informatics, 10(1) (IEEE).
Meng, J.-T., Yuan, J.-R., et. al. (2013). An energy efficient clustering scheme for data aggregation in wireless sensor networks. Journal of Computer Science & Technology, 564–573.
Liu, J.-L., & Chinya, V. R. (2011). LEACH-GA: Genetic algorithm-based energy-efficient adaptive clustering protocol for wireless sensor networks. International Journal of Machine Learning and Computing, 1(1).
Pal, V., Yogita, Girdhari S., & Yadav, R. P. (2015). Cluster head selection optimization based on genetic algorithm to prolong lifetime of wireless sensor networks. In Third International Conference on Recent Trends in Computing (pp. 1417–1423). Elsevier.
Mohammad, K., Hamid R. N., & Shahrzad, G. (2012). Optimizing cluster-head selection in wireless sensor networks using genetic algorithm and harmony search algorithm. In 20th Iranian Conference on Electrical Engineering.
Kaushik, A. K. (2016). A hybrid approach of fuzzy C-means clustering and neural network to make energy-efficient heterogeneous wireless sensor network. International Journal of Electrical and Computer Engineering, 6(2), 674–681.
Uma Maheshwari, S., Pushpalatha, S. (2014). Cluster head selection based on genetic algorithm using AHYMN approaches in WSN. International Conference on Innovations in Engineering and Technology, 3.
Lanzisera, S., Mehta, A., & Pister, K. S. (2009). Reducing average power in wireless sensor network through data rate adaptation. IEEE.
Kaur, A., & Amit G. (2015). LEACH and extended LEACH protocols in wireless sensor network-A survey. International Journal of Computer Applications, 116(10).
Reenkamal, K. G., Priya, C., & Monika S. (2014). Study of LEACH routing protocol for wireless sensor networks. In International Conference on Communication, Computing & Systems.
Patil, P., Umakant K., & Ayachit, N. H. (2011). Some issues in clustering algorithms for wireless sensor networks. In 2nd National Conference-Computing, Communication and Sensor Network.
Lee, S., Lee, J., & Hongjong, S. (2011). An energy-efficient distributed unequal clustering protocol for heterogeneous wireless sensor network. International Journal of Distributed Sensor Network, 1050–1058 (Elsevier).
Heinzelman, W., Chandrakasan, A., & Balakrishanan, H. (2002). An application-specific protocol architecture for wireless microsensor networks. IEEE Transaction on Wireless Communications, 1(4), 660–670 (IEEE).
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2019 Springer Nature Singapore Pte Ltd.
About this chapter
Cite this chapter
Mhatre, M., Kumar, A., Jha, C.K. (2019). Energy-Efficient Wireless Sensor’s Routing Using Balanced Unequal Clustering Technique. In: Bhargava, D., Vyas, S. (eds) Pervasive Computing: A Networking Perspective and Future Directions. Springer, Singapore. https://doi.org/10.1007/978-981-13-3462-7_8
Download citation
DOI: https://doi.org/10.1007/978-981-13-3462-7_8
Published:
Publisher Name: Springer, Singapore
Print ISBN: 978-981-13-3461-0
Online ISBN: 978-981-13-3462-7
eBook Packages: Computer ScienceComputer Science (R0)