CLUSTER BASED DATA AGGREGATION SCHEME IN UNDERWATER ACOUSTICS SENSOR NETWORKS

Main Article Content

Vani Krishnaswamy
Sunilkumar. S. Manvi

Abstract

The main objectives of Underwater Acoustic Sensor Network (UWASN) are to reduce the energy consumption and increase the life span of the network. This can be achieved using appropriate clustering and data aggregation scheme. In this paper the classification of various data aggregation schemes are discussed. The data aggregation scheme based on similarity function is simulated in MATLAB. The experimental result shows that proposed scheme performs better in terms of energy consumption.

Downloads

Download data is not yet available.

Article Details

Section
Articles

References

Akyildiz, T.F, Pompili, D. and Melodia, T. “Underwater acoustic sensor networks: research challenges,â€Ad Hoc Networks, vol. 3, No. 3, pp. 257-279, 2005. [2] I. F. Akyildiz, D. Pompili, and T. Melodia. “State-of-theart in protocol research for underwater acoustic sensor networks, †WUWNet 06, pp.7, 2006. [3] Wang, F., Wang, L., Han, Y., Liu, B., Wang, J. and Su, X. “A Study on the Clustering Technology of Underwater Isomorphic Sensor Networks Based on Energy Balance, †Sensors 2014, pp.12523-12532. [4] Halder S and Bit SD. “Enhancement of wireless sensor network lifetime by deploying heterogeneous nodes, †J Netw Comp Appl 38: pp106–12416, 2014. [5] Alam KM, Kamruzzaman J, Karmakar G and Murshed M. “Dynamic adjustment of sensing range for event coverage in wireless sensor networks , †J Netw Comput Appl 46, pp139–153, 2014. [6] Liu H, Liu Z, Du H, Li D and Lu X. “ Minimum latency dataaggregation in wireless sensor network with directional antenna, †In: Wang W, Zhu X, Du DZ (eds) Combinatorial optimization and applications. COCOA 2011. Lecture Notes in Computer Science, vol 6831. Springer, Heidelberg, pp 207–221.2011 [7] Minming T, Jieru N, Hu W and Xiaowen L. “ A data aggregation model for underground wireless sensor network, â€. In: IEEE World Congress on Computer Science and Information Engineering,vol 1. IEEE, USA, pp 344–348, 2009. [8] Wu Z, Tian C, Jiang H and Liu W. “Minimum-latency aggregation scheduling in underwater wireless sensor networks,â€. In IEEE International Conference on Communications (ICC), Japan.pp. 1–5, 2011.doi:10.1109/icc.2011.5963239 [9] Nitin Goyal, MayankDave and Anil Kumar Verma. “ Fuzzy Based Clustering and Aggregation Technique for Under Water Wireless Sensor Networks. International Conference on Electronics and Communication System (lCECS-2014), Feb. 13-14,2014. [10] Goyal, N., et al. “Data aggregation in underwater wireless sensor network: Recent approaches and issues, â€. Journal of King Saud University Computer and Information Sciences (2017), http://dx.doi.org/10.1016/j.jksuci.2017.04.007 [11] Q. Ni, Q. Pan, H. Du, C. Cao and Y. Zhai. “ A Novel Cluster Head Selection Algorithm Based on Fuzzy Clustering and Particle Swarm OpTimization, †IEEE/ACM Transactions on Computational Biology and Bioinformatics, vol. 14, no. 1, pp. 76-84, Jan/Feb 2017. [12] Tran, K. T. M. Oh, S. H. and Byun, J. H. “ Well-suited similarity functions for data aggregation in cluster-based underwater wireless sensor networks International Journal of Distributed Sensor Networks,Vol. 2013, Article ID 645243,2013.