ENHANCING EGRC USING ANOVA BASED CLUSTERING IN UNDERWATER SENSOR NETWORKS

M. Raghini, K.L.N. College of Engineering; S. Lavanya ,; G. Nivetha ,; R. Priya Dharshini ,

Energy efficient Grid Routing protocol based on 3D Cubes (EGRC), Analysis Of Variance (ANOVA), Data transmission Using ANOVA Clustering (DUAC)

As reliability and efficient data transmission is the challenging factor in underwater sensor network, the application such as monitoring abnormal submarine pipelines becomes complex. Thus in the existing EGRC, the whole network which can be viewed as big cube is divided into small cube (SC) where SC is a cluster. To enhance the selection of optimal cluster-heads, we propose a new methodology DUAC which combines EGRC with ANOVA based clustering. In DUAC the node generating identical data sets are identified and aggregated the sets before sending them to the sink. Analysis and implementation results of DUAC enhance EGRC in terms of energy efficiency, reliability, end-to-end delay and power consumption.
    [1] Kun Wang, Hui Gao, Xialing Xu, Jinfang Jiang, Dong Yue. “An Energy-efficient Reliable Data Transmission Scheme for Complex Environmental Monitoring in Underwater Sensor Networks”. [2] Hassan Harb, Abdallah Makhoul, and Raphael Couturier. ” An Enhanced K-Means and ANOVA-Based Clustering Approach for Similarity Aggregation in Underwater Wireless Sensor Networks,” IEEE sensors journal, vol. 15, no. 10, oct 2015. [3] Han G J, Jiang J F, Shu L, et al.” An Attack-Resistant Trust Model based on Multidimensional trust Metrics in Underwater Acoustic Sensor Networks [J]”, IEEE Trans. Mobile Comput., 2015, 14(2): 1-14. [4] Lin H, H L, Lin H, et al. Exact and Heuristic Algorithms for Data-Gathering Cluster-Based Wireless Sensor Network Design Problem [J].IEEE/ACM Trans. Networking, 2014, 22(3):903 - 916. [5] Ovaliadis K, Savage N, and Tsiantos V. A new approach for a better recovery of cluster-head nodes in underwater sensor networks [C].Proceedings of the 2014 IEEE international Conference on Telecommunications and Multimedia (TEMU), 2014: 167-172. [6] Han Y, Tang J, Zhou Z B, et al. Novel itinerary-based KNN query algorithm leveraging grid division routing in wireless sensor networks of skewness distribution [J].Pers. Ubiquit. Comput., 2014, 18(8): 1989-2001. [7] Goyal N, Dave M, and Verma A K. Fuzzy based clustering and aggregation technique for Under Water Wireless Sensor Networks [C]. Proceedings of the 2014 IEEE International Conference on Electronics and Communication Systems (ICECS), 2014: 1-5. [8] Ayaz M, Baig I, Abdullah A, et al. A survey on routing techniques in underwater wireless sensor networks [J].J. Nerv. Ment. Dis., 2011, 34(6):1908-1927. [9] Hu T and Fei Y. QELAR: a machine-learning-based adaptive routing protocol for energy-efficient and lifetime-extended underwater sensor networks [J].IEEE Trans. Mobile Comput., 2010, 9(6): 796-809. [10] Yuan F, Zhan Y, and Wang Y. Data Density Correlation Degree Clustering Method for Data Aggregation in WSN [J].IEEE Sensors J, 2014, 4(14):1089-1098. [11] Wang K and Guo H. An improved routing algorithm based on social link awareness in delay tolerant networks [J]. Wireless pers. commun.,2014, 75(1): 397-414. [12] Zhang S, Li D, and Chen J. A link-state based adaptive feedback routing for underwater acoustic sensor networks [J]. IEEE Sensors J,2013, 13(11): 4402-4412. [13] Han g, Zhang c, Shu l. Impacts of deployment strategies on localization performances in underwater acoustic sensor networks[J]. IEEE transactions on industrial electronics, 2015,62(3):1725-1733. [14] Ayaz M, Abdullah A, and Jung L T. Temporary cluster based routing for Underwater Wireless Sensor Networks [C]. Proceedings of the 2010.IEEE International Symposium in Information Technology (ITSim), 2010,2: 1009-1014. [15] Chi Y P and Chang H P. An energy-aware grid-based routing scheme for wireless sensor networks [J]. Telecommun. Syst., 2013, 54(4): 405-415. [16] Ren Y, Yu N, Guo X, et al. Cube-scan-based three dimensional localization for large-scale underwater wireless sensor networks [C]. Proceedings of the 2012 IEEE International Systems Conference (SysCon), 2012: 1-6. [17] lloret j, Garcia m, bri d, diaz j r, a cluster-based architecture to structure the topology of parallel wireless sensor networks, sensors, vol. 9, no. 12, pp. 10513-10544, 2009. [18] P. K. Gakare, A. M. Patel, J. R. Vaghela, and R. N. Awale, “Real time feature extraction of ECG signal on Android platform,” in Proc. IEEE Int. Conf. Commun., Inf., Comput. Technol. , Oct. 2012, pp. 1–5. [19] A. D Bakhshi, M. A. Maud, K. M. Aamir, and A. Loan, “Aggregate spectrogram based classification of Holter ECG signals for wireless sensor networks,” in Proc. IEEE ICET, Oct. 2012, pp. 1–6. [20] G. Liu and H. Yang, “Multiscale adaptive basis function modeling of spatiotemporal vector cardiogram signals,” IEEE J. Biomed. Health Informat. , vol. 17, no. 2, pp. 484–492, Mar. 2013. [21] D. He, C. Chen, S. Chan, J. Bu, and P. Zhang, “Secure and light-weight network admission and transmission protocol for body sensor networks,” IEEE J. Biomed. Health Informat., vol. 17, no. 3, pp. 664–674, May 2013.
Paper ID: GRDCF002035
Published in: Conference : International Conference on Innovations in Engineering and Technology (ICIET - 2016)
Page(s): 164 - 170