Abstract
Recent improvement and necessity made upcoming application for wireless sensor networks like land slide monitoring, smart cities, smart agriculture, domestic animal habitats, vehicle traffic monitoring extended from traditional sensor network into multimedia wireless sensor network. It has to handle video, audio as well as images, but coming to energy, processing, transmission are very limited in case of wireless sensor network. Latest woks in randomized approach and restricted Boltzmann algorithm shows confident in producing optimized results. In this work Randomized Boltzmann Machine Learning Clustering Algorithm (RBMLCA) with randomized approach is presented. It consists of optimizing quality of service parameters, clustering of the nodes and cluster head formation. Modified clustering approach for data transmission over multimedia sensor network, RBMLCA algorithm provides better quality of evolution parameters. Simulation results shows that RBMLCA protocol performs comparatively good edge with existing Packet delivery ratio, throughput ratio, and packet delay in quality metrics also to improve the overall network performance up to 9.3% as well as to improve up to 8% of throughput ratio in network.
Similar content being viewed by others
References
Palaniappan, S., Prakasam, P., Vaithiyashankar, J., & Sayeed, S. (2015). Optimal design of wireless sensor network for providing Qos. In Proceedings on the International conference smart sensors and application (ICSSA), Kuala Lumpur , 26–28 May, pp. 65–70.
Prakasam, P. (2018). Optimal power distribution strategy for energy harvesting in wireless sensor networks using assymetric Nash bargaining algorithm. Environmental Engineering: Current Perspective, pp. 322–325.
Kim, Y.-M., Park, J., & Lim, J. (2017). An energy efficient compression scheme for wireless multimedia sensor networks. Multimedia Tools and Applications,76, 19707–19722.
Huang, S.-C., & Chang, H.-Y. (2017). A farmland multimedia data collection method using mobile sink for wireless sensor networks. Multimedia Tools and Applications,76, 19463–19478.
Al-Ariki, H. D. E., & Shanmukha swamy, M. N. (2017). A survey and analysis of multipath routing protocols in wireless multimedia sensor networks. Wireless Networks, 23, pp. 1823–1835.
Noh, Y., & Lee, U. (2013). VAPR: Void-aware pressure routing for underwater sensor networks. IEEE Transactions on Mobile Computing,12(5), 895–908.
NG, K. T. (2014). A distributed implementation of training the restricted Boltzmann machine. (Outstanding Academic Papers by Students (OAPS)). Retrieved from University of Macau, Outstanding Academic Papers by Students Repository, pp. 1–37.
Mammu, A. S. K., Hernandez-Jayo, U., Sainz, N., & de la Iglesia, I. (2015). Cross-layer cluster-based energy-efficient protocol for wireless sensor networks. Sensors, 15, 8314–8336.
Karimi, E., & Akbari, B. (2013). Priority scheduling for multipath video transmission in WMSNS. International Journal of Computer Networks & Communications, 5(6), 167–180.
Youssif, A. A. A., & Ghalwash, A. Z. (2016). Energy aware and adapative cross layer scheme for video transmission over wireless sensor networks. IEEE Sensors Journal, 16(21), 7792–7802.
Hamid, Z., & Hussain, F. B. (2014). QoS in wireless multimedia sensor networks: A layered and cross-layered approach. Wireless Personal Communications, 75(1), 729–757.
Fan, X., & Du, F. (2015). An efficient bypassing void routing algorithm for wireless sensor network. Journal of Sensors, vol. 2015, pp. 1–9.
Alskaif, T., Bellalta, B., Zapata, M. G., & Ordinas, J. M. B. (2017). Energy efficiency of MAC protocols in low data rate in wireless multimedia sensor networks: A comparative study. Ad hoc Networks, 56, 141–157.
Sathyaprakash, P., & Prakasam, P., (2017). Proposed energy efficient multi attribute time slot scheduling algorithm for quality of service in wireless sensor network. Wireless Personal Communications, vol. 97, no. 4, pp. 5951–5968.
Sathyaprakash, P., Jayakumar, V., & Shohel, S. (2016). Life time maximization of wireless sensor networks using group characteristic based dynamic wake up scheduling. Journal of signal processing and Wireless networks, vol. 1, no. 1, pp. 13–18
Cobo, L., Quintero, A., & Pierre, S. (2010). Ant-based routing for wireless multimedia sensor networks using multiple QoS metrics. Computer Networks, 54, pp. 2991–3010.
Cadger, F., & Curran, K. (2013) Survey of geographical routing in wireless ad-hoc networks. IEEE Communications Surveys & Tutorials, vol. 15, no. 2, second quarter 2013, pp. 621–653.
Prakash, S., Saini, J. P., & Gupta, S. C. (2010). A review of energy efficient routing protocols for mobile ad hoc wireless networks. International Journal of Computer Information Systems, 1(4), 36–46.
Mohamad, M. M., & Kheirabadi, M. M. (2016). Energy efficient opportunistic routing algorithm for underwater sensor network. In Proceedings in IEEE International Conference on Science in Information Technology. https://doi.org/10.1109/ICSITech.2016.7852605.
Jie, L. I., & Tian-zheng, W. A. N. G. (2016). Sa-based localization algorithm for wireless sensor network. In Proceedings in IEEE International Conference on Asia-Pacific Power and Energy Engineering. https://doi.org/10.1109/APPEEC.2016.7779547.
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
Sathyaprakash, P., Prakasam, P. Boltzmann Randomized Clustering Algorithm for Providing Quality of Evolution in Wireless Multimedia Sensor Networks. Wireless Pers Commun 112, 2335–2349 (2020). https://doi.org/10.1007/s11277-020-07152-1
Published:
Issue Date:
DOI: https://doi.org/10.1007/s11277-020-07152-1