A Analysis of Machine Learning in Wireless Sensor Network
-
2018-09-25 https://doi.org/10.14419/ijet.v7i4.6.20460 -
Wireless sensor network, Machine learning, Energy efficient, Security, Data aggregation -
Abstract
Advances in hardware as well as wireless network tools have positioned us at the doorstep of a new-fangled era where undersized wireless devices will endow with access to information every time, everyplace plus enthusiastically contribute in constructing smart atmosphere. The sensors in WSN’s assemble information regarding the substances they are exploited to sense. Nevertheless these sensors are restricted in their performance by restrictions of power plus bandwidth. Machine Learning methods can facilitate them in overcoming such restrictions. During the past decade, WSNs have seen progressively more rigorous implementation of highly developed machine learning algorithms for information handing out and improving network performance. Machine learning enthuse countless realistic clarifications that make best use of resource exploitation along with make longer the existence of the network. In particular, WSN designers have effectively agree to machine learning paradigms to deal with widespread purposeful problems associated to localization, data aggregation, fault detection, Security, node clustering, prediction models and energy aware routing, etc.
Â
Â
-
References
[1] I.F.Akykidze, W.Su, Y.Sankarasubramaniam, “Wireless sensor networks A Surveyâ€, Computer Networks, Volume 38,Issue 4, March 2002, IEEE.
[2] K. Romer, F. Mattern, "The design space of wireless sensor networks", IEEE Wireless Commun., vol. 11, no. 6, pp. 54-61, Dec. 2004
[3] D. E. D. Culler, and M. Srivastava, "Overview of sensor networks", IEEE Computer, pp. 41-49, 2004
[4] Shabbir Hasan, R.K. Singh, “A Survey of Wireless sensor Networksâ€, International journal of Emerging Technology and Advanced Engineering, Volume 3, Issue 3, March 2013
[5] Sanjeev Kumar Guptha, Poonam Sinha, “Overview of wireless sensor networks: A Surveyâ€, International Journal of Advanced Research in Computer and Communication Engineering, Volume 3, Issue 1, January 2014
[6] Neha Singh, Kamakshi Rautela, “Literature Survey on Wireless sensor networksâ€, International journal of Engineering and computer Science, Volume 5, Issue 8, August 2016
[7] Mitchell, “Machine Learningâ€, McGraw-Hill, 1997
[8] M. Welling, “A First Encounter with Machine Learningâ€
[9] T. O. Ayodele, "Introduction to machine learning" in New Advances in Machine Learning, Rijeka, Croatia:InTech, 2010
[10] P. Harrington, “Machine Learning in actionâ€, Manning Publications Co., Shelter Island, New York, 2012
[11] Ayon Dey, “Machine Learning Algorithms: A Reviewâ€, International Journal of Computer Science and Information Technologies (IJCSIT), Vol. 7 (3) , 2016, 1174-1179
[12] M. Di, E. M. Joo, "A survey of machine learning in wireless sensor networks from networking and application perspectives", Proc. 6th Int. Conf. Inf. Commun. Signal Process., pp. 1-5, 2007
[13] Jennifer Yick, Biswanath Mukherjee, Dipak Ghosal, “Wireless sensor network survey,†Computer Networks Elsevier 52 , pp 2292–2330, 2008
[14] Romer, Mattern, “The Design Space of Wireless Sensor Networksâ€, IEEE Wireless Communication, 2004
[15] Forster, “Machine learning techniques applied to wireless adhoc networks: Guide and surveyâ€, In Proceedings of the 3rd International Conference on Intelligent Sensors, Sensor Networks and Information Processing (ISSNIP), ISSNIP
[16] S. R. K. Joel B. Predd, and H. Vincent Poor, "Distributed Learning in Wireless Sensor Networks - application issues and the problem of distributed inference", IEEE Signal Processing Magazine, 2006
[17] A. Mainwaring, D. Culler, J. Polastre, R. Szewczyk, and J. Anderson, “Wireless sensor networks for habitat monitoringâ€, in Proceedings of the 1st ACM International Workshop on Wireless Sensor Networks and Applications, ACM, 2002, pp. 88–97
[18] E.S. Nadimia,b, H.T. Søgaardc, T. Bak, “ZigBee-based wireless sensor networks for classifying the behavior of a herd of animals using classification treesâ€, biosystem engineering, Science direct,100 (2008) 167– 176
[19] Z.Meri, M.Bayoumi et al, “A lightweight fault tolerant target location system for wireless sensor networksâ€, international journal for computing, 2012,pp 234-238
[20] E.Cayiric, Y.Dogan et al, “wireless sensor networks for underwater surveillanceâ€, Elsevier B.V , Ad Hoc Networks 4 (2006) 431–446.
[21] J. W. Branch, C. Giannella, B. Szymanski, R. Wolff, and H. Kargupta, “In-network outlier detection in wireless sensor networks†Knowledge and information systems, vol. 34, no. 1, pp. 23–54, 2013
[22] J. Winter, Y. Xu, and W.-C. Lee, “Energy efficient processing of k nearest neighbor queries in location-aware sensor networksâ€, in 2nd International Conference on Mobile and Ubiquitous Systems: Networking and Services, IEEE, 2005, pp. 281–292
[23] P. P. Jayaraman, A. Zaslavsky, and J. Delsing, “Intelligent processing of k-nearest neighbors queries using mobile data collectors in a location aware 3D wireless sensor network,†in Trends in Applied Intelligent Systems. Springer, 2010, pp. 260–270
[24] Dan Li, Kerry D. Wong, Detection, “Classification and Tracking of Targets in Distributed Sensor Networksâ€, IEEE Signal processing, march, 2002
[25] L. Yu, N. Wang, and X. Meng, “Real-time forest fire detection with wireless sensor networksâ€, in International Conference on Wireless Communications, Networking and Mobile Computing, vol. 2, 2005, pp. 1214–1217
[26] O. Postolache, J. Pereira, and P. Girao, “Smart sensors network for air quality monitoring applicationsâ€, IEEE Transactions on Instrumentation and Measurement, vol. 58, no. 9, pp. 3253–3262, 2009
[27] Y. Gao, Y. Lin, and Y. Sun, “A wireless sensor network based on the novel concept of an I-matrix to achieve high-precision lighting controlâ€, Building and Environment, vol. 70, pp. 223–231, 2013
[28] A. Snow, P. Rastogi, and G. Weckman, “Assessing dependability of wireless networks using neural networksâ€, in Military Communications Conference, IEEE, 2005, pp. 2809–2815 Vol. 5
[29] Raghavendra V. Kulkarni ; Ganesh K. Venayagamoorthy, “Neural network based secure media access control protocol for wireless sensor networksâ€, International Joint Conference on Neural Networks, 14-19 June 2009
[30] Y.J. Shen and M.-S. Wang, “Broadcast scheduling in wireless sensor networks using fuzzy Hopfield neural networkâ€, Expert Systems with Applications, vol. 34, no. 2, pp. 900 – 907, 2008
[31] S. Kaplantzis, A. Shilton, N. Mani, and Y. Sekercioglu, “Detecting selective forwarding attacks in wireless sensor networks using support vector machinesâ€, in 3rd International Conference on Intelligent Sensors, Sensor Networks and Information. IEEE, 2007, pp. 335–340
[32] S. Rajasegarar, C. Leckie, M. Palaniswami and J. Bezdek, “Quarter sphere based distributed anomaly detection in wireless sensor networksâ€, in International Conference on Communications, 2007, pp. 3864–3869
[33] Y. Chen, Y. Qin, Y. Xiang, J. Zhong, and X. Jiao, “Intrusion detection system based on immune algorithm and support vector machine in wireless sensor networkâ€, in Information and Automation, ser. Communications in Computer and Information Science. Springer, Berlin Heidelberg, 2011, vol. 86, pp. 372–376
[34] S. Kaplantzis, A. Shilton, N. Mani, and Y. Sekercioglu, “Detecting selective forwarding attacks in wireless sensor networks using support vector machinesâ€, in 3rd International Conference on Intelligent Sensors, Sensor Networks and Information. IEEE, 2007, pp. 335–340
[35] Bin Yang, Jianhong Yang, Jinwu Xu, Debin Yang, “Area Localization Algorithm for Mobile Nodes in Wireless Sensor Networks Based on Support Vector Machinesâ€, International Conference on Mobile Ad-Hoc and Sensor Networks Mobile Ad-Hoc and Sensor Networks pp 561-571
[36] P. Zappi, C. Lombriser, T. Stiefmeier, E. Farella, D. Roggen, L. Benini, and G. Tröster, “Activity recognition from on-body sensors: Accuracy power trade-off by dynamic sensor selectionâ€, in Wireless Sensor Networks. Springer, 2008, pp. 17–33
[37] J.-M. Kim, S.-H. Park, Y.-J. Han, and T.-M. Chung, “CHEF: Cluster head election mechanism using fuzzy logic in wireless sensor networksâ€, in 10th International Conference on Advanced Communication Technology, vol. 1. IEEE, 2008, pp. 654–659
[38] D. Janakiram, V. Adi Mallikarjuna Reddy, and A. Phani Kumar, “Outlier detection in wireless sensor networks using Bayesian belief networksâ€, in 1st International Conference on Communication System Software and Middleware. IEEE, 2006, pp. 1–6
[39] M. Morelande, B. Moran, and M. Brazil, “Bayesian node localization in wireless sensor networksâ€, in IEEE International Conference on Acoustics, Speech and Signal Processing, 2008, pp. 2545–2548
[40] D. Feldman, M. Schmidt, C. Sohler, D. Feldman, M. Schmidt, and C. Sohler, “Turning big data into tiny data: Constant-size coresets for k-means, PCA and projective clusteringâ€, in SODA, 2013, pp. 1434–1453
[41] H. Malik, A. Malik, and C. Roy, “A methodology to optimize query in wireless sensor networks using historical dataâ€, Journal of Ambient Intelligence and Humanized Computing, vol. 2, pp. 227–238, 2011
[42] I. T. Jolliffe, “Principal component analysisâ€. Springer verlag, 2002
[43] Y.-C. Tseng, Y.-C. Wang, K.-Y. Cheng and Y.-Y. Hsieh, “iMouse: An integrated mobile surveillance and wireless sensor systemâ€, Computer applications, vol. 40, no. 6, pp. 60–66, 2007
[44] S. Li, X. Kong, and D. Lowe, “Dynamic path determination of mobile beacons employing reinforcement learning for wireless sensor localizationâ€, in 26th International Conference on Advanced Information Networking and Applications Workshops, 2012, pp. 760–765.
[45] R. Arroyo-Valles, R. Alaiz-Rodriguez, A. Guerrero-Curieses, and J. Cid-Sueiro, “Q-probabilistic routing in wireless sensor networksâ€, in 3rd International Conference on Intelligent Sensors, Sensor Networks and Information. IEEE, 2007, pp. 1–6
[46] S. Dong, P. Agrawal, and K. Sivalingam, “Reinforcement learning based geographic routing protocol for UWB wireless sensor network,†in Global Telecommunications Conference. IEEE, 2007, pp. 652–656
[47] A. Förster and A. Murphy, “FROMS: Feedback routing for optimizing multiple sinks in wsn with reinforcement learningâ€, in 3rd International Conference on Intelligent Sensors, Sensor Networks and Information. IEEE, 2007, pp. 371–376.
[48] R. Sun, S. Tatsumi, and G. Zhao, “Q-MAP: A novel multicast routing method in wireless ad hoc networks with multiagent reinforcement learningâ€, in Region 10 Conference on Computers, Communications, Control and Power Engineering, vol. 1, 2002, pp. 667–670 vol.1
[49] A. Shareef, Y. Zhu, and M. Musavi, “Localization using neural networks in wireless sensor networks,†in Proceedings of the 1st International Conference on Mobile Wireless Middleware, Operating Systems, and Applications, 2008, pp. 1–7
[50] A. Snow, P. Rastogi, and G. Weckman, “Assessing dependability of wireless networks using neural networksâ€, in Military Communications Conference. IEEE, 2005, pp. 2809–2815 Vol. 5
[51] A. Moustapha and R. Selmic, “Wireless sensor network modeling using modified recurrent neural networks: Application to fault detectionâ€, IEEE Transactions on Instrumentation and Measurement, vol. 57, no. 5, pp. 981–988, 2008
[52] Y. Wang, M. Martonosi, and L.-S. Peh, “Predicting link quality using supervised learning in wireless sensor networksâ€, ACM SIGMOBILE Mobile Computing and Communications Review, vol. 11, no. 3, pp. 71–83, 2007
[53] G. Giorgetti, S. K. S. Gupta, and G. Manes, “Wireless localization
using self-organizing mapsâ€, in Proceedings of the 6th International Conference on Information Processing in Sensor Networks, ser. IPSN’07. New York, NY, USA: ACM, 2007, pp. 293–302[54] S. Li, X. Kong, and D. Lowe, “Dynamic path determination of mobile beacons employing reinforcement learning for wireless sensor localizationâ€, in 26th International Conference on Advanced Information Networking and Applications Workshops, 2012, pp. 760–765
[55] X. Liang, M. Chen, Y. Xiao, I. Balasingham, and V. C. M. Leung,
“A novel cooperative communication protocol for QoS provisioning in wireless sensor networksâ€, in 5th International Conference on Test beds and Research Infrastructures for the Development of Networks Communities and Workshops, 2009, pp. 1–6[56] Y. Chu, P. Mitchell, and D. Grace, “ALOHA and q-learning based
medium access control for wireless sensor networksâ€, in International Symposium on Wireless Communication Systems, 2012, pp. 511–515[57] K. Klues, G. Hackmann, O. Chipara, and C. Lu, “A component based architecture for power-efficient media access control in wireless sensor networksâ€, in Proceedings of the 5th International Conference on Embedded Networked Sensor Systems. ACM, 2007, pp. 59–72
[58] M. Seah, C.-K. Tham, V. Srinivasan, and A. Xin, “Achieving coverage through distributed reinforcement learning in wireless sensor
networksâ€, in 3rd International Conference on Intelligent Sensors,
Sensor Networks and Information. IEEE, 2007, pp. 425–430
-
Downloads
-
How to Cite
chander, B., Kumar.B, P., & ., K. (2018). A Analysis of Machine Learning in Wireless Sensor Network. International Journal of Engineering & Technology, 7(4.6), 185-192. https://doi.org/10.14419/ijet.v7i4.6.20460Received date: 2018-09-29
Accepted date: 2018-09-29
Published date: 2018-09-25