Clustering and Data Aggregation in Wireless Sensor Networks Using Machine Learning Algorithms

Wireless Sensor Networks (WSN) are resource constrained. Clustering and data aggregations are used to reduce the energy consumption in the network by decreasing the amount of data transmission. Machine Learning algorithms such as swarm intelligence, reinforcement learning, neural networks significantly reduce the amount of data transmission and use the distributive characteristics of the network. It provides a comparative analysis of the performance of different methods to help the designers for designing appropriate machine learning based solutions for clustering and data aggregation applications. This paper presents a literature review of different machine learning based methods which are used for clustering and data aggregation in WSN and proposes an improved similarity based clustering and data aggregation, which uses Independent Component Analysis (ICA).

[1]  Gowtham Muniraju,et al.  Location Based Distributed Spectral Clustering for Wireless Sensor Networks , 2017, 2017 Sensor Signal Processing for Defence Conference (SSPD).

[2]  Hwee Pink Tan,et al.  Machine Learning in Wireless Sensor Networks: Algorithms, Strategies, and Applications , 2014, IEEE Communications Surveys & Tutorials.

[3]  Yu Hen Hu,et al.  Detection, classification, and tracking of targets , 2002, IEEE Signal Process. Mag..

[4]  G. Ahmed,et al.  Cluster head selection using decision trees for Wireless Sensor Networks , 2008, 2008 International Conference on Intelligent Sensors, Sensor Networks and Information Processing.

[5]  Yu-Chee Tseng,et al.  iMouse: An Integrated Mobile Surveillance and Wireless Sensor System , 2007, Computer.

[6]  Wendi Heinzelman,et al.  Energy-efficient communication protocol for wireless microsensor networks , 2000, Proceedings of the 33rd Annual Hawaii International Conference on System Sciences.

[7]  Dimitrios Gunopulos,et al.  Online Information Compression in Sensor Networks , 2006, 2006 IEEE International Conference on Communications.

[8]  Amy L. Murphy,et al.  CLIQUE: Role-Free Clustering with Q-Learning for Wireless Sensor Networks , 2009, 2009 29th IEEE International Conference on Distributed Computing Systems.

[9]  Abdus Samad,et al.  A Study of Machine Learning in Wireless Sensor Network , 2017 .

[10]  Erkki Mäkinen,et al.  A Neural Network Model to Minimize the Connected Dominating Set for Self-Configuration of Wireless Sensor Networks , 2009, IEEE Transactions on Neural Networks.

[11]  Khaled Elleithy,et al.  Secure Data Aggregation Model (SDAM) in Wireless Sensor Networks , 2015, 2015 IEEE 14th International Conference on Machine Learning and Applications (ICMLA).

[12]  José López Vicario,et al.  Data Aggregation and Principal Component Analysis in WSNs , 2016, IEEE Transactions on Wireless Communications.

[13]  SangHak Lee,et al.  Data Aggregation for Wireless Sensor Networks Using Self-organizing Map , 2004, AIS.

[14]  Er Meng Joo,et al.  A survey of machine learning in Wireless Sensor netoworks From networking and application perspectives , 2007, 2007 6th International Conference on Information, Communications & Signal Processing.

[15]  Shama Siddiqui,et al.  A survey on data aggregation mechanisms in wireless sensor networks , 2015, 2015 International Conference on Information and Communication Technologies (ICICT).

[16]  Emre Ertin,et al.  Gaussian Process Models for Censored Sensor Readings , 2007, 2007 IEEE/SP 14th Workshop on Statistical Signal Processing.