A Analysis of Machine Learning in Wireless Sensor Network

  • Authors

    • Bhanu chander
    • Prem Kumar.B
    • Kumaravelan .
    2018-09-25
    https://doi.org/10.14419/ijet.v7i4.6.20460
  • Wireless sensor network, Machine learning, Energy efficient, Security, Data aggregation
  • 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.

     

     

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    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.v7i4.6.20460