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Bloom filter–based efficient broadcast algorithm for the Internet of things

Author

Listed:
  • Anum Talpur
  • Faisal K Shaikh
  • Thomas Newe
  • Adil A Sheikh
  • Emad Felemban
  • Abdelmajid Khelil

Abstract

In the Internet of things, a large number of objects can be embedded over a region of interest where almost every device is connected to the Internet. This work scrutinizes the broadcast overhead problem in an Internet of things network, containing a very large number of objects. The work proposes a probabilistic structure (bloom filter)-based technique, which uses a new broadcast structure that attempts to reduce the number of duplicate copies of a packet at every node. This article utilizes a clustering concept to make the broadcast efficient in terms of memory space, broadcast overhead, and energy usage. The unique idea of a bloom-based network uses a filter to incorporate neighbor information when taking a forwarding decision to reduce broadcast overhead. The simulation results show that parallel broadcasting among different clusters and the use of a bloom filter can achieve a reduction in broadcast overhead from hundreds to ones and tens, when compared with a conventional non-bloom-based broadcast algorithm and a bloom-based algorithm. In addition, it helps to reduce energy usage evenly throughout the network, 1/100 times, when compared with conventional broadcast (non-bloom-based) and, 1/10 times, when compared with bloom-based broadcast. This increases the lifetime of a network by having control over network density usage and communications overhead as a result of broadcasting.

Suggested Citation

  • Anum Talpur & Faisal K Shaikh & Thomas Newe & Adil A Sheikh & Emad Felemban & Abdelmajid Khelil, 2017. "Bloom filter–based efficient broadcast algorithm for the Internet of things," International Journal of Distributed Sensor Networks, , vol. 13(12), pages 15501477177, December.
  • Handle: RePEc:sae:intdis:v:13:y:2017:i:12:p:1550147717749744
    DOI: 10.1177/1550147717749744
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