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Intelligent energy optimization for advanced IoT analytics edge computing on wireless sensor networks

Author

Listed:
  • Israel Edem Agbehadji
  • Samuel Ofori Frimpong
  • Richard C Millham
  • Simon James Fong
  • Jason J Jung

Abstract

The current dispensation of big data analytics requires innovative ways of data capturing and transmission. One of the innovative approaches is the use of a sensor device. However, the challenge with a sensor network is how to balance the energy load of wireless sensor networks, which can be achieved by selecting sensor nodes with an adequate amount of energy from a cluster. The clustering technique is one of the approaches to solve this challenge because it optimizes energy in order to increase the lifetime of the sensor network. In this article, a novel bio-inspired clustering algorithm was proposed for a heterogeneous energy environment. The proposed algorithm (referred to as DEEC-KSA) was integrated with a distributed energy-efficient clustering algorithm to ensure efficient energy optimization and was evaluated through simulation and compared with benchmarked clustering algorithms. During the simulation, the dynamic nature of the proposed DEEC-KSA was observed using different parameters, which were expressed in percentages as 0.1%, 4.5%, 11.3%, and 34% while the percentage of the parameter for comparative algorithms was 10%. The simulation result showed that the performance of DEEC-KSA is efficient among the comparative clustering algorithms for energy optimization in terms of stability period, network lifetime, and network throughput. In addition, the proposed DEEC-KSA has the optimal time (in seconds) to send a higher number of packets to the base station successfully. The advantage of the proposed bio-inspired technique is that it utilizes random encircling and half-life period to quickly adapt to different rounds of iteration and jumps out of any local optimum that might not lead to an ideal cluster formation and better network performance.

Suggested Citation

  • Israel Edem Agbehadji & Samuel Ofori Frimpong & Richard C Millham & Simon James Fong & Jason J Jung, 2020. "Intelligent energy optimization for advanced IoT analytics edge computing on wireless sensor networks," International Journal of Distributed Sensor Networks, , vol. 16(7), pages 15501477209, July.
  • Handle: RePEc:sae:intdis:v:16:y:2020:i:7:p:1550147720908772
    DOI: 10.1177/1550147720908772
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    References listed on IDEAS

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    1. Zhou, Kaile & Fu, Chao & Yang, Shanlin, 2016. "Big data driven smart energy management: From big data to big insights," Renewable and Sustainable Energy Reviews, Elsevier, vol. 56(C), pages 215-225.
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    Cited by:

    1. Tri-Hai Nguyen & Luong Vuong Nguyen & Jason J. Jung & Israel Edem Agbehadji & Samuel Ofori Frimpong & Richard C. Millham, 2020. "Bio-Inspired Approaches for Smart Energy Management: State of the Art and Challenges," Sustainability, MDPI, vol. 12(20), pages 1-24, October.
    2. Briytone Mutichiro & Younghan Kim, 2021. "User preference–based QoS-aware service function placement in IoT-Edge cloud," International Journal of Distributed Sensor Networks, , vol. 17(5), pages 15501477211, May.

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