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Optimizing IoT Data Aggregation: Hybrid Firefly-Artificial Bee Colony Algorithm for Enhanced Efficiency in Agriculture

Author

Listed:
  • Venkateswaran, Narayanaswamy
  • Kumar, Kayala Kiran
  • Maheswari, Kirubakaran
  • Reddy, Radha Vijaya Kumar
  • Boopathi, Sampath

Abstract

The data aggregation process in this study has been enhanced by the hybrid firefly-artificial bee colony algorithm (HFABC) by increasing the average packet delivery ratio, end-to-end delay, and lifespan computation. In this study, HFABC and Multi Hop LEACH are two algorithms that are used to aggregate IoT data. Their performance is compared using evaluation criteria including average End-to-End Delay, PDR, and network lifetime. The HFABC method reduces average End-to-End Delay more effectively than Multi Hop LEACH, with gains of 2.20 to 8.66 %. This demonstrates how well it works to reduce the lag times for data transfer in IoT networks. With improvements ranging from 3.45% to 45.39%, HFABC has a greater success rate than Multi Hop LEACH in effectively delivering packets. HFABC increases network lifetime by 0.047 to 2.286 percent, indicating that it helps keep IoT networks operating for longer. For effective data aggregation in IoT networks, HFABC is a superior solution that decreases delays, improves packet delivery, and lengthens network lifetime.

Suggested Citation

  • Venkateswaran, Narayanaswamy & Kumar, Kayala Kiran & Maheswari, Kirubakaran & Reddy, Radha Vijaya Kumar & Boopathi, Sampath, 2024. "Optimizing IoT Data Aggregation: Hybrid Firefly-Artificial Bee Colony Algorithm for Enhanced Efficiency in Agriculture," AGRIS on-line Papers in Economics and Informatics, Czech University of Life Sciences Prague, Faculty of Economics and Management, vol. 16(01), March.
  • Handle: RePEc:ags:aolpei:348970
    DOI: 10.22004/ag.econ.348970
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    References listed on IDEAS

    as
    1. Balasubbareddy Mallala & Venkata Prasad Papana & Ravindra Sangu & Kowstubha Palle & Venkata Krishna Reddy Chinthalacheruvu, 2022. "Multi-Objective Optimal Power Flow Solution Using a Non-Dominated Sorting Hybrid Fruit Fly-Based Artificial Bee Colony," Energies, MDPI, vol. 15(11), pages 1-16, June.
    2. Araby Mahdy & Abdullah Shaheen & Ragab El-Sehiemy & Ahmed Ginidi & Saad F. Al-Gahtani, 2023. "Single- and Multi-Objective Optimization Frameworks of Shape Design of Tubular Linear Synchronous Motor," Energies, MDPI, vol. 16(5), pages 1-27, March.
    3. Yang Yang & Shuai Zhang & Xiqi Zhang & Longcheng Gao & Yen Wei & Yan Ji, 2019. "Detecting topology freezing transition temperature of vitrimers by AIE luminogens," Nature Communications, Nature, vol. 10(1), pages 1-8, December.
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