Sensor placement and resource allocation for energy harvesting IoT networks

  title={Sensor placement and resource allocation for energy harvesting IoT networks},
  author={Osama M. Bushnaq and Anas Chaaban and Sundeep Prabhakar Chepuri and Geert Leus and Tareq Y. Al-Naffouri},
  journal={Digit. Signal Process.},

An Energy-Efficient Edge Computing Framework for Decentralized Sensing in WSN-Assisted IoT

  • Vini GuptaS. De
  • Computer Science
    IEEE Transactions on Wireless Communications
  • 2021
Improved energy efficiency and network energy balance of the proposed framework over the existing closest competitive centralized and decentralized approaches are illustrated.

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