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A priority-based seven-layer strategy for energy management cooperation in a smart city integrated green technology

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  • Ben Arab, Marwa
  • Rekik, Mouna
  • Krichen, Lotfi

Abstract

The notion of smart city is based on using both bidirectional power and data flows. For that, designing a persuasive control model for power flow becomes a big and crucial part in a smart city to optimize the power balance between production and consumption. So, a seven-layer smart city energy management strategy (SLSCEMS) for multiple home energy cooperation is presented in this paper. The optimised aims of this strategy are smoothing the smart homes power demand profiles, reducing the electricity bills (E.B), and gaining a total free charging of Plug-in Electric Vehicles (PEVs). This approach has been designed as hierarchic local and global layers. The first one is divided into three layers that aim to transfer the energy between each smart home and its own Renewable Energy sources (RES) and PEVs. The second one is split into four layers that aim to transfer the energy between each smart home and its PEVs, the neighboring homes and their RES, and the smart grid. All optimised layers are based on Particle Swarm Optimization (PSO) algorithm. The proposed strategy is evaluated in a city that contains one hundred homes classified into five categories, each category is designated by its power profile and its flexible number of RESs and PEVs. Simulation results show a decrease in the daily E.B of 26.24%, 2.42%, 60.33%, 29.51%, and 2.38% respectively of the five categories. So, these numerical results prove that the proposed SLSCEMS has considerable efficiency.

Suggested Citation

  • Ben Arab, Marwa & Rekik, Mouna & Krichen, Lotfi, 2023. "A priority-based seven-layer strategy for energy management cooperation in a smart city integrated green technology," Applied Energy, Elsevier, vol. 335(C).
  • Handle: RePEc:eee:appene:v:335:y:2023:i:c:s0306261923001319
    DOI: 10.1016/j.apenergy.2023.120767
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    References listed on IDEAS

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