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arxiv: 2301.02771 · v1 · pith:VP6HKBP4new · submitted 2023-01-07 · 📡 eess.SP

Hierarchical Reinforcement Learning for RIS-Assisted Energy-Efficient RAN

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keywords energynetworksris-assistedcontrolefficiencyenergy-efficienthierarchicallearning
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Reconfigurable intelligent surface (RIS) is emerging as a promising technology to boost the energy efficiency (EE) of 5G beyond and 6G networks. Inspired by this potential, in this paper, we investigate the RIS-assisted energy-efficient radio access networks (RAN). In particular, we combine RIS with sleep control techniques, and develop a hierarchical reinforcement learning (HRL) algorithm for network management. In HRL, the meta-controller decides the on/off status of the small base stations (SBSs) in heterogeneous networks, while the sub-controller can change the transmission power levels of SBSs to save energy. The simulations show that the RIS-assisted sleep control can achieve significantly lower energy consumption, higher throughput, and more than doubled energy efficiency than no-RIS conditions.

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