Power and Interference Control for VLC-Based UDN: A Reinforcement
Learning Approach
- URL: http://arxiv.org/abs/2303.05448v1
- Date: Thu, 9 Mar 2023 17:46:13 GMT
- Title: Power and Interference Control for VLC-Based UDN: A Reinforcement
Learning Approach
- Authors: Xiao Tang, Sicong Liu
- Abstract summary: An ultra-dense network (UDN) technology can be adopted to expand the capacity of the Visible Light Communication (VLC) network.
The deployment of the cells is optimized via spatial reuse to mitigate ICI.
An RL-based algorithm is proposed to dynamically optimize the policy of power and interference control.
- Score: 10.576175218005046
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Visible light communication (VLC) has been widely applied as a promising
solution for modern short range communication. When it comes to the deployment
of LED arrays in VLC networks, the emerging ultra-dense network (UDN)
technology can be adopted to expand the VLC network's capacity. However, the
problem of inter-cell interference (ICI) mitigation and efficient power control
in the VLC-based UDN is still a critical challenge. To this end, a
reinforcement learning (RL) based VLC UDN architecture is devised in this
paper. The deployment of the cells is optimized via spatial reuse to mitigate
ICI. An RL-based algorithm is proposed to dynamically optimize the policy of
power and interference control, maximizing the system utility in the
complicated and dynamic environment. Simulation results demonstrate the
superiority of the proposed scheme, it increase the system utility and
achievable data rate while reducing the energy consumption and ICI, which
outperforms the benchmark scheme.
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