PPO-EPO: Energy and Performance Optimization for O-RAN Using Reinforcement Learning
Journal:
arXiv
Published Date:
Apr 20, 2025
Abstract
Energy consumption in mobile communication networks has become a significant
challenge due to its direct impact on Capital Expenditure (CAPEX) and
Operational Expenditure (OPEX). The introduction of Open RAN (O-RAN) enables
telecommunication providers to leverage network intelligence to optimize energy
efficiency while maintaining Quality of Service (QoS). One promising approach
involves traffic-aware cell shutdown strategies, where underutilized cells are
selectively deactivated without compromising overall network performance.
However, achieving this balance requires precise traffic steering mechanisms
that account for throughput performance, power efficiency, and network
interference constraints.
This work proposes a reinforcement learning (RL) model based on the Proximal
Policy Optimization (PPO) algorithm to optimize traffic steering and energy
efficiency. The objective is to maximize energy efficiency and performance
gains while strategically shutting down underutilized cells. The proposed RL
model learns adaptive policies to make optimal shutdown decisions by
considering throughput degradation constraints, interference thresholds, and
PRB utilization balance. Experimental validation using TeraVM Viavi RIC tester
data demonstrates that our method significantly improves the network's energy
efficiency and downlink throughput.