Energy-Efficient Sleep Mode Optimization of 5G mmWave Networks Using Deep Contextual MAB
CoRR(2024)
Abstract
Millimeter-wave (mmWave) networks, integral to 5G communication, offer a vast
spectrum that addresses the issue of spectrum scarcity and enhances peak rate
and capacity. However, their dense deployment, necessary to counteract
propagation losses, leads to high power consumption. An effective strategy to
reduce this energy consumption in mobile networks is the sleep mode
optimization (SMO) of base stations (BSs). In this paper, we propose a novel
SMO approach for mmWave BSs in a 3D urban environment. This approach, which
incorporates a neural network (NN) based contextual multi-armed bandit (C-MAB)
with an epsilon decay algorithm, accommodates the dynamic and diverse traffic
of user equipment (UE) by clustering the UEs in their respective tracking areas
(TAs). Our strategy includes beamforming, which helps reduce energy consumption
from the UE side, while SMO minimizes energy use from the BS perspective. We
extended our investigation to include Random, Epsilon Greedy, Upper Confidence
Bound (UCB), and Load Based sleep mode (SM) strategies. We compared the
performance of our proposed C-MAB based SM algorithm with those of All On and
other alternative approaches. Simulation results show that our proposed method
outperforms all other SM strategies in terms of the 10^th percentile of
user rate and average throughput while demonstrating comparable average
throughput to the All On approach. Importantly, it outperforms all approaches
in terms of energy efficiency (EE).
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