Deep Reinforcement Learning-based Cell DTX/DRX Configuration for Network Energy Saving
Wei Mao, Lili Wei, Omid Semiari, Shu-ping Yeh, Hosein Nikopour

TL;DR
This paper presents a deep reinforcement learning approach to optimize cell DTX/DRX configurations in 5G networks, balancing energy efficiency and QoS for delay-sensitive traffic, achieving significant energy savings with minimal QoS impact.
Contribution
It introduces a novel DRL framework with a deep Q-network on a contextual bandit model to adaptively configure cell DTX/DRX for various network conditions.
Findings
Up to 45% energy savings achieved.
QoS degradation limited to around 1%.
Effective adaptation across different traffic loads.
Abstract
3GPP Release 18 cell discontinuous transmission and reception (cell DTX/DRX) is an important new network energy saving feature for 5G. As a time-domain technique, it periodically aggregates the user data transmissions in a given duration of time when the traffic load is not heavy, so that the remaining time can be kept silent and advanced sleep modes (ASM) can be enabled to shut down more radio components and save more energy for the cell. However, inevitably the packet delay is increased, as during the silent period no transmission is allowed. In this paper we study how to configure cell DTX/DRX to optimally balance energy saving and packet delay, so that for delay-sensitive traffic maximum energy saving can be achieved while the degradation of quality of service (QoS) is minimized. As the optimal configuration can be different for different network and traffic conditions, the problem…
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