학술논문

Active Queue Management in Disaggregated 5G and Beyond Cellular Networks Using Machine Learning
Document Type
Conference
Source
2024 19th Wireless On-Demand Network Systems and Services Conference (WONS) Wireless On-Demand Network Systems and Services Conference (WONS), 2024 19th. :113-120 Jan, 2024
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Cellular networks
Machine learning algorithms
5G mobile communication
Heuristic algorithms
Quality of service
Machine learning
Radio access networks
5G
QoS
AQM
AI
ML
LSTM
Disaggregated RAN
RIC
OpenAirInterface5G
Language
ISSN
2688-4909
Abstract
In the context of 5G and beyond cellular networks, this paper delves into Active Queue Management (AQM) implementation in high-latency environments within disaggregated Radio Access Network (RAN) deployments, addressing bufferbloat while improving overall end-to-end network performance. While researchers investigate AQM algorithms to mitigate bufferbloat in monolithic RAN deployments, they overlook the inherent capabilities of disaggregation in 5G and beyond cellular networks, which involves intricate cross-layer communication among distinct network entities housing different protocol stack layers. Our study explores the 5G architecture, investigates previous research on AQM, identifies challenges arising from these algorithms in dis aggregated network configurations, and proposes a comprehensive scheme for managing AQM in these configurations. To facilitate our approach, we leverage RAN Intelligent Controller (RIC) entities equipped with Artificial Intelligence (AI) and Machine Learning (ML). We evaluated our novel solution by implementing a previously proposed AQM algorithm, known as Dynamic RLC Queue Limit (DRQL), in a disaggregated RAN deployment within a high-latency network environment and assessing its effectiveness through the Quality of Service (QoS) achieved at the NITOS testbed, utilizing OpenAirInterface5G (OAI5G).