Network Slicing
Network slicing dynamically partitions shared network infrastructure into isolated virtual networks, each tailored to specific applications' quality-of-service (QoS) requirements. Current research heavily utilizes machine learning, particularly reinforcement learning (with algorithms like DRL, PPO, and SARSA) and deep learning (including graph attention networks and neural networks), often coupled with digital twin modeling and federated learning, to optimize resource allocation and manage the complex interactions between slices. This approach aims to improve resource efficiency, ensure service-level agreements, and enhance security in 5G and beyond networks, impacting both network management practices and the development of novel AI-driven network control systems.
Papers
Open RAN LSTM Traffic Prediction and Slice Management using Deep Reinforcement Learning
Fatemeh Lotfi, Fatemeh Afghah
Intelligent Data-Driven Architectural Features Orchestration for Network Slicing
Rodrigo Moreira, Flavio de Oliveira Silva, Tereza Cristina Melo de Brito Carvalho, Joberto S. B. Martins