A reinforcement learning agent for mixed-numerology interference-aware slice spectrum allocation with non-deterministic and deterministic traffic

M Zambianco, G Verticale - Computer Communications, 2022 - Elsevier
… a deep reinforcement learning (DRL) agent that … -numerology interference (INI). Furthermore,
by exploiting the information about the deterministic traffic patterns, we specialize the agent

Mixed-numerology interference-aware spectrum allocation for eMBB and URLLC network slices

M Zambianco, G Verticale - 2021 19th Mediterranean …, 2021 - ieeexplore.ieee.org
… In addition, we boost the agent learning efficiency by designing an action masking module
… for a mixed-numerology access scheme. The authors of [8] design a DRL agent to allocate …

Spectrum allocation for network slices with inter-numerology interference using deep reinforcement learning

M Zambianco, G Verticale - 2020 IEEE 31st Annual …, 2020 - ieeexplore.ieee.org
agent-based allocation of mixednumerology spectrum slices by leveraging deep reinforcement
learning … slices that are multiplexed on a mixed-numerology physical layer. The objective …

Joint Power and Flexible Numerology Allocation in 5G Networks Using Deep Reinforcement Learning

A Topcu, AQ Lawey, SAR Zaidi - 2024 11th International …, 2024 - ieeexplore.ieee.org
… scenario by optimising both power and numerology allocation. We utilised the same DQN
agent … Chatzinotas, “Joint power and resource block allocation for mixed-numerologybased 5g …

Intelligent multi-branch allocation of spectrum slices for inter-numerology interference minimization

M Zambianco, G Verticale - Computer Networks, 2021 - Elsevier
… for a multi-user scenario in a mixed-numerology 5G RAN shared by different network slices.
… 6, we show the agent capability to gradually learn the feasible action space. Specifically, we …

Dynamic resource optimization based on flexible numerology and Markov decision process for heterogeneous services

C Tang, X Chen, Y Chen, Z Li - 2019 IEEE 25th International …, 2019 - ieeexplore.ieee.org
… Q-learning focuses on how agents interact with the unknown environment to maximize Q …
So, we will combine Qlearning with deep learning called Deep Q-Learning to find the optimal …

Scalable Multiuser Immersive Communications with Multi-numerology and Mini-slot

M Hu, J Peng, L Wang, KK Wong - IEEE Communications …, 2024 - ieeexplore.ieee.org
learning (DRL) is a powerful machine learning tool to deal with discrete decision-making
problems, we provide a DRL-based solution, in which an agent … on mixed numerology and mini-…

Joint Q-Learning Based Resource Allocation and Multi-Numerology B5G Network Slicing Exploiting LWA Technology

NA Elmosilhy, MM Elmesalawy, II Ibrahim… - IEEE …, 2024 - ieeexplore.ieee.org
… The NR frame structure introduced mixed numerology where each numerology represents …
Action (A): based on the current state st∈ S, the learning agent selects the best action at ∈ A …

RLFN-VRA: Reinforcement Learning-based Flexible Numerology V2V Resource Allocation for 5G NR V2X Networks

C Chen, W Wang, Z Liu, Z Wang, C Li… - IEEE Transactions …, 2024 - ieeexplore.ieee.org
… optimization technique using multi-agent deep reinforcement learning, tailored for both
the … in 5G networks by framing the issue as mixed binary integer nonlinear programming (MBINP) …

Radio resource management in multi-numerology 5G new radio featuring network slicing

K Boutiba, M Bagaa, A Ksentini - ICC 2022-IEEE International …, 2022 - ieeexplore.ieee.org
Learning (DRL) to allocate resources and numerology for UEs to … as a consequence of
mixed numerologies. However, the … Then, we will evaluate the trained agent in a 5G simulated …