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Self-Sustaining Multiple Access with Continual Deep Reinforcement Learning for Dynamic Metaverse Applications

Networking and Internet Architecture 2023-09-20 v1 Artificial Intelligence Emerging Technologies Machine Learning Numerical Analysis Numerical Analysis

Abstract

The Metaverse is a new paradigm that aims to create a virtual environment consisting of numerous worlds, each of which will offer a different set of services. To deal with such a dynamic and complex scenario, considering the stringent quality of service requirements aimed at the 6th generation of communication systems (6G), one potential approach is to adopt self-sustaining strategies, which can be realized by employing Adaptive Artificial Intelligence (Adaptive AI) where models are continually re-trained with new data and conditions. One aspect of self-sustainability is the management of multiple access to the frequency spectrum. Although several innovative methods have been proposed to address this challenge, mostly using Deep Reinforcement Learning (DRL), the problem of adapting agents to a non-stationary environment has not yet been precisely addressed. This paper fills in the gap in the current literature by investigating the problem of multiple access in multi-channel environments to maximize the throughput of the intelligent agent when the number of active User Equipments (UEs) may fluctuate over time. To solve the problem, a Double Deep Q-Learning (DDQL) technique empowered by Continual Learning (CL) is proposed to overcome the non-stationary situation, while the environment is unknown. Numerical simulations demonstrate that, compared to other well-known methods, the CL-DDQL algorithm achieves significantly higher throughputs with a considerably shorter convergence time in highly dynamic scenarios.

Keywords

Cite

@article{arxiv.2309.10177,
  title  = {Self-Sustaining Multiple Access with Continual Deep Reinforcement Learning for Dynamic Metaverse Applications},
  author = {Hamidreza Mazandarani and Masoud Shokrnezhad and Tarik Taleb and Richard Li},
  journal= {arXiv preprint arXiv:2309.10177},
  year   = {2023}
}
R2 v1 2026-06-28T12:25:28.526Z