Back to Search Start Over

Deep Reinforcement Learning for Random Access in Machine-Type Communication

Authors :
Jadoon, Muhammad Awais
Pastore, Adriano
Navarro, Monica
Perez-Cruz, Fernando
Jadoon, Muhammad Awais
Pastore, Adriano
Navarro, Monica
Perez-Cruz, Fernando
Publication Year :
2022

Abstract

Random access (RA) schemes are a topic of high interest in machine-type communication (MTC). In RA protocols, backoff techniques such as exponential backoff (EB) are used to stabilize the system to avoid low throughput and excessive delays. However, these backoff techniques show varying performance for different underlying assumptions and analytical models. Therefore, finding a better transmission policy for slotted ALOHA RA is still a challenge. In this paper, we show the potential of deep reinforcement learning (DRL) for RA. We learn a transmission policy that balances between throughput and fairness. The proposed algorithm learns transmission probabilities using previous action and binary feedback signal, and it is adaptive to different traffic arrival rates. Moreover, we propose average age of packet (AoP) as a metric to measure fairness among users. Our results show that the proposed policy outperforms the baseline EB transmission schemes in terms of throughput and fairness.<br />Comment: 6 pages, 9 figures, conference paper accepted in IEEE WCNC'22

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1333745790
Document Type :
Electronic Resource