TinyQMIX: Distributed Access Control for mMTC via Multi-agent Reinforcement Learning

11/21/2022
by   Tien Thanh Le, et al.
0

Distributed access control is a crucial component for massive machine type communication (mMTC). In this communication scenario, centralized resource allocation is not scalable because resource configurations have to be sent frequently from the base station to a massive number of devices. We investigate distributed reinforcement learning for resource selection without relying on centralized control. Another important feature of mMTC is the sporadic and dynamic change of traffic. Existing studies on distributed access control assume that traffic load is static or they are able to gradually adapt to the dynamic traffic. We minimize the adaptation period by training TinyQMIX, which is a lightweight multi-agent deep reinforcement learning model, to learn a distributed wireless resource selection policy under various traffic patterns before deployment. Therefore, the trained agents are able to quickly adapt to dynamic traffic and provide low access delay. Numerical results are presented to support our claims.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/19/2020

Multi-Agent Deep Reinforcement Learning for Distributed Resource Management in Wirelessly Powered Communication Networks

This paper studies multi-agent deep reinforcement learning (MADRL) based...
research
10/29/2019

Deep Reinforcement Learning for Distributed Uncoordinated Cognitive Radios Resource Allocation

This paper presents a novel deep reinforcement learning-based resource a...
research
02/15/2023

Learning Random Access Schemes for Massive Machine-Type Communication with MARL

In this paper, we explore various multi-agent reinforcement learning (MA...
research
07/08/2021

Intelligent Link Adaptation for Grant-Free Access Cellular Networks: A Distributed Deep Reinforcement Learning Approach

With the continuous growth of machine-type devices (MTDs), it is expecte...
research
03/09/2023

Dual-Attention Deep Reinforcement Learning for Multi-MAP 3D Trajectory Optimization in Dynamic 5G Networks

5G and beyond networks need to provide dynamic and efficient infrastruct...
research
10/11/2022

Digital Twin-Based Multiple Access Optimization and Monitoring via Model-Driven Bayesian Learning

Commonly adopted in the manufacturing and aerospace sectors, digital twi...
research
05/04/2022

Collision Resolution with Deep Reinforcement Learning for Random Access in Machine-Type Communication

Grant-free random access (RA) techniques are suitable for machine-type c...

Please sign up or login with your details

Forgot password? Click here to reset