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Lyapunov-guided Multi-Agent Reinforcement Learning for Delay-Sensitive Wireless Scheduling
by
Zhang, Cheng
, Liu, Zening
, Lan, Wei
, Fan, Ji
, Huang, Yongming
in
Algorithms
/ Delay
/ Multiagent systems
/ Resource allocation
/ Resource scheduling
/ Vibration
2024
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Lyapunov-guided Multi-Agent Reinforcement Learning for Delay-Sensitive Wireless Scheduling
by
Zhang, Cheng
, Liu, Zening
, Lan, Wei
, Fan, Ji
, Huang, Yongming
in
Algorithms
/ Delay
/ Multiagent systems
/ Resource allocation
/ Resource scheduling
/ Vibration
2024
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Lyapunov-guided Multi-Agent Reinforcement Learning for Delay-Sensitive Wireless Scheduling
Paper
Lyapunov-guided Multi-Agent Reinforcement Learning for Delay-Sensitive Wireless Scheduling
2024
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Overview
In this paper, a two-stage intelligent scheduler is proposed to minimize the packet-level delay jitter while guaranteeing delay bound. Firstly, Lyapunov technology is employed to transform the delay-violation constraint into a sequential slot-level queue stability problem. Secondly, a hierarchical scheme is proposed to solve the resource allocation between multiple base stations and users, where the multi-agent reinforcement learning (MARL) gives the user priority and the number of scheduled packets, while the underlying scheduler allocates the resource. Our proposed scheme achieves lower delay jitter and delay violation rate than the Round-Robin Earliest Deadline First algorithm and MARL with delay violation penalty.
Publisher
Cornell University Library, arXiv.org
Subject
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