Distributed Scheduling for Throughput Maximization under Deadline Constraint in Wireless Mesh Networks
Xin Wang, Xudong Wang

TL;DR
This paper introduces a distributed scheduling method using policy gradients to maximize throughput in wireless mesh networks with deadline-constrained flows, addressing interference and convergence issues.
Contribution
It proposes a novel policy gradient-based distributed scheduling approach with reward shaping and resource determination algorithms for wireless mesh networks.
Findings
The PGDS method effectively maximizes throughput under deadlines.
The approach converges and maintains asymptotic optimality despite interference.
The method accelerates convergence using potential-based reward shaping.
Abstract
This paper studies the distributed scheduling of traffic flows with arbitrary deadlines that arrive at their source nodes and are transmitted to different destination nodes via multiple intermediate nodes in a wireless mesh network. When a flow is successfully delivered to its destination, a reward will be obtained, which is the embodiment of network performance and can be expressed by metrics such as throughput or network utility. The objective is to maximize the aggregate reward of all the deadline-constrained flows, which can be transformed into the constrained Markov decision process (CMDP). According to the transformation, a policy gradient-based distributed scheduling (PGDS) method is first proposed, where a primary reward and an auxiliary reward are designed to incentivize each node to independently schedule network resources such as power and subcarriers. The primary reward is…
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Taxonomy
TopicsMobile Ad Hoc Networks · Advanced Wireless Network Optimization · Cooperative Communication and Network Coding
