Optimizing QoS in HD Map Updates: Cross-Layer Multi-Agent with Hierarchical and Independent Learning
Jeffrey Redondo, Nauman Aslam, Juan Zhang, Zhenhui Yuan

TL;DR
This paper presents a cross-layer, multi-agent hierarchical learning approach to optimize QoS for HD map updates in vehicular networks, significantly reducing latency across multiple services.
Contribution
It introduces a novel multi-parameter control method with hierarchical independent learning to enhance latency performance in vehicular communication networks.
Findings
Latency improved by up to 87.3% for HD Map updates.
Multi-agent hierarchical learning outperforms standard IEEE802.11p EDCA.
Effective prioritization of services achieved through multi-parameter adjustment.
Abstract
The data collected by autonomous vehicle (AV) sensors such as LiDAR and cameras is crucial for creating high-definition (HD) maps to provide higher accuracy and enable a higher level of automation. Nevertheless, offloading this large volume of raw data to edge servers leads to increased latency due to network congestion in highly dense environments such as Vehicular Adhoc networks (VANET). To address this challenge, researchers have focused on the dynamic allocation of minimum contention window (CWmin) value. While this approach could be sufficient for fairness, it might not be adequate for prioritizing different services, as it also involves other parameters such as maximum contention window (CWmax) and infer-frame space number (IFSn). In response to this, we extend the scope of previous solutions to include the control of not only CWmin but also the adjustment of two other parameters…
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Taxonomy
TopicsDistributed and Parallel Computing Systems · Mobile Agent-Based Network Management · Peer-to-Peer Network Technologies
