Urban traffic dynamic rerouting framework: A DRL-based model with fog-cloud architecture
Runjia Du, Sikai Chen, Jiqian Dong, Tiantian Chen, Xiaowen Fu, Samuel, Labi

TL;DR
This paper presents a fog-cloud based DRL framework combining GAQ and EBkSP to dynamically reroute urban traffic, significantly improving travel speed and reducing congestion.
Contribution
It introduces a novel two-stage fog-cloud architecture integrating Graph Attention Network and entropy-based shortest path for urban traffic rerouting.
Findings
Higher travel speeds achieved in case studies
Reduced congestion likelihood with rerouting
Effective vehicle prioritization impacts results
Abstract
Past research and practice have demonstrated that dynamic rerouting framework is effective in mitigating urban traffic congestion and thereby improve urban travel efficiency. It has been suggested that dynamic rerouting could be facilitated using emerging technologies such as fog-computing which offer advantages of low-latency capabilities and information exchange between vehicles and roadway infrastructure. To address this question, this study proposes a two-stage model that combines GAQ (Graph Attention Network - Deep Q Learning) and EBkSP (Entropy Based k Shortest Path) using a fog-cloud architecture, to reroute vehicles in a dynamic urban environment and therefore to improve travel efficiency in terms of travel speed. First, GAQ analyzes the traffic conditions on each road and for each fog area, and then assigns a road index based on the information attention from both local and…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Transportation Planning and Optimization · Traffic control and management
MethodsEmirates Airlines Office in Dubai · SPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
