Dynamic Routing for Traffic Flow through Multi-agent Systems
Jizhe Zhou, Qiwei Chen, Qin Li

TL;DR
This paper introduces a novel multi-agent system-based dynamic routing method that models driver behavior and disperses traffic load to prevent congestion while respecting individual driver preferences.
Contribution
It develops a traffic routing approach using multi-agent systems and smoothed particles hydrodynamics to balance traffic load and improve flow stability.
Findings
Effective traffic load balancing demonstrated in simulations
Robustness to driver disobedience shown in tests
Mathematical proof of control law stability provided
Abstract
Routing strategies for traffics and vehicles have been historically studied. However, in the absence of considering drivers' preferences, current route planning algorithms are developed under ideal situations where all drivers are expected to behave rationally and properly. Especially, for jumbled urban road networks, drivers' actual routing strategies deteriorated to a series of empirical and selfish decisions that result in congestion. Self-evidently, if minimum mobility can be kept, traffic congestion is avoidable by traffic load dispersing. In this paper, we establish a novel dynamic routing method catering drivers' preferences and retaining maximum traffic mobility simultaneously through multi-agent systems (MAS). Modeling human-drivers' behavior through agents' dynamics, MAS can analyze the global behavior of the entire traffic flow. Therefore, regarding agents as particles in…
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Taxonomy
TopicsTraffic control and management · Evacuation and Crowd Dynamics · Transportation Planning and Optimization
