Understanding Traffic Congestion via Network Analysis, Agent Modeling, and the Trajectory of Urban Expansion: A Coastal City Case
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Abstract
The study of patterns of urban mobility is of utter importance for city growth projection
and development planning. In this paper, we analyze the topological aspects of the street network
of the coastal city of Cartagena de Indias employing graph theory and spatial syntax tools. We find
that the resulting network can be understood on the basis of 400 years of the city’s history and
its peripheral location that strongly influenced and shaped the growth of the city, and that the
statistical properties of the network resemble those of self-organized cities. Moreover, we study the
mobility through the network using a simple agent-based model that allows us to study the level of
street congestion depending on the agents’ knowledge of the traffic while they travel through the
network. We found that a purely shortest-path travel scheme is not an optimal strategy and that
assigning small weights to traffic avoidance schemes increases the overall performance of the agents
in terms of arrival success, occupancy of the streets, and traffic accumulation. Finally, we argue that
localized congestion can be only partially ascribed to topological properties of the network and that
it is important to consider the decision-making capability of the agents while moving through the
network to explain the emergence of traffic congestion in the system.
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Bibliographic citation
Amézquita-López, J.; Valdés-Atencio, J.; Angulo-García, D. Understanding Traffic Congestion via Network Analysis, Agent Modeling, and the Trajectory of Urban Expansion: A Coastal City Case. Infrastructures 2021, 6, 85. https:// doi.org/10.3390/infrastructures6060085







