A computational framework for quantifying route diversification in road networks
- URL: http://arxiv.org/abs/2510.02582v1
- Date: Thu, 02 Oct 2025 21:41:53 GMT
- Title: A computational framework for quantifying route diversification in road networks
- Authors: Giuliano Cornacchia, Luca Pappalardo, Mirco Nanni, Dino Pedreschi, Marta C. González,
- Abstract summary: We examine how road network structure shapes the counterpart to traffic concentration: route diversification.<n>We introduce DiverCity, a measure that quantifies the extent to which traffic can potentially be distributed across multiple, loosely overlapping near-shortest routes.
- Score: 1.9232329432211988
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The structure of road networks impacts various urban dynamics, from traffic congestion to environmental sustainability and access to essential services. Recent studies reveal that most roads are underutilized, faster alternative routes are often overlooked, and traffic is typically concentrated on a few corridors. In this article, we examine how road network structure, and in particular the presence of mobility attractors (e.g., highways and ring roads), shapes the counterpart to traffic concentration: route diversification. To this end, we introduce DiverCity, a measure that quantifies the extent to which traffic can potentially be distributed across multiple, loosely overlapping near-shortest routes. Analyzing 56 diverse global cities, we find that DiverCity is influenced by network characteristics and is associated with traffic efficiency. Within cities, DiverCity increases with distance from the city center before stabilizing in the periphery, but declines in the proximity of mobility attractors. We demonstrate that strategic speed limit adjustments on mobility attractors can increase DiverCity while preserving travel efficiency. We isolate the complex interplay between mobility attractors and DiverCity through simulations in a controlled setting, confirming the patterns observed in real-world cities. DiverCity provides a practical tool for urban planners and policymakers to optimize road network design and balance route diversification, efficiency, and sustainability. We provide an interactive platform (https://divercitymaps.github.io) to visualize the spatial distribution of DiverCity across all considered cities.
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