Urban Bike Lane Planning with Bike Trajectories: Models, Algorithms, and a Real-World Case Study
Sheng Liu, Zuo-Jun Max Shen, Xiang Ji

TL;DR
This paper introduces a data-driven optimization framework for urban bike lane planning using bike trajectory data, modeling cyclist behavior and route choices to improve infrastructure design in smart cities.
Contribution
It develops a novel bilevel optimization model incorporating route choice behavior and provides efficient algorithms for large-scale urban bike lane planning.
Findings
The model effectively captures cyclists' route preferences.
Algorithms demonstrate efficiency on real-world data.
The framework informs urban planning decisions with data-driven insights.
Abstract
We study an urban bike lane planning problem based on the fine-grained bike trajectory data, which is made available by smart city infrastructure such as bike-sharing systems. The key decision is where to build bike lanes in the existing road network. As bike-sharing systems become widespread in the metropolitan areas over the world, bike lanes are being planned and constructed by many municipal governments to promote cycling and protect cyclists. Traditional bike lane planning approaches often rely on surveys and heuristics. We develop a general and novel optimization framework to guide the bike lane planning from bike trajectories. We formalize the bike lane planning problem in view of the cyclists' utility functions and derive an integer optimization model to maximize the utility. To capture cyclists' route choices, we develop a bilevel program based on the Multinomial Logit model.…
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Taxonomy
TopicsUrban Transport and Accessibility · Transportation Planning and Optimization · Transportation and Mobility Innovations
