Optimal Drive-by Sensing in Urban Road Networks with Large-scale Ridesourcing Vehicles
Shuocheng Guo, Xinwu Qian

TL;DR
This paper proposes an optimized drive-by sensing strategy using large-scale ridesourcing vehicles to improve urban road network monitoring, achieving significant coverage and reliability gains at low cost.
Contribution
It introduces a novel trip-based rerouting model and a scalable heuristic to enhance sensing coverage and reliability using real-world RV data.
Findings
Sensing coverage improved by 15.0% to 17.3%.
Sensing reliability increased by at least 24.6%.
Cost-effective strategy at only $0.10 per RV driver.
Abstract
The sensing and monitoring of the urban road network contribute to the efficient operation of the urban transportation system and the functionality of urban systems. However, traditional sensing methods, such as inductive loop sensors, roadside cameras, and crowdsourcing data from massive urban travelers (e.g., Google Maps), are often hindered by high costs, limited coverage, and low reliability. This study explores the potential of drive-by sensing, an innovative approach that employs large-scale ridesourcing vehicles (RVs) for urban road network monitoring. We first evaluate RV sensing performance by coverage and reliability through historical road segment visits. Next, we propose an optimal trip-based RV rerouting model to maximize the sensing coverage and reliability while preserving the same level of service for the RVs' mobility service. Furthermore, a scalable column…
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Taxonomy
TopicsMobile Crowdsensing and Crowdsourcing · Human Mobility and Location-Based Analysis · Transportation and Mobility Innovations
