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Bibliographic Details
Main Authors: Noulas, Anastasios, Acikmese, Yasin, LI, Charles QC, Patel, Milan Y., Babul, Shazia Ayn, Cohen, Ronald C., Lambiotte, Renaud, Gonzalez, Marta C.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.11720
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author Noulas, Anastasios
Acikmese, Yasin
LI, Charles QC
Patel, Milan Y.
Babul, Shazia Ayn
Cohen, Ronald C.
Lambiotte, Renaud
Gonzalez, Marta C.
author_facet Noulas, Anastasios
Acikmese, Yasin
LI, Charles QC
Patel, Milan Y.
Babul, Shazia Ayn
Cohen, Ronald C.
Lambiotte, Renaud
Gonzalez, Marta C.
contents Monitoring urban air quality with high spatiotemporal resolution continues to pose significant challenges. We investigate the use of taxi fleets as mobile sensing platforms, analyzing over 100 million PM2.5 readings from more than 3,000 vehicles across six major U.S. cities during one year. Our findings show that taxis provide fine-grained, street-level air quality insights while ensuring city-wide coverage. We further explore urban air quality modeling using traffic congestion, built environment, and human mobility data to predict pollution variability. Our results highlight geography-specific seasonal patterns and demonstrate that models based solely on traffic and wind speeds effectively capture a city's pollution dynamics. This study establishes taxi fleets as a scalable, near-real-time air quality monitoring tool, offering new opportunities for environmental research and data-driven policymaking.
format Preprint
id arxiv_https___arxiv_org_abs_2506_11720
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Modeling Urban Air Quality Using Taxis as Sensors
Noulas, Anastasios
Acikmese, Yasin
LI, Charles QC
Patel, Milan Y.
Babul, Shazia Ayn
Cohen, Ronald C.
Lambiotte, Renaud
Gonzalez, Marta C.
Physics and Society
Monitoring urban air quality with high spatiotemporal resolution continues to pose significant challenges. We investigate the use of taxi fleets as mobile sensing platforms, analyzing over 100 million PM2.5 readings from more than 3,000 vehicles across six major U.S. cities during one year. Our findings show that taxis provide fine-grained, street-level air quality insights while ensuring city-wide coverage. We further explore urban air quality modeling using traffic congestion, built environment, and human mobility data to predict pollution variability. Our results highlight geography-specific seasonal patterns and demonstrate that models based solely on traffic and wind speeds effectively capture a city's pollution dynamics. This study establishes taxi fleets as a scalable, near-real-time air quality monitoring tool, offering new opportunities for environmental research and data-driven policymaking.
title Modeling Urban Air Quality Using Taxis as Sensors
topic Physics and Society
url https://arxiv.org/abs/2506.11720