Hyperlocal environmental data with a mobile platform in urban environments
Author(s)
Wang, An; Mora, Simone; Machida, Yuki; deSouza, Priyanka; Paul, Sanjana; Oyinlola, Oluwatobi; Duarte, Fábio; Ratti, Carlo; ... Show more Show less
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Environmental data with a high spatio-temporal resolution is vital in informing actions toward tackling urban sustainability challenges. Yet, access to hyperlocal environmental data sources is limited due to the lack of monitoring infrastructure, consistent data quality, and data availability to the public. This paper reports environmental data (<jats:italic>PM</jats:italic>, <jats:italic>NO</jats:italic><jats:sub><jats:italic>2</jats:italic></jats:sub>, temperature, and relative humidity) collected from 2020 to 2022 and calibrated in four deployments in three global cities. Each data collection campaign targeted a specific urban environmental problem related to air quality, such as tree diversity, community exposure disparities, and excess fossil fuel usage. Firstly, we introduce the mobile platform design and its deployment in Boston (US), NYC (US), and Beirut (Lebanon). Secondly, we present the data cleaning and validation process, for the air quality data. Lastly, we explain the data format and how hyperlocal environmental datasets can be used standalone and with other data to assist evidence-based decision-making. Our mobile environmental sensing datasets include cities of varying scales, aiming to address data scarcity in developing regions and support evidence-based environmental policymaking.
Date issued
2023-08-05Department
Senseable City LaboratoryPublisher
Springer Science and Business Media LLC
Citation
Wang, A., Mora, S., Machida, Y. et al. Hyperlocal environmental data with a mobile platform in urban environments. Sci Data 10, 524 (2023).
Version: Final published version
ISSN
2052-4463
Keywords
Library and Information Sciences, Statistics, Probability and Uncertainty, Computer Science Applications, Education, Information Systems, Statistics and Probability
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