Abstract
In many air pollution health studies, the time-activity pattern of individuals is often ignored largely due to lack of data. However, a better understanding of this location-based information is expected to decrease uncertainties in exposure estimation. Here, we showcase the potential of iPhone’s Significant Location (iSL) data in capturing the user’s historical time-activity patterns in order to estimate exposure to ambient air pollutants. In this study, one subject carried an iPhone in tandem with a reference GPS tracking device for one month. The GPS device recorded locations in 10 second intervals while the iSL recorded the time spent in locations the subject visited frequently. Using GPS data as a reference, we then evaluated the accuracy of iSL data in capturing the subject’s time-activity patterns and time-weighted air pollution concentration within the study time period. We found the iSL data accurately captured the time the subject spent in 16 microenvironments (i.e. locations the subject visited more than once), which was 93% of the time during the study period. The average error of time-weighted aerosol optical depth value, a surrogate of particle pollution, is only 0.012%. To explore the availability of iSL data among iPhone users, an online survey was conducted. Among the 349 surveyed participants, 72% of them have iSL data available. Considering the popularity of iPhones, iSL data may be available for a significant portion of the general population. Our results suggest iSL data have great potential for characterizing historical time-activity patterns to improve air pollution exposure estimation.
Change history
11 July 2022
An Erratum to this paper has been published: https://doi.org/10.1007/s11783-022-1556-1
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Highlights
• We evaluated the accuracy of iPhone data in capturing time-activity patterns.
• iPhone data captured the most important microenvironments and time spent in them.
• iPhone data also accurately captured daily exposure to ambient PM pollution.
• A considerable fraction of the population in the USA may have iPhone data available.
• iPhone data has great potential in air pollution health studies.
Special Issue—Frontier Progresses from Chinese-American Professors of Environmental Engineering and Science (Responsible Editors: Xing Xie, Jinkai Xue & Hongliang Zhang)
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Eastman, E., Stevens, K.A., Ivey, C. et al. On the potential of iPhone significant location data to characterize individual mobility for air pollution health studies. Front. Environ. Sci. Eng. 16, 63 (2022). https://doi.org/10.1007/s11783-022-1542-7
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DOI: https://doi.org/10.1007/s11783-022-1542-7