Impact of Mobile Monitoring Network Design on Air Pollution Exposure Assessment Models.
Magali N BlancoJianzhao BiElena AustinTimothy V LarsonJulian D MarshallLianne SheppardPublished in: Environmental science & technology (2022)
Short-term mobile monitoring campaigns are increasingly used to assess long-term air pollution exposure in epidemiology. Little is known about how monitoring network design features, including the number of stops and sampling temporality, impacts exposure assessment models. We address this gap by leveraging an extensive mobile monitoring campaign conducted in the greater Seattle area over the course of a year during all days of the week and most hours. The campaign measured total particle number concentration (PNC; sheds light on ultrafine particulate (UFP) number concentration), black carbon (BC), nitrogen dioxide (NO 2 ), fine particulate matter (PM 2.5 ), and carbon dioxide (CO 2 ). In Monte Carlo sampling of 7327 total stops (278 sites × 26 visits each), we restricted the number of sites and visits used to estimate annual averages. Predictions from the all-data campaign performed well, with cross-validated R 2 s of 0.51-0.77. We found similar model performances (85% of the all-data campaign R 2 ) with ∼1000 to 3000 randomly selected stops for NO 2 , PNC, and BC, and ∼4000 to 5000 stops for PM 2.5 and CO 2 . Campaigns with additional temporal restrictions (e.g., business hours, rush hours, weekdays, or fewer seasons) had reduced model performances and different spatial surfaces. Mobile monitoring campaigns wanting to assess long-term exposure should carefully consider their monitoring designs.
Keyphrases
- air pollution
- particulate matter
- lung function
- carbon dioxide
- randomized controlled trial
- electronic health record
- machine learning
- monte carlo
- clinical trial
- heavy metals
- big data
- escherichia coli
- chronic obstructive pulmonary disease
- pseudomonas aeruginosa
- deep learning
- polycyclic aromatic hydrocarbons
- water soluble
- clinical evaluation
- network analysis