4.8 Article

Community-Based Measurements Reveal Unseen Differences during Air Pollution Episodes

Journal

ENVIRONMENTAL SCIENCE & TECHNOLOGY
Volume 55, Issue 1, Pages 120-128

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acs.est.0c02341

Keywords

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Funding

  1. NSF [1646408, 1642513]
  2. Lawrence T. and Janet T. Dee Foundation
  3. UCAIR
  4. Direct For Computer & Info Scie & Enginr
  5. Division Of Computer and Network Systems [1646408] Funding Source: National Science Foundation
  6. Directorate For Engineering
  7. Div Of Chem, Bioeng, Env, & Transp Sys [1642513] Funding Source: National Science Foundation

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Short-term exposure to PM2.5 pollution is harmful to health, and low-cost sensor networks with Gaussian process models can accurately assess pollution gradients, revealing geographic differences.
Short-term exposure to fine particulate matter (PM2.5) pollution is linked to numerous adverse health effects. Pollution episodes, such as wildfires, can lead to substantial increases in PM2.5 levels. However, sparse regulatory measurements provide an incomplete understanding of pollution gradients. Here, we demonstrate an infrastructure that integrates community-based measurements from a network of low-cost PM2.5 sensors with rigorous calibration and a Gaussian process model to understand neighborhood-scale PM2.5 concentrations during three pollution episodes (July 4, 2018, fireworks; July 5 and 6, 2018, wildfire; Jan 3-7, 2019, persistent cold air pool, PCAP). The firework/wildfire events included 118 sensors in 84 locations, while the PCAP event included 218 sensors in 138 locations. The model results accurately predict reference measurements during the fireworks (n: 16, hourly root-mean-square error, RMSE, 12.3-21.5 mu g/m(3), n(normalized)RMSE: 14.9-24%), the wildfire (n: 46, RMSE: 2.6-4.0 mu g/m(3); nRMSE: 13.1-22.9%), and the PCAP (n: 96, RMSE: 4.9-5.7 mu g/m(3); nRMSE: 20.2-21.3%). They also revealed dramatic geospatial differences in PM2.5 concentrations that are not apparent when only considering government measurements or viewing the US Environmental Protection Agency's AirNow visualizations. Complementing the PM2.5 estimates and visualizations are highly resolved uncertainty maps. Together, these results illustrate the potential for low-cost sensor networks that combined with a data-fusion algorithm and appropriate calibration and training can dynamically and with improved accuracy estimate PM2.5 concentrations during pollution episodes. These highly resolved uncertainty estimates can provide a much-needed strategy to communicate uncertainty to end users.

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