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Daily Local-Level Estimates of Ambient Wildfire Smoke PM2.5for the Contiguous US

  • Marissa L. Childs
  • , Jessica Li
  • , Jeffrey Wen
  • , Sam Heft-Neal
  • , Anne Driscoll
  • , Sherrie Wang
  • , Carlos F. Gould
  • , Minghao Qiu
  • , Jennifer Burney
  • , Marshall Burke
  • Stanford University
  • University of California at Berkeley
  • University of California at San Diego
  • National Bureau of Economic Research

Research output: Contribution to journalArticlepeer-review

181 Scopus citations

Abstract

Smoke from wildfires is a growing health risk across the US. Understanding the spatial and temporal patterns of such exposure and its population health impacts requires separating smoke-driven pollutants from non-smoke pollutants and a long time series to quantify patterns and measure health impacts. We develop a parsimonious and accurate machine learning model of daily wildfire-driven PM2.5concentrations using a combination of ground, satellite, and reanalysis data sources that are easy to update. We apply our model across the contiguous US from 2006 to 2020, generating daily estimates of smoke PM2.5over a 10 km-by-10 km grid and use these data to characterize levels and trends in smoke PM2.5. Smoke contributions to daily PM2.5concentrations have increased by up to 5 μg/m3in the Western US over the last decade, reversing decades of policy-driven improvements in overall air quality, with concentrations growing fastest for higher income populations and predominantly Hispanic populations. The number of people in locations with at least 1 day of smoke PM2.5above 100 μg/m3per year has increased 27-fold over the last decade, including nearly 25 million people in 2020 alone. Our data set can bolster efforts to comprehensively understand the drivers and societal impacts of trends and extremes in wildfire smoke.

Original languageEnglish
Pages (from-to)13607-13621
Number of pages15
JournalEnvironmental Science and Technology
Volume56
Issue number19
DOIs
StatePublished - Oct 4 2022

Keywords

  • aerosols
  • machine learning
  • particulate matter
  • smoke
  • wildfires

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