4.8 Article

Estimating Wildfire Smoke Concentrations during the October 2017 California Fires through BME Space/Time Data Fusion of Observed, Modeled, and Satellite-Derived PM2.5

期刊

ENVIRONMENTAL SCIENCE & TECHNOLOGY
卷 54, 期 21, 页码 13439-13447

出版社

AMER CHEMICAL SOC
DOI: 10.1021/acs.est.0c03761

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资金

  1. NASA Health and Air Quality Applied Sciences Team [NNX16AQ30G, NNH16AD18I]
  2. National Institute of Occupational Safety and Health [T42-OH008673]
  3. NASA [896543, NNX16AQ30G] Funding Source: Federal RePORTER

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Exposure to wildfire smoke causes adverse health outcomes, suggesting the importance of accurately estimating smoke concentrations. Geostatistical methods can combine observed, modeled, and satellite-derived concentrations to produce accurate estimates. Here, we estimate daily average ground-level PM2.5 concentrations at a 1 km resolution during the October 2017 California wildfires, using the Constant Air Quality Model Performance (CAMP) and Bayesian Maximum Entropy (BME) methods to bias-correct and fuse three concentration datasets: permanent and temporary monitoring stations, a chemical transport model (CTM), and satellite-derived estimates. Four BME space/time kriging and data fusion methods were evaluated. All BME methods produce more accurate estimates than the standalone CTM and satellite products. Adding temporary station data increases the R-2 by 36%. The data fusion of observations with the CAMP-corrected CTM and satellite-derived concentrations provides the best estimate (R-2 = 0.713) in fire-impacted regions, emphasizing the importance of combining multiple datasets. We estimate that approximately 65,000 people were exposed to very unhealthy air (daily average PM2.5 >= 150.5 mu g/m(3)).

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