Developing particle emission inventories using remote sensing (PEIRS).

Chia-Hsi Tang, Brent A Coull, Joel Schwartz, Alexei I Lyapustin, Qian Di, Petros Koutrakis
Author Information
  1. Chia-Hsi Tang: a Department of Environmental Health , Harvard T.H. Chan School of Public Health , Boston , MA , USA.
  2. Brent A Coull: b Department of Biostatistics , Harvard T.H. Chan School of Public Health , Boston , MA , USA.
  3. Joel Schwartz: a Department of Environmental Health , Harvard T.H. Chan School of Public Health , Boston , MA , USA.
  4. Alexei I Lyapustin: c Goddard Space Flight Center, NASA , Greenbelt , MD , USA.
  5. Qian Di: a Department of Environmental Health , Harvard T.H. Chan School of Public Health , Boston , MA , USA.
  6. Petros Koutrakis: a Department of Environmental Health , Harvard T.H. Chan School of Public Health , Boston , MA , USA.

Abstract

Information regarding the magnitude and distribution of PM emissions is crucial in establishing effective PM regulations and assessing the associated risk to human health and the ecosystem. At present, emission data is obtained from measured or estimated emission factors of various source types. Collecting such information for every known source is costly and time-consuming. For this reason, emission inventories are reported periodically and unknown or smaller sources are often omitted or aggregated at large spatial scale. To address these limitations, we have developed and evaluated a novel method that uses remote sensing data to construct spatially resolved emission inventories for PM. This approach enables us to account for all sources within a fixed area, which renders source classification unnecessary. We applied this method to predict emissions in the northeastern United States during the period 2002-2013 using high-resolution 1 km × 1 km aerosol optical depth (AOD). Emission estimates moderately agreed with the EPA National Emission Inventory (R = 0.66-0.71, CV = 17.7-20%). Predicted emissions are found to correlate with land use parameters, suggesting that our method can capture emissions from land-use-related sources. In addition, we distinguished small-scale intra-urban variation in emissions reflecting distribution of metropolitan sources. In essence, this study demonstrates the great potential of remote sensing data to predict particle source emissions cost-effectively.
IMPLICATIONS: We present a novel method, particle emission inventories using remote sensing (PEIRS), using remote sensing data to construct spatially resolved PM emission inventories. Both primary emissions and secondary formations are captured and predicted at a high spatial resolution of 1 km × 1 km. Using PEIRS, large and comprehensive data sets can be generated cost-effectively and can inform development of air quality regulations.

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Grants

  1. /Goddard Space Flight Center NASA
  2. N-999999/Intramural NASA
  3. RD83479801/EPA

MeSH Term

Aerosols
Air Pollutants
Environmental Monitoring
Humans
Particulate Matter
Remote Sensing Technology
Spacecraft
Vehicle Emissions

Chemicals

Aerosols
Air Pollutants
Particulate Matter
Vehicle Emissions

Word Cloud

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