Development and Application of Link-Level Vehicle Emission Inventory for the Metropolitan Area

Apr 3, 2020Research report (Health Effects Institute)

Improving Estimates of Traffic Air Pollution for Health Studies Using Dispersion Models and Data Combining Methods

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Abstract

Dispersion model evaluations in Detroit indicate that pollutant concentration predictions are most accurate near major roads under specific conditions.

  • Monitoring sites located close to major roads and during downwind conditions showed the best performance for carbon monoxide (CO) and nitrogen oxides (NO).
  • High background levels and a sparse monitoring network limited the ability to accurately discern local traffic-related particulate matter (PM) concentrations.
  • Sensitivity analyses revealed performance improvements when using local meteorological data and updated traffic emission inventories.
  • Nonstationary universal kriging models demonstrated lower prediction errors for exposure estimates compared to stationary models, highlighting the importance of wind speed and direction.
  • Bayesian data fusion models indicated that RLINE outputs had a spatially varying additive bias for NO and PM, with improved estimates for PM concentrations but limited additional information for NO.

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Full Text

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