4.8 Article

National Empirical Models of Air Pollution Using Microscale Measures of the Urban Environment

Journal

ENVIRONMENTAL SCIENCE & TECHNOLOGY
Volume 55, Issue 22, Pages 15519-15530

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acs.est.1c04047

Keywords

Empirical models; street-level features; urban form; exposure assessment; machine learning

Funding

  1. U.S. Environmental Protection Agency (EPA) [R835873]
  2. ENLIGHT project - German Research Foundation (DFG) [437467569]

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This study investigates the use of microscale variables to improve prediction accuracy in air pollution models, and finds that models combining microscale and traditional predictor variables outperform traditional methods. Microscale variables have potential as suitable substitutes for traditional variables in national empirical models.
National-scale empirical models of air pollution (e.g., Land Use Regression) rely on predictor variables (e.g., population density, land cover) at different geographic scales. These models typically lack microscale variables (e.g., street level), which may improve prediction with fine-spatial gradients. We developed microscale variables of the urban environment including Point of Interest (POI) data, Google Street View (GSV) imagery, and satellite-based measures of urban form. We developed United States national models for six criteria pollutants (NO2, PM2.5, O-3, CO, PM10, SO2) using various modeling approaches: Stepwise Regression + kriging (SW-K), Partial Least Squares + kriging (PLS-K), and Machine Learning + kriging (ML-K). We compared predictor variables (e.g., traditional vs microscale) and emerging modeling approaches (ML-K) to well-established approaches (i.e., traditional variables in a PLS-K or SW-K framework). We found that combined predictor variables (traditional + microscale) in the ML-K models outperformed the well-established approaches (10-fold spatial cross-validation (CV) R-2 increased 0.02-0.42 [average: 0.19] among six criteria pollutants). Comparing all model types using microscale variables to models with traditional variables, the performance is similar (average difference of 10-fold spatial CV R-2 = 0.05) suggesting microscale variables are a suitable substitute for traditional variables. ML-K and microscale variables show promise for improving national empirical models.

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