Publications

Zhang, K; Lin, JF; Li, YF; Sun, Y; Tong, WT; Li, FY; Chien, LC; Yang, YP; Su, WC; Tian, HZ; Fu, P; Qiao, FX; Romeiko, XX; Lin, S; Luo, S; Craft, E (2024). Unmasking the sky: high-resolution PM2.5 prediction in Texas using machine learning techniques. JOURNAL OF EXPOSURE SCIENCE AND ENVIRONMENTAL EPIDEMIOLOGY.

Abstract
Background Although PM2.5 (fine particulate matter with an aerodynamic diameter less than 2.5 mu m) is an air pollutant of great concern in Texas, limited regulatory monitors pose a significant challenge for decision-making and environmental studies. Objective This study aimed to predict PM2.5 concentrations at a fine spatial scale on a daily basis by using novel machine learning approaches and incorporating satellite-derived Aerosol Optical Depth (AOD) and a variety of weather and land use variables. MethodsWe compiled a comprehensive dataset in Texas from 2013 to 2017, including ground-level PM2.5 concentrations from regulatory monitors; AOD values at 1-km resolution based on images retrieved from the MODIS satellite; and weather, land-use, population density, among others. We built predictive models for each year separately to estimate PM2.5 concentrations using two machine learning approaches called gradient boosted trees and random forest. We evaluated the model prediction performance using in-sample and out-of-sample validations. Results Our predictive models demonstrate excellent in-sample model performance, as indicated by high R-2 values generated from the gradient boosting models (0.94-0.97) and random forest models (0.81-0.90). However, the out-of-sample R-2 values fall within a range of 0.52-0.75 for gradient boosting models and 0.44-0.69 for random forest models. Model performance varies slightly across years. A generally decreasing trend in predicted PM2.5 concentrations over time is observed in Eastern Texas.

DOI:
10.1038/s41370-024-00659-w

ISSN:
1559-064X