Estimating monthly NO, O, and SO concentrations via an ensemble three-stage procedure with downscaled satellite remote sensing data and ground measurements.
Journal
Journal of hazardous materials
Journal Volume
480
Start Page
136392
ISSN
1873-3336
Date Issued
2024-12-05
Author(s)
Abstract
The gaseous air pollutants nitrogen dioxide (NO), ozone (O), and sulfur dioxide (SO), in addition to particulate matter (PM), are known to be associated with many adverse health effects. However, exposure estimates may not be available in rural or mountainous areas without monitoring stations. In this study, we retrieved satellite remote sensing data for NO, O, and SO from the Ozone Monitoring Instrument (OMI) L3 products. Together with ground measurements (air monitoring stations and meteorological and land use data), we estimated the monthly NO, O, and SO concentrations with a spatial resolution of 3×3 km across Taiwan from 2005 to 2019. A three-stage estimation procedure was utilized: in Stage 1, an ensemble generalized additive model (GAM) and machine learning method were used to determine the spatiotemporal variations; in Stage 2, the remote sensing data were downscaled; and in Stage 3, the downscaled concentrations were reused in the Stage 1 procedure for fine-tuning estimations. We obtained overall leave-one-out cross-validation (LOOCV) R values ranging from 0.927-0.950, 0.704-0.721, and 0.601-0.716, and root-mean-square-errors (RMSEs) ranging from 1.59-2.28, 3.81-4.18, and 0.67-1.32 ppb for NO, O, and SO, respectively, via the random forest procedure. The annual NO and SO concentrations greatly improved from 2005-2019, especially in the western residential area of Taiwan. However, despite these improvements in air quality, the annual O concentrations tended to increase from 2015-2019. This might be due to the complex mixtures of precursors (e.g., NO), atmospheric circulation, barriers of the Central Mountain Ridge, and increasing ground temperatures over the past decade. The proposed multistage estimation procedure performed well over the whole island with complex terrain and topography. The study outcomes may provide epidemiological information for long-term ambient exposure estimates and guidance for future administrative policies.
Subjects
Cross-validation
Downscaling
Generalized additive model
Machine learning
OMI L3
Publisher
Elsevier
Type
journal article