Abstract
Traffic emissions significantly impact near-road air quality and public health. This research applies a Bayesian modeling framework to investigate these impacts using high-resolution traffic and air pollutant data from an urban corridor in Columbia, South Carolina. Despite a data collection period truncated by the COVID-19 lockdown, the Bayesian approach successfully identified significant predictors and quantified model uncertainty. Employing Bayesian Model Selection and Averaging enhanced prediction accuracy and evaluated model uncertainty. Findings indicate that higher temperatures and increased moisture levels elevate particulate matter (PM1.0, PM2.5, PM10) concentrations, while traffic speed significantly affects nitrogen dioxide (NO2) levels. Specifically, higher average traffic speeds (indicative of smoother flow) correspond to lower NO2 concentrations, suggesting that less congested conditions reduce NO2 emissions. This study highlights the robustness of Bayesian methods for generating reliable air quality insights even under data-constrained conditions. The findings underscore the importance of traffic flow management (e.g., reducing congestion) for mitigating near-road NO2 exposure and provide a basis for developing targeted public health strategies.