Abstract. On-road vehicle emissions are a major contributor to
significant atmospheric pollution in populous metropolitan areas. We
developed an hourly link-level emissions inventory of vehicular
pollutants using two land-use machine learning methods based on road traffic monitoring datasets in the Beijing–Tianjin–Hebei (BTH) region. The
results indicate that a land-use random forest (LURF) model is more capable
of predicting traffic profiles than other machine learning models on most
occasions in this study. The inventories under three different traffic
scenarios depict a significant temporal and spatial variability in vehicle
emissions. NOx, fine particulate matter (PM2.5), and black carbon
(BC) emissions from heavy-duty trucks (HDTs) generally have a higher emission
intensity on the highways connecting to regional ports. The model found a
general reduction in light-duty passenger vehicles when traffic restrictions
were implemented but a much more spatially heterogeneous impact on HDTs,
with some road links experiencing up to 40 % increases in the HDT traffic
volume. This study demonstrates the power of machine learning approaches to
generate data-driven and high-resolution emission inventories, thereby
providing a platform to realize the near-real-time process of establishing
high-resolution vehicle emission inventories for policy makers to engage in
sophisticated traffic management.
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