Estimated roadway segment traffic data by vehicle class for the United States: A machine learning approach
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The Highway Performance Monitoring System, managed by the Federal Highway Administration, provides essential data on average annual daily traffic across U.S. roadways, but it has limited representation of medium- and heavy-duty vehicles on non-interstate roads. This gap limits research and policy analysis on the impacts of truck traffic, especially concerning air quality and public health. To address this, we use random forest regression to estimate medium- and heavy-duty vehicle traffic volumes in areas with sparse data. This results in a more comprehensive dataset, which enables the estimation of traffic density at the census block level as a proxy for traffic-related air pollution exposure. Our high-resolution spatial data products, rigorously validated, provide a more accurate representation of truck traffic and its environmental and health impacts. These datasets are valuable for transportation planning, public health research, and policy decisions aimed at mitigating the effects o..., , , # Estimated roadway segment traffic data by vehicle class for the United States: A machine learning approach
**Dataset DOI**: 10.5061/dryad.gmsbcc2zz
## Description of the Data and Available Formats
### 1. HPMS Network with Road Link Average Annual Daily Traffic (AADT):
**Description**: This dataset includes estimates for light-, medium-, and heavy-duty vehicle traffic across U.S. roadways. The data is derived from the 2018 Highway Performance Monitoring System (HPMS), managed by the Federal Highway Administration (FHWA). The HPMS provides essential information on average annual daily traffic (AADT), but it has limited representation of medium- and heavy-duty vehicles on non-interstate roads. To address this limitation, we applied random forest regression to estimate AADT for medium-duty vehicle (MDV) and heavy-duty vehicle (HDV) traffic in regions with sparse data. Light-duty vehicle (LDV) AADT was then estimated by subtracting the sum of MDV AADT and HDV AADT from the total AADT f...,
创建时间:
2025-04-22



