TY - JOUR
T1 - Rapid assessments of light-duty gasoline vehicle emissions using on-road remote sensing and machine learning
AU - Xia, Yan
AU - Jiang, Linhui
AU - Wang, Lu
AU - Chen, Xue
AU - Ye, Jianjie
AU - Hou, Tangyan
AU - Wang, Liqiang
AU - Zhang, Yibo
AU - Li, Mengying
AU - Li, Zhen
AU - Song, Zhe
AU - Jiang, Yaping
AU - Liu, Weiping
AU - Li, Pengfei
AU - Rosenfeld, Daniel
AU - Seinfeld, John H.
AU - Yu, Shaocai
N1 - Publisher Copyright:
© 2022
PY - 2022/4/1
Y1 - 2022/4/1
N2 - In-time and accurate assessments of on-road vehicle emissions play a central role in urban air quality and health policymaking. However, official insight is hampered by the Inspection/Maintenance (I/M) procedure conducted in the laboratory annually. It not only has a large gap to real-world situations (e.g., meteorological conditions) but also is incapable of regular supervision. Here we build a unique dataset including 103,831 light-duty gasoline vehicles, in which on-road remote sensing (ORRS) measurements are linked to the I/M records based on the vehicle identification numbers and license plates. On this basis, we develop an ensemble model framework that integrates three machining learning algorithms, including neural network (NN), extreme gradient boosting (XGBoost), and random forest (RF). We demonstrate that this ensemble model could rapidly assess the vehicle-specific emissions (i.e., CO, HC, and NO). In particular, the model performs quite well for the passing vehicles under normal conditions (i.e., lower VSP (<18 kw/t), temperature (6–32 °C), relative humidity (<80%), and wind speed (<5 m/s)). Together with the current emission standard, we identify a large number of the ‘dirty’ (2.33%) or ‘clean’ (74.92%) vehicles in the real world. Our results show that the ORRS measurements, assisted by the machine-learning-based ensemble model developed here, can realize day-to-day supervision of on-road vehicle-specific emissions. This approach framework provides a valuable opportunity to reform the I/M procedures globally and mitigate urban air pollution deeply.
AB - In-time and accurate assessments of on-road vehicle emissions play a central role in urban air quality and health policymaking. However, official insight is hampered by the Inspection/Maintenance (I/M) procedure conducted in the laboratory annually. It not only has a large gap to real-world situations (e.g., meteorological conditions) but also is incapable of regular supervision. Here we build a unique dataset including 103,831 light-duty gasoline vehicles, in which on-road remote sensing (ORRS) measurements are linked to the I/M records based on the vehicle identification numbers and license plates. On this basis, we develop an ensemble model framework that integrates three machining learning algorithms, including neural network (NN), extreme gradient boosting (XGBoost), and random forest (RF). We demonstrate that this ensemble model could rapidly assess the vehicle-specific emissions (i.e., CO, HC, and NO). In particular, the model performs quite well for the passing vehicles under normal conditions (i.e., lower VSP (<18 kw/t), temperature (6–32 °C), relative humidity (<80%), and wind speed (<5 m/s)). Together with the current emission standard, we identify a large number of the ‘dirty’ (2.33%) or ‘clean’ (74.92%) vehicles in the real world. Our results show that the ORRS measurements, assisted by the machine-learning-based ensemble model developed here, can realize day-to-day supervision of on-road vehicle-specific emissions. This approach framework provides a valuable opportunity to reform the I/M procedures globally and mitigate urban air pollution deeply.
KW - Machine learning
KW - On-road remote sensing
KW - Rapid assessments
KW - Vehicle emissions
UR - http://www.scopus.com/inward/record.url?scp=85122524880&partnerID=8YFLogxK
U2 - 10.1016/j.scitotenv.2021.152771
DO - 10.1016/j.scitotenv.2021.152771
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C2 - 34995595
AN - SCOPUS:85122524880
SN - 0048-9697
VL - 815
JO - Science of the Total Environment
JF - Science of the Total Environment
M1 - 152771
ER -