Research Center for Air Pollution and Health, Key Laboratory of Environmental Remediation and Ecological Health, Ministry of Education, College of Environment and Resource Sciences, Zhejiang University, Hangzhou, Zhejiang 310058, PR China.
Bytedance Inc., Hangzhou, Zhejiang 310058, PR China.
Sci Total Environ. 2022 Apr 1;815:152771. doi: 10.1016/j.scitotenv.2021.152771. Epub 2022 Jan 4.
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.
及时准确地评估道路车辆排放对城市空气质量和健康政策制定起着核心作用。然而,官方的见解受到每年在实验室进行的检验/维护(I/M)程序的阻碍。它不仅与实际情况(例如气象条件)存在很大差距,而且还无法进行定期监督。在这里,我们构建了一个独特的数据集,其中包括 103831 辆轻型汽油车,其中道路遥感(ORRS)测量值基于车辆识别号码和车牌与 I/M 记录相关联。在此基础上,我们开发了一个集成了三种机器学习算法的集成模型框架,包括神经网络(NN)、极端梯度提升(XGBoost)和随机森林(RF)。我们证明,该集成模型可以快速评估车辆特定的排放(即 CO、HC 和 NO)。特别是,该模型在正常条件下(即较低的 VSP(<18kW/t)、温度(6-32°C)、相对湿度(<80%)和风速(<5m/s))对通过的车辆表现相当出色。结合当前的排放标准,我们在现实世界中识别出了大量的“脏”(2.33%)或“干净”(74.92%)车辆。我们的结果表明,ORRS 测量值,结合我们在这里开发的基于机器学习的集成模型,可以实现对道路车辆特定排放的日常监督。这种方法框架为全球范围内改革 I/M 程序和深入减轻城市空气污染提供了宝贵的机会。