Study on CO2 Emission Assessment of Heavy-Duty and Ultra-Heavy-Duty Vehicles Using Machine Learning

被引:0
作者
Seokho Moon
Jinhee Lee
Hyung Jun Kim
Jung Hwan Kim
Suhan Park
机构
[1] Graduate School of Konkuk University,Department of Mechanical Engineering
[2] Korea Automotive Technology Institute,Advanced Powertrain R&D Center
[3] National Institute of Environmental Research,Transportation Pollution Research Center
[4] Konkuk University,School of Mechanical and Aerospace Engineering
来源
International Journal of Automotive Technology | 2024年 / 25卷
关键词
Heavy-duty vehicle; Real driving emission; Portable emission measurement system; On-board diagnostics; On-board monitoring; CO; emissions; Artificial intelligence prediction; Machine learning;
D O I
暂无
中图分类号
学科分类号
摘要
EU is actively moving towards the implementation of Euro-7 regulations, thus placing a strong emphasis on real-road emissions. Euro-7 introduced OBM (on-board monitoring), which is an enhancement of regulations that closely replicates real-world road conditions. Furthermore, there is a need to devise an effective application strategy for utilizing the driving monitoring data prior to the enforcement of OBM. This study addresses these challenges by conducting RDE (real-driving emission) tests on both 3.5-ton and 25-ton commercial vehicles to gather CO2 emissions and engine control unit data accessible through an OBD (on-board diagnostics) port. To process the RDE data, an appropriate machine learning model, XGBoost, was selected and trained. The outcome of our CO2 emission prediction for the two vehicles demonstrated that employing monitoring data yielded reliable estimates of actual road CO2 emissions. Finally, a comparative analysis was conducted between the proposed monitoring approach and the fuel-based CO2 monitoring method using the emission factor from EMEP/EEA air pollutant emission inventory guidebook 2019 utilizing fuel consumption data achieved through the OBFCM (on-board fuel and energy consumption monitoring) rule. Our method, which is based on predictive CO2 emissions monitoring, exhibited significantly greater accuracy. This outcome underscores the necessity to adopt the proposed approach.
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页码:651 / 661
页数:10
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