华南理工大学学报(自然科学版)
• 数智交通专题 • 上一篇 下一篇
金盛 阮可馨 沈辛夷
浙江大学 建筑工程学院,浙江 杭州 310058
发布日期:
JIN Sheng RUAN Kexin SHEN Xinyi
College of Civil Engineering and Architecture, Zhejiang University, Hangzhou 310058, Zhejiang, China
Published:
摘要:
本研究面向杭州市主城区网格—小时尺度PM2.5浓度建模与交通影响识别,融合空气质量、气象、交通与空间信息构建多源异构数据集,建立可解释的非线性预测与情景评估框架。通过对比随机森林、XGBoost及线性回归模型,并结合消融实验与SHAP分析,量化车流强度及车型结构对PM2.5时空预测的贡献。结果表明,总车流强度与大型燃油车相关特征对PM2.5变化具有显著影响,且该影响在低风速下更为敏感。情景模拟进一步显示,交通限流与车型结构优化在交通密集区域及污染高发时段具有更高的减排效益。研究为城市交通精细化管理与电动化政策效果评估提供了量化依据与模型基础。
关键词: 交通排放, PM2.5浓度, 非线性影响, 时空预测, 交通管控
Abstract:
This study focuses on grid–hourly PM2.5 modeling and identifying traffic impacts in the urban core of Hangzhou. A multi-source heterogeneous dataset is constructed by integrating air quality, meteorological, traffic, and spatial information, and an interpretable nonlinear prediction and scenario-evaluation framework is developed. By comparing Random Forest, XGBoost, and linear regression models, and combining ablation experiments with SHAP analysis, we quantify the contributions of traffic intensity and fleet composition to spatiotemporal PM2.5 prediction. The results show that overall traffic intensity and heavy-duty fossil-fuel vehicle–related features significantly influence PM2.5 variations, and these effects are more sensitive under low wind-speed conditions. Scenario simulations further indicate that traffic flow restrictions and fleet-structure optimization yield greater mitigation benefits in traffic-dense areas and during high-pollution periods. This study provides quantitative evidence and a modeling basis for refined urban traffic management and for evaluating the effectiveness of electrification policies.
Key words: traffic Emissions, PM2.5 , concentration, nonlinear impact, spatiotemporal prediction, traffic management ,
金盛, 阮可馨, 沈辛夷. 交通因素对城市PM2.5浓度的非线性影响特性分析[J]. 华南理工大学学报(自然科学版), doi: 10.12141/j.issn.1000-565X.250469.
JIN Sheng, RUAN Kexin, SHEN Xinyi. Analysis of the Nonlinear Impacts of Traffic Factors on Urban PM2.5 Concentrations[J]. Journal of South China University of Technology(Natural Science Edition), doi: 10.12141/j.issn.1000-565X.250469.
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链接本文: https://zrb.bjb.scut.edu.cn/CN/10.12141/j.issn.1000-565X.250469