A study on the impact of meteorological and emission factors on PM2.5 concentrations based on machine learning

被引:0
|
作者
Zhao, Chenxu [1 ,2 ]
Lin, Zejian [2 ]
Yang, Leifeng [2 ]
Jiang, Mengmeng [3 ]
Qiu, Zhubing [3 ]
Wang, Siyu [3 ]
Gu, Yu [4 ]
Ye, Wei [4 ]
Pan, Yusuo [4 ]
Zhang, Yong [2 ]
Wang, Tianxin [2 ,5 ]
Jia, Yong [1 ]
Chen, Zhihang [2 ]
机构
[1] Anhui Univ Technol, Sch Energy & Environm, Maanshan 243002, Peoples R China
[2] Minist Ecol & Environm, South China Inst Environm Sci, Guangdong Prov Engn Lab Air Pollut Control, Guangdong Key Lab Water & Air Pollut Control, Guangzhou 510655, Peoples R China
[3] Anqing Ecol Environm Bur, Anqing 246001, Anhui, Peoples R China
[4] Anqing Ecol Environm Monitoring Ctr, Anqing 246001, Anhui, Peoples R China
[5] Anhui Univ, Sch Resources & Environm Engn, Hefei 230601, Peoples R China
关键词
PMF; Machine learning; SHAP; PDP; YANGTZE-RIVER DELTA; HEAVY POLLUTION EPISODES; SOURCE APPORTIONMENT; SEASONAL-VARIATIONS; NORTH CHINA; CHEMICAL-CHARACTERIZATION; AEROSOL FORMATION; BACKGROUND SITE; CITY; HAZE;
D O I
10.1016/j.jenvman.2025.124347
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
PM2.5 pollution, a major environmental and health concern, is influenced by a complex interplay of emission sources and meteorological conditions. Accurately identifying these factors and their contributions is essential for effective pollution management. This study applies Positive Matrix Factorization (PMF) to identify primary sources of PM2.5 and uses the Light Gradient Boosting Machine (LightGBM) model, SHapley Additive exPlanations (SHAP), and Partial Dependence Plots (PDP) to quantitatively assess the impact of meteorological and emission factors on PM2.5 concentrations. SHAP results reveal that meteorological factors contribute 16.6% (5.3 mu g/m3) to PM2.5, with humidity being the most influential, while emission sources account for 83.4% (26.8 mu g/ m3), with secondary particulate matter being the dominant factor. Secondary particulate matter and biomass burning significantly impacted PM2.5 in the first and fourth quarters, while dust sources became more influential in the second quarter, and coal emissions were most prominent in the second and third quarters. Twodimensional PDP analysis indicated that in the first and fourth quarters, secondary particulate matter concentration increased with air pressure, and the atmospheric oxidation process was more pronounced under highhumidity conditions during the day. Strong transport conditions, with wind direction shifting from north to east, also influenced secondary particulate matter levels. This study demonstrates that the LightGBM model effectively captures the nonlinear relationships between PM2.5 and meteorological and emission factors, providing a reliable approach for analyzing the causes of PM2.5 pollution.
引用
收藏
页数:14
相关论文
共 50 条
  • [41] Research on the impact of land use and meteorological factors on the spatial distribution characteristics of PM2.5 concentration
    Wang, Xiaoxia
    Zhang, Hongtao
    Fan, Zhihai
    Ding, Hong
    ATMOSPHERIC POLLUTION RESEARCH, 2025, 16 (05)
  • [42] Spatial Variation of the Relationship between PM2.5 Concentrations and Meteorological Parameters in China
    Lin, Gang
    Fu, Jingying
    Jiang, Dong
    Wang, Jianhua
    Wang, Qiao
    Dong, Donglin
    BIOMED RESEARCH INTERNATIONAL, 2015, 2015
  • [43] Prediction and analysis of particulate matter (PM2.5 and PM10) concentrations using machine learning techniques
    Anurag Barthwal
    Debopam Acharya
    Divya Lohani
    Journal of Ambient Intelligence and Humanized Computing, 2023, 14 : 1323 - 1338
  • [44] Predicting Hourly Particulate Matter (PM2.5) Concentrations Using Meteorological Data
    AlDaweesh, Sarah A.
    2019 INTERNATIONAL CONFERENCE ON COMPUTING, ELECTRONICS & COMMUNICATIONS ENGINEERING (ICCECE), 2019, : 130 - 134
  • [45] Effect of Meteorological Factors on PM2.5 during July to September of Beijing
    Pu Wei-wei
    Zhao Xiu-juan
    Zhang Xiao-ling
    Ma Zhi-qiang
    SECOND INTERNATIONAL CONFERENCE ON MINING ENGINEERING AND METALLURGICAL TECHNOLOGY (MEMT 2011), 2011, 2 : 272 - 277
  • [46] Prediction and analysis of particulate matter (PM2.5 and PM10) concentrations using machine learning techniques
    Barthwal, Anurag
    Acharya, Debopam
    Lohani, Divya
    JOURNAL OF AMBIENT INTELLIGENCE AND HUMANIZED COMPUTING, 2021, 14 (3) : 1323 - 1338
  • [47] Impact of Population Density on PM2.5 Concentrations: A Case Study in Shanghai, China
    Han, Shuaishuai
    Sun, Bindong
    SUSTAINABILITY, 2019, 11 (07)
  • [48] An Evaluation of the Influence of Meteorological Factors and a Pollutant Emission Inventory on PM2.5 Prediction in the Beijing-Tianjin-Hebei Region Based on a Deep Learning Method
    Shi, Xiaofei
    Li, Bo
    Gao, Xiaoxiao
    Yabo, Stephen Dauda
    Wang, Kun
    Qi, Hong
    Ding, Jie
    Fu, Donglei
    Zhang, Wei
    ENVIRONMENTS, 2024, 11 (06)
  • [49] The variation Characteristics of PM2.5 in Shanghai and Its Correlation with Meteorological Factors
    Zhou, Yunyun
    Zhang, Deying
    Zheng, Lan
    Shi, Runhe
    Chen, Maosi
    REMOTE SENSING AND MODELING OF ECOSYSTEMS FOR SUSTAINABILITY XV, 2018, 10767
  • [50] Impact of Meteorological Conditions on PM2.5 Pollution in China during Winter
    Xu, Yanling
    Xue, Wenbo
    Lei, Yu
    Zhao, Yang
    Cheng, Shuiyuan
    Ren, Zhenhai
    Huang, Qing
    ATMOSPHERE, 2018, 9 (11):