Analysis of the Gridded Influencing Factors of the PM2.5 Concentration in Sichuan Province Based on a Stacked Machine Learning Model

被引:7
作者
Wu, Yuhong [1 ,2 ]
Du, Ning [1 ]
Wang, Li [1 ]
Cai, Hong [1 ]
Zhou, Bin [1 ,3 ]
机构
[1] Guizhou Univ, Coll Min, Guiyang 550025, Peoples R China
[2] Chinese Acad Sci, Inst Mt Hazards & Environm, Chengdu 610299, Peoples R China
[3] Guizhou Vocat & Tech Coll Water Resources & Hydrop, Guiyang 551416, Peoples R China
基金
中国国家自然科学基金;
关键词
PM2.5; Influencing factor; Sichuan Province; Interaction; Stacked machine learning; Grid; BOUNDARY-LAYER HEIGHT; SOCIOECONOMIC-FACTORS; POLLUTION; LAND;
D O I
10.1007/s41742-022-00494-7
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Scientific identification of the factors that influence PM2.5 concentrations is crucial for accurate management of the regional atmosphere. In this paper, we selected boundary layer height (BLH), a low vegetation cover index (CVL), atmospheric pressure (PS), temperature (TEMP), rainfall (RAIN), a high vegetation cover index (CVH), wind speed (WS), relative humidity (RH), land use data (LUCC), normalized vegetation index (NDVI), a digital elevation model (DEM) and a nighttime light index (NL) as influencing factors and used a 5 x 5 km grid as the evaluation unit to analyze the degree of influence of different influencing factors on the change in PM2.5 concentrations on a monthly time scale based on a stacked machine learning model. The results reveal that (i) compared with a convolutional neural network (CNN), a deep belief network (DBN), adaptive boosting (AdaBoost), extreme gradient boosting (XGBoost) and random forest (RF), the stacked machine learning model has a better ability to simulate the relationship between PM2.5 concentrations and influencing factors, with higher accuracy and a lower error rate. (ii) There was significant spatial autocorrelation and spatial heterogeneity of the PM2.5 concentration in Sichuan Province from October 2015 to September 2020, and the regional and clustering characteristics of air pollution are obvious, with PM2.5 concentrations mainly showing high-high clustering and low-low clustering. (iii) The key influencing factors of PM2.5 concentrations differ by month. Therefore, identifying the key influencing factors of PM2.5 concentrations in Sichuan Province in different months is crucial for the accurate management of air quality. (iv) The influence of interacting factors on PM2.5 concentrations varied by month. Therefore, the identification of key interaction factors influencing PM2.5 concentrations in Sichuan Province on a monthly time scale can provide some scientific evidence to support PM2.5 pollution prevention and control.
引用
收藏
页数:17
相关论文
共 50 条
[41]   Spatio-temporal statistical analysis of PM1 and PM2.5 concentrations and their key influencing factors at Guayaquil city, Ecuador [J].
Rincon, Gladys ;
Morantes, Giobertti ;
Roa-Lopez, Heydi ;
Cornejo-Rodriguez, Maria del Pilar ;
Jones, Benjamin ;
Cremades, Lazaro, V .
STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT, 2023, 37 (03) :1093-1117
[42]   Temporal and Spatial Distribution Characteristics of Atmospheric Particulate Matter (PM10 and PM2.5) in Changchun and Analysis of Its Influencing Factors [J].
Wang, Ju ;
Xie, Xin ;
Fang, Chunsheng .
ATMOSPHERE, 2019, 10 (11)
[43]   An Ensemble Machine-Learning Model To Predict Historical PM2.5 Concentrations in China from Satellite Data [J].
Xiao, Qingyang ;
Chang, Howard H. ;
Geng, Guannan ;
Liu, Yang .
ENVIRONMENTAL SCIENCE & TECHNOLOGY, 2018, 52 (22) :13260-13269
[44]   A new PM2.5 concentration forecasting system based on AdaBoost-ensemble system with deep learning approach [J].
Li, Zhongfei ;
Gan, Kai ;
Sun, Shaolong ;
Wang, Shouyang .
JOURNAL OF FORECASTING, 2023, 42 (01) :154-175
[45]   A practical framework for predicting residential indoor PM2.5 concentration using land-use regression and machine learning methods [J].
Li, Zhiyuan ;
Tong, Xinning ;
Ho, Jason Man Wai ;
Kwok, Timothy C. Y. ;
Dong, Guanghui ;
Ho, Kin-Fai ;
Yim, Steve Hung Lam .
CHEMOSPHERE, 2021, 265 (265)
[46]   Spatiotemporal Pattern of PM2.5 Concentrations in Mainland China and Analysis of Its Influencing Factors using Geographically Weighted Regression [J].
Luo, Jieqiong ;
Du, Peijun ;
Samat, Alim ;
Xia, Junshi ;
Che, Meiqin ;
Xue, Zhaohui .
SCIENTIFIC REPORTS, 2017, 7
[47]   Air quality analysis and PM2.5 modelling using machine learning techniques: A study of Hyderabad city in India [J].
Mathew, Aneesh ;
Gokul, P. R. ;
Raja Shekar, Padala ;
Arunab, K. S. ;
Ghassan Abdo, Hazem ;
Almohamad, Hussein ;
Abdullah Al Dughairi, Ahmed .
COGENT ENGINEERING, 2023, 10 (01)
[48]   Influencing factors of PM2.5 and O3 from 2016 to 2020 based on DLNM and WRF-CMAQ [J].
Duan, Wenjiao ;
Wang, Xiaoqi ;
Cheng, Shuiyuan ;
Wang, Ruipeng ;
Zhu, Jiaxian .
ENVIRONMENTAL POLLUTION, 2021, 285
[49]   Estimating the Impact of COVID-19 on the PM2.5 Levels in China with a Satellite-Driven Machine Learning Model [J].
Li, Qiulun ;
Zhu, Qingyang ;
Xu, Muwu ;
Zhao, Yu ;
Narayan, K. M. Venkat ;
Liu, Yang .
REMOTE SENSING, 2021, 13 (07)
[50]   Estimating PM2.5 Concentrations Using the Machine Learning RF-XGBoost Model in Guanzhong Urban Agglomeration, China [J].
Lin, Lujun ;
Liang, Yongchun ;
Liu, Lei ;
Zhang, Yang ;
Xie, Danni ;
Yin, Fang ;
Ashraf, Tariq .
REMOTE SENSING, 2022, 14 (20)