Characterization of spatial-temporal distribution and microenvironment source contribution of PM2.5 concentrations using a low-cost sensor network with artificial neural network/kriging techniques

被引:6
|
作者
Lee, Yi-Ming [1 ]
Lin, Guan-Yu [2 ]
Le, Thi-Cuc [1 ]
Hong, Gung-Hwa [1 ]
Aggarwal, Shankar G. [3 ]
Yu, Jhih-Yuan [4 ]
Tsai, Chuen-Jinn [1 ]
机构
[1] Natl Yang Ming Chiao Tung Univ, Inst Environm Engn, Hsinchu, Taiwan
[2] Tunghai Univ, Dept Environm Sci & Engn, Taichung, Taiwan
[3] CSIR, Environm Sci & Biomed Metrol Div, Natl Phys Lab, New Delhi, India
[4] Environm Protect Adm, Dept Environm Monitoring & Informat Management, Taipei, Taiwan
关键词
Low-cost sensor; Artificial neural network; Microenvironment; Spatial-temporal distribution; PM2.5 source contribution; PARTICULATE AIR-POLLUTION; AEROSOL MASS-SPECTROMETRY; EXPOSURE ASSESSMENT; USE REGRESSION; MEXICO-CITY; MORTALITY; FORECAST; MATTER; MODEL;
D O I
10.1016/j.envres.2023.117906
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Low-cost sensors (LCS) network is widely used to improve the resolution of spatial-temporal distribution of air pollutant concentrations in urban areas. However, studies on air pollution sources contribution to the micro environment, especially in industrial and mix-used housing areas, still need to be completed. This study investigated the spatial-temporal distribution and source contributions of PM2.5 in the urban area based on 6-month of the LCS network datasets. The Artificial Neural Network (ANN) was used to calibrate the measured PM2.5 by the LCS network. The calibrated PM2.5 were shown to agree with reference PM2.5 measured by the BAM-1020 with R2 of 0.85, MNE of 30.91%, and RMSE of 3.73 mu g/m3, which meet the criteria for hotspot identification and personal exposure study purposes. The Kriging method was further used to establish the spatial-temporal distribution of PM2.5 concentrations in the urban area. Results showed that the highest average PM2.5 concentration occurred during autumn and winter due to monsoon and topographic effects. From a diurnal perspective, the highest level of PM2.5 concentration was observed during the daytime due to heavy traffic emissions and industrial production. Based on the present ANN-based microenvironment source contribution assessment model, temples, fried chicken shops, traffic emissions in shopping and residential zones, and industrial activities such as the mechanical manufacturing and precision metal machining were identified as the sources of PM2.5. The numerical algorithm coupled with the LCS network presented in this study is a practical framework for PM2.5 hotspots and source identification, aiding decision-makers in reducing atmospheric PM2.5 concentrations and formulating regional air pollution control strategies.
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页数:13
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