A Development of PM2.5 Forecasting System in South Korea Using Chemical Transport Modeling and Machine Learning

被引:0
作者
Youn-Seo Koo
Hee-Yong Kwon
Hyosik Bae
Hui-Young Yun
Dae-Ryun Choi
SukHyun Yu
Kyung-Hui Wang
Ji-Seok Koo
Jae-Bum Lee
Min-Hyeok Choi
Jeong-Beom Lee
机构
[1] Anyang University,Department of Environmental and Energy Engineering
[2] Anyang University,Department of Computer Engineering
[3] Nextsoft,Department of Information, Electrical & Electronic Engineering
[4] Anyang University,undefined
[5] National Institute of Environmental Research,undefined
来源
Asia-Pacific Journal of Atmospheric Sciences | 2023年 / 59卷
关键词
PM2.5; forecast; machine learning; DNN; RNN; CNN;
D O I
暂无
中图分类号
学科分类号
摘要
Ambient exposure to PM2.5 can adversely affect public health, and forecasting PM2.5 is essential for implementing protection measures in advance. Current PM2.5 forecasting systems are primarily based on the chemical transport model of Community Multiscale Air Quality (CMAQ) modeling systems and the Weather Research and Forecasting (WRF) model. However, the forecasting accuracies of these models are substantially constrained by uncertainties in the input data of anthropogenic emissions and meteorological fields, as well as inherent limitations in the models. The PM2.5 forecasting system developed in this study aimed at overcoming the limitations of CMAQ predictions by utilizing advanced machine learning algorithms. The proposed system was developed using forecast data from CMAQ and WRF, as well as observed PM2.5 concentrations and meteorological variables at monitoring stations in China and South Korea. It was then applied to national PM2.5 forecasting in South Korea. This study focused on developing secondary input data and machine learning models that can reflect the long-range transport in Northeast Asia. The proposed system can forecast 6-h average PM2.5 concentrations up to two days in advance at 19 forecast regions in South Korea. To evaluate the performance of the proposed models, a real-time machine learning-based forecasting system was applied to 19 forecasting regions from January 2020 to April 2021. Herein, the four machine learning algorithms applied, including deep neural network, recurrent neural network, convolutional neural network, and Ensemble, could reduce the over-prediction of the CMAQ forecast by decreasing the normal mean bias and improving the index of agreement. The reduced false alarm rates and high prediction accuracy confirm the feasibility of these models for practical applications.
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页码:577 / 595
页数:18
相关论文
共 105 条
[1]  
Bai Y(2016)Air pollutants concentrations forecasting using back propagation neural network based on wavelet decomposition with meteorological conditions Atmos. Pollut. Res. 7 557-566
[2]  
Li Y(2008)A comprehensive sensitivity analysis of the WRF model for air quality applications over the Iberian Peninsula Atmos. Environ. 42 8560-8574
[3]  
Wang X(2017)Cardiovascular effects of air pollution Arch. Cardiovasc. Dis. 110 634-642
[4]  
Xie J(2006)Review of the governing equations, computational algorithms, and other components of the Models-3 Community Multiscale Air Quality (CMAQ) modeling system Appl. Mech. Rev. 59 51-77
[5]  
Li C(2019)A review of artificial neural network models for ambient air pollution prediction Environ. Model. Softw. 119 285-304
[6]  
Borge R(2022)Air quality prediction using CNN+LSTM-based hybrid deep learning architecture Environ. Sci. Pollut. Res. 29 11920-11938
[7]  
Alexandrov V(2017)Spatially and chemically resolved source apportionment analysis: Case study of high particulate matter event Atmos. Environ. 162 55-70
[8]  
del Vas JJ(2012)Performance evaluation of the updated air quality forecasting system for Seoul predicting PM10 Atmos. Environ. 58 56-69
[9]  
Lumbreras J(2015)Improvement of PM10 prediction in East Asia using inverse modeling Atmos. Environ. 106 318-328
[10]  
Rodriguez E(2018)An analysis of chemical and meteorological characteristics of haze events in the Seoul metropolitan area during January 12–18, 2013 Atmos. Environ. 178 87-100