Adjusting prediction of ozone concentration based on CMAQ model and machine learning methods in Sichuan-Chongqing region, China

被引:47
作者
Lu, Hua [1 ,6 ]
Xie, Min [2 ]
Liu, Xiaoran [1 ,6 ]
Liu, Bojun [3 ]
Jiang, Minzhi [4 ]
Gao, Yanghua [1 ,6 ]
Zhao, Xiaoli [5 ]
机构
[1] Chongqing Inst Meteorol Sci, Chongqing 401147, Peoples R China
[2] Nanjing Univ, Sch Atmospher Sci, Nanjing 210023, Peoples R China
[3] Chongqing Meteorol Observ, Chongqing 401147, Peoples R China
[4] Univ N Carolina, Dept Appl Phys Sci, Chapel Hill, NC 27514 USA
[5] Sichuan Meteorol Disasters Prevent Technol Ctr, Chengdu 610072, Peoples R China
[6] Chongqing Engn Res Ctr Agrometeorol & Satellite R, Chongqing 401147, Peoples R China
关键词
Ozone prediction; Machine learning; WRF-CMAQ; Sichuan-chongqing region; YANGTZE-RIVER DELTA; AIR-QUALITY; NEURAL-NETWORKS; BIAS-CORRECTION; RANDOM FOREST; PM2.5; POLLUTION; FORECASTS; BASIN;
D O I
10.1016/j.apr.2021.101066
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
With increasing ozone pollution and deeper understanding of its harm to humans and climate, it is important to accurately forecast ozone. In this study, training and testing data sets were constructed with hourly numerical models forecasts and monitoring station observation for the year 2018 for Sichuan-Chongqing region, China. Three machine learning methods including Lasso, random forest and long short-term memory recurrent neural network (LSTM-RNN) coupled with CMAQ model were trained to forecast the ozone concentrations. The Lasso regression and random forest were used to realize feature optimization in four sub-regions separately. Coupled model with Lasso-random forest coupled feather selection schemes showed the best performance among different models. The main conclusions of adjusting results showed that deviations of hourly ozone prediction by CMAQ alone forecasts can be significantly reduced after machine learning coupled model adjusting, and correlation coefficients can be remarkably improved. Adjusting effects varied with different sub-regions and seasons. In three basin sub-regions, adjusting with random forest had the best performance, while in the plateau sub-region, adjusting with LSTM-RNN was most satisfactory, where root mean squared error decrease rate was 80.2% and correlation coefficient reached 91%. Machine learning methods performed better in summer and autumn for the three basin sub-regions, while in the plateau sub-region, adjusting was more significant in summer compared to other seasons.
引用
收藏
页数:13
相关论文
共 50 条
[21]   Time-sensitive prediction of NO2 concentration in China using an ensemble machine learning model from multi-source data [J].
Tao, Chenliang ;
Jia, Man ;
Wang, Guoqiang ;
Zhang, Yuqiang ;
Zhang, Qingzhu ;
Wang, Xianfeng ;
Wang, Qiao ;
Wang, Wenxing .
JOURNAL OF ENVIRONMENTAL SCIENCES, 2024, 137 :30-40
[22]   A model based on machine learning for the prediction of cyclosporin A trough concentration in Chinese allo-HSCT patients [J].
Song, Lin ;
Huang, Chen-Rong ;
Pan, Shi-Zheng ;
Zhu, Jian-Guo ;
Cheng, Zong-Qi ;
Yu, Xun ;
Xue, Ling ;
Xia, Fan ;
Zhang, Jin-Yuan ;
Wu, De-Pei ;
Miao, Li-Yan .
EXPERT REVIEW OF CLINICAL PHARMACOLOGY, 2023, 16 (01) :83-91
[23]   The Importance of NOx Control for Peak Ozone Mitigation Based on a Sensitivity Study Using CMAQ-HDDM-3D Model During a Typical Episode Over the Yangtze River Delta Region, China [J].
Wang, Yangjun ;
Yaluk, Elly Arukulem ;
Chen, Hui ;
Jiang, Sen ;
Huang, Ling ;
Zhu, Ansheng ;
Xiao, Shilin ;
Xue, Jin ;
Lu, Guibin ;
Bian, Jinting ;
Kasemsan, Manomaiphiboon ;
Zhang, Kun ;
Liu, Hanqing ;
Tong, Huanhuan ;
Ooi, Maggie Chel Gee ;
Chan, Andy ;
Li, Li .
JOURNAL OF GEOPHYSICAL RESEARCH-ATMOSPHERES, 2022, 127 (19)
[24]   Prediction of Total Phosphorus Based on Distance Correlation and Machine Learning Methods—a Case Study of Dongjiang River, China [J].
Yongkai Huang ;
Yiling Chen .
Water, Air, & Soil Pollution, 2024, 235
[25]   Surrogate model for deviation angle and total pressure loss prediction of compressor based on machine learning methods [J].
Ma B. ;
Wu X. ;
Yu Y. .
Hangkong Dongli Xuebao/Journal of Aerospace Power, 2023, 38 (07) :905-920
[26]   Prediction of CODMn concentration in lakes based on spatiotemporal feature screening and interpretable learning methods - A study of Changdang Lake, China [J].
Huan, Juan ;
Zheng, Yongchun ;
Xu, Xiangen ;
Zhang, Hao ;
Shi, Bing ;
Zhang, Chen ;
Hu, Qucheng ;
Fan, Yixiong ;
Wu, Ninglong ;
Lv, Jiapeng .
COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2024, 219
[27]   Prediction of Total Phosphorus Based on Distance Correlation and Machine Learning Methods-a Case Study of Dongjiang River, China [J].
Huang, Yongkai ;
Chen, Yiling .
WATER AIR AND SOIL POLLUTION, 2024, 235 (02)
[28]   Prediction of maximum dynamic shear modulus of undisturbed marine soils in the eastern coast of China based on machine learning methods [J].
Tu, Yiliang ;
Yao, Qianglong ;
Zhou, Ying ;
Zhu, Zhihua .
OCEAN ENGINEERING, 2025, 321
[29]   Applying machine learning methods to develop a successful aging maintenance prediction model based on physical fitness tests [J].
Cai TianPan ;
Long JingWen ;
Kuang Jie ;
You Fu ;
Zou TingTing ;
Wu Lei .
GERIATRICS & GERONTOLOGY INTERNATIONAL, 2020, 20 (06) :637-642
[30]   Development of a prediction model on preeclampsia using machine learning-based method: a retrospective cohort study in China [J].
Liu, Mengyuan ;
Yang, Xiaofeng ;
Chen, Guolu ;
Ding, Yuzhen ;
Shi, Meiting ;
Sun, Lu ;
Huang, Zhengrui ;
Liu, Jia ;
Liu, Tong ;
Yan, Ruiling ;
Li, Ruiman .
FRONTIERS IN PHYSIOLOGY, 2022, 13