Evaluation of different machine learning approaches for predicting high concentration episodes of ground-level ozone: A case study in Catalonia, Spain

被引:6
|
作者
Vicente, D. J. [1 ]
Salazar, F. [1 ,2 ]
Lopez-Chacon, S. R. [1 ]
Soriano, C. [1 ]
Martin-Vide, J. [3 ]
机构
[1] Int Ctr Numer Methods Engn CIMNE, Barcelona 08034, Spain
[2] Univ Politecn Catalunya UPC, Flumen Res Inst, Barcelona 08034, Spain
[3] Univ Barcelona, Dept Geog, IdRA Climatol Grp, Barcelona, Spain
关键词
Ozone; Air pollution; Machine learning; High ozone episodes; Random forest; SUPPORT VECTOR MACHINE; SURFACE-OZONE; SPATIOTEMPORAL PREDICTION; CHINA; MODEL; CLASSIFICATION; POLLUTION;
D O I
10.1016/j.apr.2023.101999
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Ground-level ozone (O-3) is a pollutant with a great impact on human health and the environment. As a secondary air contaminant of photochemical origin, those areas with greater exposure to solar radiation, such as Spain and other Mediterranean countries, are considerably affected. With the aggravation of O-3 pollution, it is important to provide reliable forecasting tools to help stakeholders implement more effective policies to mitigate the negative impact associated with this problem. In this regard, Machine Learning-based models have emerged in recent years, since they are able to identify complex relationships between ozone levels and relevant variables. However, their application to capture the most extreme events remains difficult. In this work, different ML approaches for predicting daily maximum 8-h average ozone (O-3,O-MDA8) were compared, investigating their ability to forecast the highest concentration levels recorded. Two variants of the Random Forest algorithm (regression and classification) were applied to a specific area of Catalonia, Spain, with a special interest due to the high number of episodes of exceedance of O-3 concentration levels. The predictive models were built with a 1 day time horizon, using datasets from 2002 to 2020. The variables used as inputs were other air pollutants concentrations and meteorological processes, monitored the day before to the target day to be predicted, and time information. Although results showed reasonable overall performances, low accuracy was achieved when forecasting the highest episodes of O-3,O-MDA8. To improve the capacity of the models in predicting high-O-3,O-MDA8 concentration levels, a methodology was proposed to fine-tuning the original predictions of the ML models according to a classification metric, G-Mean, which allows adjusting the balance between the correct predictions of different classes. Using the Sensitivity and Specificity metrics, the classical approaches were compared with the original ones proposed in the present study. The results obtained, for all the cases analysed, showed a mean increase in Sensitivity of 0.28, associated with a greater number of True Positives (correct predictions of high O-3-episodes). On the other hand, the average Specificity value decreased, due to the appearance of a greater number of False Positives, although this reduction was only 0.05. The proposed criteria showed promising results, better balancing classification metrics and increasing the ratio of correct predictions linked to the higher ranges of O-3.
引用
收藏
页数:13
相关论文
共 50 条
  • [1] A comprehensive evaluation of deep learning approaches for ground-level ozone prediction across different regions
    Lin, Guanjun
    Zhao, Hang
    Chi, Yufeng
    ECOLOGICAL INFORMATICS, 2025, 86
  • [2] Forecasting ground-level ozone concentration levels using machine learning
    Du, Jianbang
    Qiao, Fengxiang
    Lu, Pan
    Yu, Lei
    RESOURCES CONSERVATION AND RECYCLING, 2022, 184
  • [3] A novel ensemble machine learning exposure model system for ground-level ozone at the national scale: A case of mainland China from 2013 to 2020
    Wang, Jiawei
    ENVIRONMENTAL IMPACT ASSESSMENT REVIEW, 2024, 109
  • [4] Ground-level ozone forecast based on machine learning
    Zabkar, R
    Zabkar, J
    Cemas, D
    AIR POLLUTION XII, 2004, 14 : 41 - 48
  • [5] High-Spatiotemporal-Resolution Estimation of Ground-Level Ozone in China Based on Machine Learning
    Chen, Jiahuan
    Dong, Heng
    Zhang, Zili
    Quan, Bingqian
    Luo, Lan
    ATMOSPHERE, 2024, 15 (01)
  • [6] A novel bagging ensemble approach for predicting summertime ground-level ozone concentration
    Mohan, Sankaralingam
    Saranya, Packiam
    JOURNAL OF THE AIR & WASTE MANAGEMENT ASSOCIATION, 2019, 69 (02) : 220 - 233
  • [7] Ground-level Ozone Prediction Using Machine Learning Techniques: A Case Study in Amman, Jordan
    Maryam Aljanabi
    Mohammad Shkoukani
    Mohammad Hijjawi
    International Journal of Automation and Computing, 2020, 17 : 667 - 677
  • [8] Ground-level Ozone Prediction Using Machine Learning Techniques: A Case Study in Amman, Jordan
    Aljanabi, Maryam
    Shkoukani, Mohammad
    Hijjawi, Mohammad
    INTERNATIONAL JOURNAL OF AUTOMATION AND COMPUTING, 2020, 17 (05) : 667 - 677
  • [9] Predicting Ground Level Ozone in Marrakesh by Machine-Learning Techniques
    Ordieres-Mere, J.
    Ouarzazi, J.
    El Johra, B.
    Gong, B.
    JOURNAL OF ENVIRONMENTAL INFORMATICS, 2020, 36 (02) : 93 - 106
  • [10] Estimating ground-level high-resolution ozone concentration across China using a stacked machine-learning method
    Li, Zizheng
    Wang, Weihang
    He, Qingqing
    Chen, Xiuzhen
    Huang, Jiejun
    Zhang, Ming
    ATMOSPHERIC POLLUTION RESEARCH, 2024, 15 (06)