Coastal ozone dynamics and formation regime in Eastern China: Integrating trend decomposition and machine learning techniques.

Journal: Journal of environmental sciences (China)
PMID:

Abstract

Machine-learning is a robust technique for understanding pollution characteristics of surface ozone, which are at high levels in urban China. This study introduced an innovative approach combining trend decomposition with Random Forest algorithm to investigate ozone dynamics and formation regimes in a coastal area of China. During the period of 2017-2022, significant inter-annual fluctuations emerged, with peaks in mid-2017 attributed to volatile organic compounds (VOCs), and in late-2019 influenced by air temperature. Multifaceted periodicities (daily, weekly, holiday, and yearly) in ozone were revealed, elucidating substantial influences of daily and yearly components on ozone periodicity. A VOC-sensitive ozone formation regime was identified, characterized by lower VOCs/NO ratios (average = 0.88) and significant positive correlations between ozone and VOCs. This interplay manifested in elevated ozone during weekends, holidays, and pandemic lockdowns. Key variables influencing ozone across diverse timescales were uncovered, with solar radiation and temperature driving daily and yearly ozone variations, respectively. Precursor substances, particularly VOCs, significantly shaped weekly/holiday patterns and long-term trends of ozone. Specifically, acetone, ethane, hexanal, and toluene had a notable impact on the multi-year ozone trend, emphasizing the urgency of VOC regulation. Furthermore, our observations indicated that NO primarily drived the stochastic variations in ozone, a distinguishing characteristic of regions with heavy traffic. This research provides novel insights into ozone dynamics in coastal urban areas and highlights the importance of integrating statistical and machine-learning methods in atmospheric pollution studies, with implications for targeted mitigation strategies beyond this specific region and pollutant.

Authors

  • Lei Tong
  • Zhuoliang Gu
    Environmental Protection Monitoring Station in Beilun, Ningbo 315800, China.
  • Xuchu Zhu
    Environmental Protection Monitoring Station in Beilun, Ningbo 315800, China.
  • Cenyan Huang
    College of Biological and Environmental Sciences, Zhejiang Wanli University, Ningbo 315100, China.
  • Baoye Hu
    College of Chemistry, Chemical Engineering and Environment & Fujian Provincial Key Laboratory of Modern Analytical Science and Separation Technology & Fujian Province University Key Laboratory of Pollution Monitoring and Control, Minnan Normal University, Zhangzhou 363000, China.
  • Yasheng Shi
    Center for Excellence in Regional Atmospheric Environment & Fujian Key Laboratory of Atmospheric Ozone Pollution Prevention & Key Laboratory of Urban Environment and Health, Institute of Urban Environment, Chinese Academy of Sciences, Xiamen 361021, China; Zhejiang Key Laboratory of Urban Environmental Process and Pollution Control, CAS Haixi Industrial Technology Innovation Center in Beilun, Ningbo 315830, China.
  • Yang Meng
    Center for Informational Biology, School of Life Science and Technology, University of Electronic Science and Technology of China (UESTC), Chengdu 610054, China.
  • Jie Zheng
    State Key Laboratory of Information Engineering in Surveying, Mapping and Remote Sensing, Wuhan University, Wuhan, China.
  • Mengmeng He
    Center for Excellence in Regional Atmospheric Environment & Fujian Key Laboratory of Atmospheric Ozone Pollution Prevention & Key Laboratory of Urban Environment and Health, Institute of Urban Environment, Chinese Academy of Sciences, Xiamen 361021, China; Zhejiang Key Laboratory of Urban Environmental Process and Pollution Control, CAS Haixi Industrial Technology Innovation Center in Beilun, Ningbo 315830, China.
  • Jun He
    Institute of Animal Nutrition, Sichuan Agricultural University, Key Laboratory for Animal Disease-Resistance Nutrition of China Ministry of Education, Key Laboratory of Animal Disease-resistant Nutrition and Feed of China Ministry of Agriculture and Rural Affairs, Key Laboratory of Animal Disease-resistant Nutrition of Sichuan Province, Ya'an, 625014, China.
  • Hang Xiao
    CAS-MPG Partner Institute for Computational Biology, Shanghai Institutes for Biological Sciences, Chinese Academy of Sciences, 320 Yueyang Road, Shanghai, China.