Quantification of uncertainty in short-term tropospheric column density risks for a wide range of carbon monoxide.

Journal: Journal of environmental management
PMID:

Abstract

The short-term risks associated with atmospheric trace gases, particularly carbon monoxide (CO), are critical for ecological security and human health. Traditional statistical methods, which still dominate the assessment of these risks, limit the potential for enhanced accuracy and reliability. This study evaluates the performance of traditional models (ARIMA), machine learning models (LightGBM, ConvLSTM2D), and optimized machine learning solutions (Bayes residual optimization ConvLSTM2D LightGBM, Bayes_CL) in predicting Sentinel 5P columnar CO levels. This study findings demonstrate that machine learning models and their optimized versions significantly outperform traditional ARIMA models in cross-validation (CV), visualization, and overall prediction performance. Notably, machine learning model based on Bayes and residual optimization (Bayes_CL) achieved the highest CV score (Bayes_CL R = 0.8, LightGBM R = 0.79, ConvLSTM2D R = 0.75, ARIMA R = 0.61), along with superior visualization and other metrics. Using Bayes_CL, we effectively quantified a 2.4% increase in columnar CO levels in mainland China in the second half of 2023, following the complete lifting of COVID-19 lockdowns. This study confirms that machine learning models can effectively replace traditional methods for short-term risk assessment of Sentinel 5P columnar CO. This transition holds significant implications for policy formulation, greenhouse effect assessment, and population health risk evaluation, especially in uncertain situations where human activities are severely disrupted, thereby affecting environmental safety.

Authors

  • Yufeng Chi
    School of Information Engineering, Sanming University, Sanming, 365004, China. Electronic address: yfchi@fjsmu.edu.cn.
  • Yingying Wu
    Chinese Language and Literature Specialty, Sanming University, Sanming, 365004, China. Electronic address: 20220101@fjsmu.edu.cn.
  • Kai Wang
    Department of Rheumatology, The Affiliated Huai'an No. 1 People's Hospital of Nanjing Medical University, Huai'an, Jiangsu, China.
  • Yin Ren
    University of Chinese Academy of Sciences, No. 19A Yuquan Road, Beijing 100049, China.
  • Hong Ye
    Department of Radiation Oncology, Beaumont Health, Royal Oak, Michigan.
  • Shuiqiao Yang
    CSIRO's Data61, Marsfield, NSW, 2122, Australia. Electronic address: shuiqiao.yang@data61.csiro.au.
  • Guanjun Lin
    School of Information Engineering, Sanming University, Sanming, 365004, China. Electronic address: guanjun.lin@fjsmu.edu.cn.