535 / 2024-06-30 23:32:30
A Study of Estuarine Hypoxia Resolution Based on Random Forest Algorithm and Wavelet Transform: A Case Study of Shenzhen River Estuary
estuarine hypoxia,wavelet analysis,random forest algorithm,multivariate time series prediction model,explainable machine learning
全文录用
Zhan-Qiang Jian / Peking University Shenzhen Graduate School;Key Laboratory for Urban Habitat Environmental Science and Technology; School of Environment and Energy
Fangnan Xiao / Peking University Shenzhen Graduate School;Key Laboratory for Urban Habitat Environmental Science and Technology;School of Environment and Energy
Runqiao Zhang / Peking University Shenzhen Graduate School;Key Laboratory for Urban Habitat Environmental Science and Technology;School of Environment and Energy
Huapeng Qin / Peking University Shenzhen Graduate School;Key Laboratory for Urban Habitat Environmental Science and Technology;School of Environment and Energy
Estuary hypoxia is nowadays a common ecological problem worldwide due to the accumulation of pollutants in the tailwater of sewage treatment plants and the increase in discharges. Shenzhen River is located in the core area of the Guangdong-Hong Kong-Macao Greater Bay Area, and its estuary hypoxia is gradually receiving attention. Therefore, taking the Shenzhen River estuary as an example, this paper collected monitoring data on water quality, meteorology, tides, and wastewater treatment plant (WWTP) discharge related to dissolved oxygen (DO) in the Shenzhen River estuary and explores the best prediction effect of the Random Forest model on the DO in the estuary. The Pearson correlation coefficient calculation between the indicators showed that the estuarine water quality was mainly affected by conductivity and discharge from the wastewater treatment plant, with the exception of DO and conductivity, which showed a more pronounced negative correlation. It is worth noteworthy that the interpretable random forest model effectively identifies the driving factors of DO changes. Through cross-wavelet transform, the periodic and causal relationship between the driving factors and DO were mined, and the effects of tides and rainfall on DO were revealed. The results showed that the effect of WWTP tailwater discharge on DO was spatially and temporally heterogeneous. Combining machine learning methods, focusing on multi-source data in specific areas and fully exploring the key information implied by DO driving factors, this research has reference value for the application of environmental monitoring indicators.

 
重要日期
  • 会议日期

    10月14日

    2024

    10月17日

    2024

  • 09月30日 2024

    初稿截稿日期

  • 10月17日 2024

    注册截止日期

主办单位
国际水利与环境工程学会亚太地区分会
承办单位
长江水利委员会长江科学院
四川大学
联系方式
移动端
在手机上打开
小程序
打开微信小程序
客服
扫码或点此咨询