Basin-wide tracking of nitrate cycling in Yangtze River through dual isotope and machine learning

The nitrate (NO3−) input has adversely affected the water quality and ecological function in the whole basin of the Yangtze River. The protection of water sources and implementation of “great protection of Yangtze River” policy require large-scale information on water contamination. In this study, d...

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Veröffentlicht in:The Science of the total environment 2024-02, Vol.912, p.169656-169656, Article 169656
Hauptverfasser: Xie, Fazhi, Cai, Gege, Li, Guolian, Li, Haibin, Chen, Xing, Liu, Yun, Zhang, Wei, Zhang, Jiamei, Zhao, Xiaoli, Tang, Zhi
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Sprache:eng
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Zusammenfassung:The nitrate (NO3−) input has adversely affected the water quality and ecological function in the whole basin of the Yangtze River. The protection of water sources and implementation of “great protection of Yangtze River” policy require large-scale information on water contamination. In this study, dual isotope and Bayesian mixing model were used to research the transformation and sources of nitrate. Chemical fertilizers contribute 76 % of the nitrate sources in the upstream, while chemical fertilizers were also dominant in the midstream (39 %) and downstream (39 %) of Yangtze River. In addition, nitrification process occurred in the whole basin. Four machine learning models were used to relate nitrate concentrations to explanatory variables describing influence factors to predict nitrate concentrations in the whole basin of Yangtze River. The anthropogenic and natural factors, such as rainfall, GDP and population were chosen to take as predictor variables. The eXtreme Gradient Boosting (XGBoost) model for nitrate has a better predictive performance with an R2 of 0.74. The predictive models of nitrate concentrations will help identify the nitrate distribution and transport in the whole Yangtze River basin. Overall, this study represents the first basin-wide data-driven assessment of the nitrate cycling in the Yangtze River basin. [Display omitted] •Dual isotope and Bayesian mixing model were used to track nitrate sources in Yangtze River.•Nitrate in Yangtze River is mainly derived from chemical fertilizers and soil nitrogen.•Nitrification could be the main process of nitrogen transformation in Yangtze River.•Machine learning models can identify the distribution of nitrate well in the whole basin of Yangtze River.
ISSN:0048-9697
1879-1026
DOI:10.1016/j.scitotenv.2023.169656