1. Designing dynamic groundwater management strategies through a composite groundwater vulnerability model: Integrating human-related parameters into the DRASTIC model using LightGBM regression and SHAP analysis.
- Author
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Guo, Xu, Xiong, Hanxiang, Li, Haixue, Gui, Xiaofan, Hu, Xiaojing, Li, Yonggang, Cui, Hao, Qiu, Yang, Zhang, Fawang, and Ma, Chuanming
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GROUNDWATER management , *ARID regions climate , *REGRESSION analysis , *GROUNDWATER , *GROUNDWATER pollution - Abstract
Groundwater nitrate contamination has emerged as a pressing global concern. Given its potential for long-term impacts on aquifers, protective measures should primarily focus on prevention. Drawing on the theory of groundwater vulnerability (GV), the original DRASTIC model and parameters related to human activities are employed as inputs and integrated with the LightGBM regression algorithm to facilitate nitrate index (NI) prediction tasks. The SHAP analysis is conducted to effectively examine the contribution of parameters to the NI prediction and interpret the issue of parameter interactions. In addition, to mitigate the limitations of the intrinsic GV model, a composite nitrate index (CNI) is developed by linearly combining the DRASTIC index with the NI. The framework presented in this study provides adaptive strategies for managing groundwater resources over different time periods. A representative region for arid and semiarid climates, the Yinchuan region, is studied using the framework. As compared to 2012, the intrinsic GV index has changed spatially in 2022. Human activities have increased the influence of the nitrate concentration as shown by the Pearson correlation coefficient of −0.082 between the DRASTIC index and nitrate concentration. A significant increase in pollution levels was predicted by NI, ranging from −0.116 to 0.968. According to SHAP analysis, the significant increase in NI levels in 2022 was mainly due to high-value industrial and agricultural production. In 2022, 12.02% of the areas had an increase of at least 0.549 in the CNI. 42.1% of the areas were classified as moderate or high CNI levels. The farm was identified as a high-contributing source to nitrate pollution. The small-scale agricultural and livestock activities in non-urban areas also contribute to groundwater pollution. Dynamic groundwater management strategies need to be implemented in high-growth and high-level CNI areas. [Display omitted] • DRASTIC model and anthropogenic parameters were combined to predict nitrate index. • The innovative composite nitrate SGV framework were applied to Yinchuan regions. • SHAP analysis results support an increase in nitrate loading caused by human activity. • Dynamic groundwater management strategies were designed for different levels of CNI. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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