Interpretable Machine Learning Based Quantification of the Impact of Water Quality Indicators on Groundwater Under Multiple Pollution Sources

被引:0
|
作者
Zhang, Tianyi [1 ]
Wu, Jin [2 ]
Chu, Haibo [1 ]
Liu, Jing [1 ]
Wang, Guoqiang [2 ]
机构
[1] Beijing Univ Technol, Fac Architecture Civil & Transportat Engn, Beijing 100124, Peoples R China
[2] Beijing Normal Univ, Adv Interdisciplinary Inst Satellite Applicat, Beijing 100875, Peoples R China
基金
中国国家自然科学基金;
关键词
groundwater; water quality assessment; human health risk; positive matrix factorization; INDEX; BASIN;
D O I
10.3390/w17060905
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Accurate evaluation of groundwater quality and identification of key characteristics are essential for maintaining groundwater resources. The purpose of this study is to strengthen water quality evaluation through the SHAP and XGBoost algorithms, analyze the key indicators affecting water quality in depth, and quantify their impact on groundwater quality through interpretable tools. The XGBoost algorithm shows that zinc (0.183), nitrate (0.159), and chloride (0.136) are the three indicators with the highest weight. The SHAP algorithm shows that zinc (34.62%), nitrate (17.65%), and chloride (16.98%) have higher contribution values, which explains the output results of XGBoost. According to the calculation scores and classification standards of the water quality model, 49% of the groundwater samples in the study area have excellent water quality, 33% of the samples are better, and 18% of the samples are polluted. The results of positive matrix factorization (PMF) show that natural conditions, metal processing, metal smelting and mining, and agricultural activities all cause pollution to groundwater. Zinc, chloride, nitrate, and manganese were the key variables determined by the SHAP algorithm to explain the vast majority of human health risk sources. These findings indicate that interpretable machine learning not only improves the correlation of water quality assessment but also quantifies the judgment basis of each sample and helps to track key pollution indicators.
引用
收藏
页数:26
相关论文
共 50 条
  • [1] Estimating the water quality index based on interpretable machine learning models
    Yang, Shiwei
    Liang, Ruifeng
    Chen, Junguang
    Wang, Yuanming
    Li, Kefeng
    WATER SCIENCE AND TECHNOLOGY, 2024, 89 (05) : 1340 - 1356
  • [2] Machine learning predictive insight of water pollution and groundwater quality in the Eastern Province of Saudi Arabia
    Jibrin, Abdulhayat M.
    Al-Suwaiyan, Mohammad
    Aldrees, Ali
    Dan'azumi, Salisu
    Usman, Jamilu
    Abba, Sani I.
    Yassin, Mohamed A.
    Scholz, Miklas
    Sammen, Saad Sh.
    SCIENTIFIC REPORTS, 2024, 14 (01):
  • [3] Machine learning, Water Quality Index, and GIS-based analysis of groundwater quality
    Solangi, Ghulam Shabir
    Ali, Zouhaib
    Bilal, Muhammad
    Junaid, Muhammad
    Panhwar, Sallahuddin
    Keerio, Hareef Ahmed
    Sohu, Iftikhar Hussain
    Shahani, Sheeraz Gul
    Zaman, Noor
    WATER PRACTICE AND TECHNOLOGY, 2024, 19 (02) : 384 - 400
  • [4] Identification of organic chemical indicators for tracking pollution sources in groundwater by machine learning from GC-HRMS-based suspect and non-target screening data
    Ekpe, Okon Dominic
    Choo, Gyojin
    Kang, Jin-Kyu
    Yun, Seong-Taek
    Oh, Jeong-Eun
    WATER RESEARCH, 2024, 252
  • [5] Water pollution indicators and chemometric expertise for the assessment of the impact of municipal solid waste landfills on groundwater located in their area
    Kapelewska, Justyna
    Kotowska, Urszula
    Karpinska, Joanna
    Astel, Aleksander
    Zielinski, Piotr
    Suchta, Jolanta
    Algrzym, Karolina
    CHEMICAL ENGINEERING JOURNAL, 2019, 359 : 790 - 800
  • [6] Sources and hydrogeochemical processes of groundwater under multiple water source recharge condition
    Gao, Heng
    Yang, Lihu
    Song, Xianfang
    Guo, Minli
    Li, Binghua
    Cui, Xu
    SCIENCE OF THE TOTAL ENVIRONMENT, 2023, 903
  • [7] Groundwater Quality Assessment and Irrigation Water Quality Index Prediction Using Machine Learning Algorithms
    Hussein, Enas E.
    Derdour, Abdessamed
    Zerouali, Bilel
    Almaliki, Abdulrazak
    Wong, Yong Jie
    los Santos, Manuel Ballesta-de
    Ngoc, Pham Minh
    Hashim, Mofreh A.
    Elbeltagi, Ahmed
    WATER, 2024, 16 (02)
  • [8] Advanced Machine Learning and Water Quality Index (WQI) Assessment: Evaluating Groundwater Quality at the Yopurga Landfill
    Zheng, Hongmei
    Hou, Shiwei
    Liu, Jing
    Xiong, Yanna
    Wang, Yuxin
    WATER, 2024, 16 (12)
  • [9] Modelling of arsenic concentration in multiple water sources: A comparison of different machine learning methods
    Ibrahim, Bemah
    Ewusi, Anthony
    Ahenkorah, Isaac
    Ziggah, Yao Yevenyo
    GROUNDWATER FOR SUSTAINABLE DEVELOPMENT, 2022, 17
  • [10] Machine Learning-Based Water Quality Classification Assessment
    Chen, Wenliang
    Xu, Duo
    Pan, Bowen
    Zhao, Yuan
    Song, Yan
    WATER, 2024, 16 (20)