Applications of machine learning in drinking water quality management: A critical review on water distribution system

被引:0
|
作者
Li, Zhaopeng [1 ]
Ma, Wencheng [1 ]
Zhong, Dan [1 ]
Ma, Jun [1 ]
Zhang, Qingzhou [2 ]
Yuan, Yongqin [3 ]
Liu, Xiaofei [3 ]
Wang, Xiaodong [3 ]
Zou, Kangbing [3 ]
机构
[1] Harbin Inst Technol, State Key Lab Urban Water Resource & Environm, Harbin 150090, Peoples R China
[2] Yanshan Univ, Sch Civil Engn & Mech, Qinhuangdao 066004, Peoples R China
[3] Guangzhou Water Supply Co Ltd, Guangzhou 510000, Peoples R China
关键词
Machine learning; Water quality management; Water distribution system; Water quality prediction; Anomaly detection; Contamination source identification; DISINFECTION BY-PRODUCTS; EVENT DETECTION; CONTAMINATION SOURCE; IDENTIFICATION; ACCUMULATION; MODEL; DECAY; IRON; DISCOLORATION; PARAMETERS;
D O I
10.1016/j.jclepro.2024.144171
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
As the final and crucial link in delivering clean water to consumers, the water distribution system faces the risk of water quality deterioration. Conventional water quality parameter monitoring and simple analysis may not adequately reflect complex changes in distribution. Machine learning (ML) excels at uncovering the intricate relationships among these. Although some reviews exist on ML in water resources, a systematic assessment of water quality in water distribution systems is lacking. The current review offers the first critical and comprehensive review of the application of ML in water quality management within water distribution systems, including water quality prediction, anomaly detection, and contamination source identification, and addresses the associated challenges and future directions. To be specific, for water quality prediction, the focus is on chlorine, disinfection by-products, microbial indicators, heavy metals, and sensory properties. The implementation of ML has the potential to reduce the cost of water quality monitoring and offer knowledge discovery. For anomaly detection, semi-supervised, supervised, and unsupervised models are reviewed. Changes in one or more surrogate water quality parameters measured by low-cost sensors can effectively indicate anomalous events. For contamination source identification, ML demonstrates its superiority in rapidly and accurately locating contamination sources. Additionally, dataset availability, interpretability, generalization capability, integrated models, real-time response and proactive decision have been identified as key areas for implementing ML. This review helps bridge the knowledge gap and provides a reference for the intelligent development of water quality management in distribution systems.
引用
收藏
页数:19
相关论文
共 50 条
  • [31] Temporal Variability of Bacterial Diversity in a Chlorinated Drinking Water Distribution System
    McCoy, Stacia T.
    VanBriesen, Jeanne M.
    JOURNAL OF ENVIRONMENTAL ENGINEERING, 2012, 138 (07) : 786 - 795
  • [32] A hybrid machine learning approach for enhanced anomaly detection in drinking water quality
    Kalaivanan K.
    Vellingiri J.
    International Journal of Environmental Studies, 2024, 81 (02) : 661 - 674
  • [33] Transforming PFAS management: A critical review of machine learning applications for enhanced monitoring and treatment
    Rahman, Md Hasan-Ur
    Sikder, Rabbi
    Tonmoy, Tanvir Ahamed
    Hossain, Md. Mahjib
    Ye, Tao
    Aich, Nirupam
    Gadhamshetty, Venkataramana
    JOURNAL OF WATER PROCESS ENGINEERING, 2025, 70
  • [34] Quality Monitoring of Abu Dhabi Drinking Water Using Machine Learning Classifiers
    Hasan, Ali N.
    Alhammadi, Khawla M.
    2021 14TH INTERNATIONAL CONFERENCE ON DEVELOPMENTS IN ESYSTEMS ENGINEERING (DESE), 2021, : 1 - 6
  • [35] Impact of local climate change on drinking water quality in a distribution system
    Kimbrough, David Eugene
    WATER QUALITY RESEARCH JOURNAL OF CANADA, 2019, 54 (03) : 179 - 192
  • [36] Application of Ice Pigging in a Drinking Water Distribution System: Impacts on Pipes and Bulk Water Quality
    Huang, Yujing
    Chen, Zhiwei
    He, Guilin
    Shao, Yu
    Song, Shuang
    Dong, Feilong
    Zhang, Tuqiao
    ENGINEERING, 2024, 40 : 122 - 130
  • [37] Digital water: artificial intelligence and soft computing applications for drinking water quality assessment
    Chhipi-Shrestha, Gyan
    Mian, Haroon R.
    Mohammadiun, Saeed
    Rodriguez, Manuel
    Hewage, Kasun
    Sadiq, Rehan
    CLEAN TECHNOLOGIES AND ENVIRONMENTAL POLICY, 2023, 25 (05) : 1409 - 1438
  • [38] Assessing water quality of an ecologically critical urban canal incorporating machine learning approaches
    Sajib, Abdul Majed
    Diganta, Mir Talas Mahammad
    Moniruzzaman, Md
    Rahman, Azizur
    Dabrowski, Tomasz
    Uddin, Md Galal
    Olbert, Agnieszka I.
    ECOLOGICAL INFORMATICS, 2024, 80
  • [39] Machine learning to assess and support safe drinking water supply: a systematic review
    Feng, Feng
    Zhang, Yuanxun
    Chen, Zhenru
    Ni, Jianyuan
    Feng, Yuan
    Xie, Yunchao
    Zhang, Chiqian
    JOURNAL OF ENVIRONMENTAL CHEMICAL ENGINEERING, 2025, 13 (01):
  • [40] Improving Water Quality Index prediction for water resources management plans in Malaysia: application of machine learning techniques
    Khozani, Zohreh Sheikh
    Iranmehr, Milad
    Mohtar, Wan Hanna Melini Wan
    GEOCARTO INTERNATIONAL, 2022, 37 (25) : 10058 - 10075