Assessing water quality of an ecologically critical urban canal incorporating machine learning approaches

被引:22
|
作者
Sajib, Abdul Majed [1 ,2 ,3 ,4 ]
Diganta, Mir Talas Mahammad [1 ,2 ,3 ,4 ]
Moniruzzaman, Md [5 ]
Rahman, Azizur [6 ,7 ]
Dabrowski, Tomasz [8 ]
Uddin, Md Galal [1 ,2 ,3 ,4 ]
Olbert, Agnieszka I. [4 ]
机构
[1] Univ Galway, Coll Sci & Engn, Sch Engn, Galway, Ireland
[2] Univ Galway, Ryan Inst, Galway, Ireland
[3] Univ Galway, MaREI Res Ctr, Galway, Ireland
[4] Univ Galway, Ecohydroinformat Res Grp EHIRG, Civil Engn, Galway, Ireland
[5] Jagannath Univ, Dept Geog & Environm, Dhaka, Bangladesh
[6] Charles Sturt Univ, Sch Comp Math & Engn, Wagga Wagga, NSW, Australia
[7] Charles Sturt Univ, Gulbali Inst Agr Water & Environm, Wagga Wagga, Australia
[8] Marine Inst, Rinville, Ireland
关键词
Surface water quality; Machine learning; Water quality index; Model sensitivity; Model uncertainty; RMS-WQI Model; FEATURE-SELECTION; RIVER; PERFORMANCE; ALGORITHMS; INDEX; PREDICTION; MODEL;
D O I
10.1016/j.ecoinf.2024.102514
中图分类号
Q14 [生态学(生物生态学)];
学科分类号
071012 ; 0713 ;
摘要
This study assessed water quality (WQ) in Tongi Canal, an ecologically critical and economically important urban canal in Bangladesh. The researchers employed the Root Mean Square Water Quality Index (RMS-WQI) model, utilizing seven WQ indicators, including temperature, dissolve oxygen, electrical conductivity, lead, cadmium, and iron to calculate the water quality index (WQI) score. The results showed that most of the water sampling locations showed poor WQ, with many indicators violating Bangladesh's environmental conservation regulations. This study employed eight machine learning algorithms, where the Gaussian process regression (GPR) model demonstrated superior performance (training RMSE = 1.77, testing RMSE = 0.0006) in predicting WQI scores. To validate the GPR model's performance, several performance measures, including the coefficient of determination (R2), the Nash-Sutcliffe efficiency (NSE), the model efficiency factor (MEF), Z statistics, and Taylor diagram analysis, were employed. The GPR model exhibited higher sensitivity (R2 = 1.0) and efficiency (NSE = 1.0, MEF = 0.0) in predicting WQ. The analysis of model uncertainty (standard uncertainty = 7.08 +/- 0.9025; expanded uncertainty = 7.08 +/- 1.846) indicates that the RMS-WQI model holds potential for assessing the WQ of inland waterbodies. These findings indicate that the RMS-WQI model could be an effective approach for assessing inland waters across Bangladesh. The study's results showed that most of the WQ indicators did not meet the recommended guidelines, indicating that the water in the Tongi Canal is unsafe and unsuitable for various purposes. The study's implications extend beyond the Tongi Canal and could contribute to WQ management initiatives across Bangladesh.
引用
收藏
页数:23
相关论文
共 50 条
  • [1] Marine waters assessment using improved water quality model incorporating machine learning approaches
    Uddin, Md Galal
    Rahman, Azizur
    Nash, Stephen
    Diganta, Mir Talas Mahammad
    Sajib, Abdul Majed
    Moniruzzaman, Md
    Olbert, Agnieszka I.
    JOURNAL OF ENVIRONMENTAL MANAGEMENT, 2023, 344
  • [2] Prediction of Water Quality in Reservoirs: A Comparative Assessment of Machine Learning and Deep Learning Approaches in the Case of Toowoomba, Queensland, Australia
    Farzana, Syeda Zehan
    Paudyal, Dev Raj
    Chadalavada, Sreeni
    Alam, Md Jahangir
    GEOSCIENCES, 2023, 13 (10)
  • [3] A survey on applications of machine learning algorithms in water quality assessment and water supply and management
    Oguz, Abdulhalik
    Ertugrul, Omer Faruk
    WATER SUPPLY, 2023, 23 (02) : 895 - 922
  • [4] Machine-Learning-Based Approach To Assessing Water Quality in a Specific Basin: The Case of Wujingang Basin
    Zhang, Shubo
    He, Ruonan
    Wang, Qian
    Qu, Zhan
    Wang, Jinfeng
    Wang, Yanru
    Ren, Hongqiang
    ACS ES&T WATER, 2023, 4 (03): : 1014 - 1023
  • [5] Determining quality of water in reservoir using machine learning
    Chou, Jui-Sheng
    Ho, Chia-Chun
    Hoang, Ha-Son
    ECOLOGICAL INFORMATICS, 2018, 44 : 57 - 75
  • [6] A review of the application of machine learning in water quality evaluation
    Zhu, Mengyuan
    Wang, Jiawei
    Yang, Xiao
    Zhang, Yu
    Zhang, Linyu
    Ren, Hongqiang
    Wu, Bing
    Ye, Lin
    ECO-ENVIRONMENT & HEALTH, 2022, 1 (02): : 107 - 116
  • [7] Machine learning approaches to coastal water quality monitoring using GOCI satellite data
    Kim, Yong Hoon
    Im, Jungho
    Ha, Ho Kyung
    Choi, Jong-Kuk
    Ha, Sunghyun
    GISCIENCE & REMOTE SENSING, 2014, 51 (02) : 158 - 174
  • [8] Water quality classification using machine learning algorithms
    Nasir, Nida
    Kansal, Afreen
    Alshaltone, Omar
    Barneih, Feras
    Sameer, Mustafa
    Shanableh, Abdallah
    Al-Shamma'a, Ahmed
    JOURNAL OF WATER PROCESS ENGINEERING, 2022, 48
  • [9] 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
  • [10] Urban Fine-Grained Water Quality Monitoring Based on Stacked Machine Learning Approach
    Cheng, Caijuan
    Xie, Zhijun
    Jin, Xing
    Peng, Changchun
    Ren, Cheng
    Mao, Yunfei
    Zhou, Kefan
    Li, Yingying
    IEEE ACCESS, 2024, 12 : 77156 - 77170