Draw on artificial neural networks to assess and predict water quality

被引:7
|
作者
Fernandes, A. [1 ]
Chaves, H. [2 ]
Lima, R. [3 ]
Neves, J. [3 ,4 ]
Vicente, H. [1 ,4 ]
机构
[1] Univ Evora, REQUIMTE LAQV, Escola Ciencias & Tecnol, Dept Quim, Evora, Portugal
[2] Inst Politecn Beja, Escola Super Agr Beja, Beja, Portugal
[3] CESPU, Inst Politecn Saude Norte, Gandra, Portugal
[4] Univ Minho, Ctr Algoritmi, Braga, Portugal
关键词
Artificial Intelligence; Artificial Neural Networks; Biochemical Oxygen Demand; Chemical Oxygen Demand; Water Quality;
D O I
10.1088/1755-1315/612/1/012028
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Water is one of the important vehicles for diseases of an infectious nature, which makes it essential to assess its quality. However, the assessment of water quality in reservoirs is a complex problem due to geographic limitations, sample collection and respective transport, the number of parameters to be studied and the financial resources spent to obtain analytical results. In addition, the period between sampling and analysis results must be added. This work describes the development of an Artificial Neural Network (ANN) to predict the biochemical and chemical oxygen demand based on the water pH value, the dissolved oxygen, the conductivity and its temperature. The models were trained and tested using experimental data (N=605) obtained from superficial water samples used to irrigate and produce water for public use, collected between September 2005 and December 2017. To evaluate the performance of the ANN models, the determination coefficient, the mean absolute error, the mean square error and the bias were calculated. It was determined that an ANN with topology 4-6- 5-2 could be used successfully to predict the variables' output. Indeed, good agreement was observed between the observed and predicted values, with the values of the coefficient of determination ranging from 0.813 to 0.979.
引用
收藏
页数:7
相关论文
共 50 条
  • [31] Application of artificial neural networks to assess student happiness
    Egilmez G.
    Erdil N.Ö.
    Arani O.M.
    Vahid M.
    International Journal of Applied Decision Sciences, 2019, 12 (02) : 115 - 140
  • [32] Employing neural networks to assess data quality
    Al-Namlah, A
    Becker, SA
    ISSUES AND TRENDS OF INFORMATION TECHNOLOGY MANAGEMENT IN CONTEMPORARY ORGANIZATIONS, VOLS 1 AND 2, 2002, : 28 - 31
  • [33] Combination of artificial neural networks and fractal theory to predict soil water retention curve
    Bayat, Hossein
    Neyshaburi, Mohammad Reza
    Mohammadi, Kourosh
    Nariman-Zadeh, Nader
    Irannejad, Mandi
    Gregory, Andrew S.
    COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2013, 92 : 92 - 103
  • [34] Artificial neural networks in water resources
    Cigizoglu, H. K.
    INTEGRATION OF INFORMATION FOR ENVIRONMENTAL SECURITY, 2008, : 115 - 148
  • [35] Reconstruction of river water quality missing data using artificial neural networks
    Tabari, Hossein
    Talaee, P. Hosseinzadeh
    WATER QUALITY RESEARCH JOURNAL OF CANADA, 2015, 50 (04): : 326 - 335
  • [36] Comparative use of artificial neural networks for the quality assessment of the water reservoirs of Athens
    Farmaki, Eleni G.
    Thomaidis, Nikolaos S.
    Simeonov, Vasil
    Efstathiou, Constantinos E.
    JOURNAL OF WATER SUPPLY RESEARCH AND TECHNOLOGY-AQUA, 2013, 62 (05): : 296 - 308
  • [37] Detection of Drinking Water Quality Using CMAC Based Artificial Neural Networks
    Bucak, Ihsan Omur
    Karlik, Bekir
    EKOLOJI, 2011, 20 (78): : 75 - 81
  • [39] Predict time series with multiple artificial neural networks
    Li, Fei
    Liu, Jin
    Kong, Lei
    International Journal of Hybrid Information Technology, 2016, 9 (07): : 313 - 324
  • [40] Artificial Neural Networks Predict Discharge Pressures of ESPs
    Mahmoud, M.A.
    AbuObida, M.
    Mohammed, O.
    JPT, Journal of Petroleum Technology, 1600, 76 (03): : 61 - 63