Uncertainty quantification of granular computing-neural network model for prediction of pollutant longitudinal dispersion coefficient in aquatic streams

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作者
Behzad Ghiasi
Roohollah Noori
Hossein Sheikhian
Amin Zeynolabedin
Yuanbin Sun
Changhyun Jun
Mohamed Hamouda
Sayed M. Bateni
Soroush Abolfathi
机构
[1] University of Tehran,School of Environment, College of Engineering
[2] University of Tehran,Faculty of Governance
[3] University of Tehran,Department of Geospatial Information Systems, College of Engineering
[4] University of Tehran,School of Civil Engineering, College of Engineering
[5] Hohai University,College of Hydrology and Water Resources
[6] Chung-Ang University,Department of Civil and Environmental Engineering, College of Engineering
[7] United Arab Emirates University,Civil and Environmental Engineering and the National Water Center
[8] University of Hawaii at Manoa,Department of Civil and Environmental Engineering and Water Resources Research Center
[9] University of Warwick,School of Engineering
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摘要
Discharge of pollution loads into natural water systems remains a global challenge that threatens water and food supply, as well as endangering ecosystem services. Natural rehabilitation of contaminated streams is mainly influenced by the longitudinal dispersion coefficient, or the rate of longitudinal dispersion (Dx), a key parameter with large spatiotemporal fluctuations that characterizes pollution transport. The large uncertainty in estimation of Dx in streams limits the water quality assessment in natural streams and design of water quality enhancement strategies. This study develops an artificial intelligence-based predictive model, coupling granular computing and neural network models (GrC-ANN) to provide robust estimation of Dx and its uncertainty for a range of flow-geometric conditions with high spatiotemporal variability. Uncertainty analysis of Dx estimated from the proposed GrC-ANN model was performed by alteration of the training data used to tune the model. Modified bootstrap method was employed to generate different training patterns through resampling from a global database of tracer experiments in streams with 503 datapoints. Comparison between the Dx values estimated by GrC-ANN to those determined from tracer measurements shows the appropriateness and robustness of the proposed method in determining the rate of longitudinal dispersion. The GrC-ANN model with the narrowest bandwidth of estimated uncertainty (bandwidth-factor = 0.56) that brackets the highest percentage of true Dx data (i.e., 100%) is the best model to compute Dx in streams. Considering the significant inherent uncertainty reported in the previous Dx models, the GrC-ANN model developed in this study is shown to have a robust performance for evaluating pollutant mixing (Dx) in turbulent environmental flow systems.
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  • [1] Uncertainty quantification of granular computing-neural network model for prediction of pollutant longitudinal dispersion coefficient in aquatic streams
    Ghiasi, Behzad
    Noori, Roohollah
    Sheikhian, Hossein
    Zeynolabedin, Amin
    Sun, Yuanbin
    Jun, Changhyun
    Hamouda, Mohamed
    Bateni, Sayed M.
    Abolfathi, Soroush
    [J]. SCIENTIFIC REPORTS, 2022, 12 (01)
  • [2] Granular computing-neural network model for prediction of longitudinal dispersion coefficients in rivers
    Ghiasi, Behzad
    Sheikhian, Hossein
    Zeynolabedin, Amin
    Niksokhan, Mohammad Hossein
    [J]. WATER SCIENCE AND TECHNOLOGY, 2019, 80 (10) : 1880 - 1892
  • [3] Predicting longitudinal dispersion coefficient in natural streams by artificial neural network
    Tayfur, G
    Singh, VP
    [J]. JOURNAL OF HYDRAULIC ENGINEERING, 2005, 131 (11) : 991 - 1000
  • [4] A Framework Development for Predicting the Longitudinal Dispersion Coefficient in Natural Streams Using an Artificial Neural Network
    Noori, R.
    Karbassi, A. R.
    Mehdizadeh, H.
    Vesali-Naseh, M.
    Sabahi, M. S.
    [J]. ENVIRONMENTAL PROGRESS & SUSTAINABLE ENERGY, 2011, 30 (03) : 439 - 449
  • [5] Selection of the best coefficient of performance prediction by artificial neural network model considering uncertainty
    Colorado-Garrido, D.
    Escobedo-Trujillo, B. A.
    Cobaxin-Munoz, I.
    Alaffita-Hernandez, F. A.
    Herrera-Romero, J. V.
    [J]. DESALINATION AND WATER TREATMENT, 2017, 92 : 60 - 71
  • [6] Development of a new dynamic smagorinsky model by an artificial neural network for prediction of outdoor airflow and pollutant dispersion
    Dai, Ting
    Liu, Sumei
    Liu, Junjie
    Jiang, Nan
    Chen, Qingyan
    [J]. BUILDING AND ENVIRONMENT, 2023, 243