Modeling Upscaled Mass Discharge From Complex DNAPL Source Zones Using a Bayesian Neural Network: Prediction Accuracy, Uncertainty Quantification and Source Zone Feature Importance

被引:3
|
作者
Kang, Xueyuan [1 ]
Kokkinaki, Amalia [2 ]
Shi, Xiaoqing [1 ]
Lee, Jonghyun [3 ]
Guo, Zhilin [4 ]
Ni, Lingling [5 ]
Wu, Jichun [1 ]
机构
[1] Nanjing Univ, Sch Earth Sci & Engn, Key Lab Surficial Geochem, Minist Educ, Nanjing, Peoples R China
[2] Univ San Francisco, Dept Environm Sci, San Francisco, CA USA
[3] Univ Hawaii Manoa, Water Resources Res Ctr, Dept Civil & Environm Engn, Honolulu, HI USA
[4] Southern Univ Sci & Technol, Sch Environm Sci & Engn, State Environm Protect Key Lab Integrated Surface, Shenzhen, Peoples R China
[5] Nanjing Hydraul Res Inst, State Key Lab Hydrol Water Resources & Hydraul Eng, Nanjing, Peoples R China
基金
中国国家自然科学基金;
关键词
DNAPL; contaminant mass discharge; upscaled dissolution model; Bayesian neural network; explainable artificial intelligence; NONAQUEOUS-PHASE-LIQUID; CONTAMINANT FLUX; NAPL DISSOLUTION; MULTIPHASE FLOW; FIELD; ARCHITECTURE; REDUCTIONS; SIMULATION; INVERSION; REMOVAL;
D O I
10.1029/2023WR036864
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The mass discharge emanating from dense non-aqueous phase liquid (DNAPL) source zones (SZs) is often used as a key metric for risk assessment. To predict the temporal evolution of mass discharge, upscaled models have been developed to approximate the relationship between the depletion of SZ and the mass discharge. A significant challenge stems from the choice of the SZ parameterization, so that a limited number of domain-averaged SZ metrics can suffice as an input and accurately predict the complex mass-discharge behavior. Moreover, existing deterministic upscaled models cannot quantify prediction uncertainty stemming from modeling parameterization. To address these challenges, we propose a method based on a Bayesian Neural Network (BNN) which learns the non-linear relationship between SZ metrics and mass discharge from multiphase-modeling training data. The proposed BNN-based upscaled model allows uncertainty quantification since it treats trainable parameters as distributions, and does not require a manual parameterization of the SZ a-priori. Instead, the BNN model chooses three physically meaningful SZ quantities related to mass discharge as input features. Then, we use the expected gradients method to identify the feature importance for mass-discharge prediction. We evaluated the proposed model on laboratory-scale DNAPL dissolution experiments. The results show that the BNN model accurately reproduces the multistage mass-discharge profiles with fewer parameters than existing upscaled models. Feature importance analysis shows that all chosen features are important and sufficient to reproduce complex mass discharge. This model provides accurate mass-discharge predictions and uncertainty estimation, therefore holds a great potential for probabilistic risk assessments and decision-making. We demonstrate a predictive Bayesian Neural Network (BNN) upscaled model for contaminant mass discharge from heterogeneous dense non-aqueous phase liquid (DNAPL) source zones (SZs) The proposed model accurately captures complex multistage discharge and provides uncertainty bounds for its predictions The results highlight the importance of a minimum set of SZ features and parameterization required for accurate mass discharge prediction
引用
收藏
页数:24
相关论文
共 3 条
  • [1] Comparison of upscaled models for multistage mass discharge from DNAPL source zones
    Kokkinaki, A.
    Werth, C. J.
    Sleep, B. E.
    WATER RESOURCES RESEARCH, 2014, 50 (04) : 3187 - 3205
  • [2] Estimating mass discharge from dense nonaqueous phase liquid source zones using upscaled mass transfer coefficients: An evaluation using multiphase numerical simulations
    Christ, John A.
    Ramsburg, C. Andrew
    Pennell, Kurt D.
    Abriola, Linda M.
    WATER RESOURCES RESEARCH, 2006, 42 (11)
  • [3] Feature Importance Analysis for Local Climate Zone Classification Using a Residual Convolutional Neural Network with Multi-Source Datasets
    Qiu, Chunping
    Schmitt, Michael
    Mou, Lichao
    Ghamisi, Pedram
    Zhu, Xiao Xiang
    REMOTE SENSING, 2018, 10 (10)