An Integrated Bayesian and Machine Learning Approach Application to Identification of Groundwater Contamination Source Parameters

被引:8
作者
An, Yongkai [1 ,2 ]
Zhang, Yanxiang [3 ]
Yan, Xueman [4 ]
机构
[1] Changan Univ, Key Lab Subsurface Hydrol & Ecol Effects Arid Reg, Minist Educ, 126 Yanta Rd, Xian 710054, Peoples R China
[2] Changan Univ, Sch Water & Environm, 126 Yanta Rd, Xian 710054, Peoples R China
[3] Power China Northwest Engn Corp Ltd, Xian 710065, Peoples R China
[4] Northwest Univ, Coll Urban & Environm Sci, Xian 710027, Peoples R China
基金
中国博士后科学基金; 中国国家自然科学基金;
关键词
groundwater contamination source identification; Bayesian; Markov Chain Monte Carlo; surrogate model; multi-layer perceptron; MONTE-CARLO-SIMULATION; MONITORING NETWORK DESIGN; RELEASE HISTORY; OPTIMIZATION APPROACH; MODEL; UNCERTAINTY; REGRESSION;
D O I
10.3390/w14152447
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The identification of groundwater contamination source parameters is an important prerequisite for the control and risk assessment of groundwater contamination. This study developed an innovative approach for the optimal design of observation well locations and the high-precision identification of groundwater contamination source parameters. The approach involves Bayesian theory and integrates Markov Chain Monte Carlo, Bayesian design, information entropy, machine learning, and surrogate modeling. The optimal observation well locations are determined by information entropy, which is adopted to mine valuable information about unknown groundwater contamination source parameters from measurements of contaminant concentration according to Bayesian design. After determining the optimal observation well locations, the identification of groundwater contamination source parameters is implemented through a Bayesian-based Differential Evolution Adaptive Metropolis with Discrete Sampling-Markov Chain Monte Carlo approach. However, the processes of both determination and identification are time-consuming because the original simulation model (that is, the contaminant transport model) needs to be invoked multiple times. To overcome this challenge, a machine learning approach, that is, Multi-layer Perceptron, is used to build a surrogate model for the original simulation model, which can greatly accelerate the determination and identification processes. Finally, two hypothetical numerical case studies involving homogeneous and heterogeneous cases are used to verify the performance of the proposed approach. The results show that the optimal design of observation well locations and high-precision identification of groundwater contamination source parameters can be implemented accurately and effectively by using the proposed approach. In summary, this study highlights that the integrated Bayesian and machine learning approach provides a promising solution for high-precision identification of groundwater contamination source parameters.
引用
收藏
页数:15
相关论文
共 50 条
[21]   Groundwater Contamination Site Identification Based on Machine Learning: A Case Study of Gas Stations in China [J].
Huang, Yanpeng ;
Ding, Longzhen ;
Liu, Weijiang ;
Niu, Haobo ;
Yang, Mengxi ;
Lyu, Guangfeng ;
Lin, Sijie ;
Hu, Qing .
WATER, 2023, 15 (07)
[22]   Groundwater contamination sources identification based on kernel extreme learning machine and its effect due to wavelet denoising technique [J].
Li, Jiuhui ;
Lu, Wenxi ;
Wang, Han ;
Bai, Yukun ;
Fan, Yue .
ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH, 2020, 27 (27) :34107-34120
[23]   Groundwater Contamination Source Recognition Based on a Two-Stage Inversion Framework with a Deep Learning Surrogate [J].
Wang, Zibo ;
Lu, Wenxi .
WATER, 2024, 16 (13)
[24]   Bayesian identification of oil spill source parameters from image contours [J].
El Mohtar, Samah ;
Ait-El-Fquih, Boujemaa ;
Knio, Omar ;
Lakkis, Issam ;
Hoteit, Ibrahim .
MARINE POLLUTION BULLETIN, 2021, 169
[25]   Simultaneous identification of groundwater contaminant source and hydraulic parameters based on multilayer perceptron and flying foxes optimization [J].
Li, Yidan ;
Lu, Wenxi ;
Pan, Zidong ;
Wang, Zibo ;
Dong, Guangqi .
ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH, 2023, 30 (32) :78933-78947
[26]   A hybrid simulation-optimization approach for solving the areal groundwater pollution source identification problems [J].
Ayvaz, M. Tamer .
JOURNAL OF HYDROLOGY, 2016, 538 :161-176
[27]   An adaptive Gaussian process-based method for efficient Bayesian experimental design in groundwater contaminant source identification problems [J].
Zhang, Jiangjiang ;
Li, Weixuan ;
Zeng, Lingzao ;
Wu, Laosheng .
WATER RESOURCES RESEARCH, 2016, 52 (08) :5971-5984
[28]   Comparative study of surrogate models for groundwater contamination source identification at DNAPL-contaminated sites [J].
Hou, Zeyu ;
Lu, Wenxi .
HYDROGEOLOGY JOURNAL, 2018, 26 (03) :923-932
[29]   Identification of light nonaqueous phase liquid groundwater contamination source based on empirical mode decomposition and deep learning [J].
Li, Jiuhui ;
Wu, Zhengfang ;
He, Hongshi ;
Lu, Wenxi .
ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH, 2023, 30 (13) :38663-38682
[30]   Simultaneous identification of groundwater contamination source and aquifer parameters with a new weighted–average wavelet variable–threshold denoising method [J].
Han Wang ;
Wenxi Lu ;
Zhenbo Chang .
Environmental Science and Pollution Research, 2021, 28 :38292-38307