Predicting anion diffusion in bentonite using hybrid machine learning model and correlation of physical quantities

被引:4
|
作者
Wu, Tao [1 ,2 ]
Tian, Junlei [1 ]
Shi, Xiaoqiong [1 ]
Li, Zhilong [3 ]
Feng, Jiaxing [3 ]
Feng, Zhengye [1 ]
Li, Qingfeng [3 ]
机构
[1] Huzhou Univ, Sch Engn, Huzhou 313000, Peoples R China
[2] Huzhou Univ, Huzhou Key Lab Environm Funct Mat & Pollut Control, Huzhou 313000, Peoples R China
[3] Huzhou Univ, Sch Sci, Huzhou 313000, Peoples R China
基金
中国国家自然科学基金;
关键词
Machine learning; Effective diffusion coefficient; Through -diffusion experiment; Shapley additive explanations; Partial dependence plot; IONIC-STRENGTH; COMPACTED MONTMORILLONITE; THROUGH-DIFFUSION; RE(VII) DIFFUSION; EDTA COMPLEXES; ADSORPTION; SORPTION; HTO; COEFFICIENTS; TEMPERATURE;
D O I
10.1016/j.scitotenv.2024.174363
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Radionuclide diffusion will be influenced by numerous factors. Establishing a model that can elucidate the internal correlation between mesoscopic diffusion and the microscopic structure of bentonite can enhance the comprehension of radionuclide diffusion mechanisms. In this study, a light gradient boosting machine (LightGBM) was employed to predict the effective diffusion coefficients of HCrO 4- , I- , and CoEDTA 2- in bentonite. The model 's hyperparameters were optimized using the particle swarm optimization (PSO) algorithm. Several correlated physical quantities, such as mesoscopic parameters (total porosity, rock capacity factor, and ion molar conductivity) and microscopic parameters (ionic radius and montmorillonite stacking number) were incorporated to develop a machine learning model that incorporated micro- and meso-scale features. The predictive performance of PSO-LightGBM was verified using diffusion experiments, which investigated the diffusion of HCrO 4- , I- , and CoEDTA 2- at compacted dry densities of 1200 -1800 kg/m 3 using a through-diffusion method. Spearman correlation and Shapley additive explanation analyses revealed that the compacted dry density, ionic diffusion coefficient in water, ionic radius, and total porosity were the top-four influencing factors among the 16 input features. Partial dependence plot analysis elucidated the relationship between the effective diffusion coefficient and each input feature. The analysis results were consistent with the experimental findings, demonstrating the reliability of machine learning. Due to the incorporation of multi-scale features, the PSO-LightGBM model demonstrated enhanced predictive accuracy, linking the microstructure of bentonite to radionuclide diffusion, and providing a comprehensive interpretation of the diffusion mechanism.
引用
收藏
页数:13
相关论文
共 50 条
  • [21] Machine learning model for predicting malaria using clinical information
    Lee, You Won
    Choi, Jae Woo
    Shin, Eun-Hee
    COMPUTERS IN BIOLOGY AND MEDICINE, 2021, 129
  • [22] Machine Learning Model for Predicting Epidemics
    Bokonda, Patrick Loola
    Sidibe, Moussa
    Souissi, Nissrine
    Ouazzani-Touhami, Khadija
    COMPUTERS, 2023, 12 (03)
  • [23] Hybrid Machine Learning Model for Face Recognition Using SVM
    Yadav, Anil Kumar
    Pateriya, R. K.
    Gupta, Nirmal Kumar
    Gupta, Punit
    Saini, Dinesh Kumar
    Alahmadi, Mohammad
    CMC-COMPUTERS MATERIALS & CONTINUA, 2022, 72 (02): : 2697 - 2712
  • [24] Heart Disease Prediction using Hybrid machine Learning Model
    Kavitha, M.
    Gnaneswar, G.
    Dinesh, R.
    Sai, Y. Rohith
    Suraj, R. Sai
    PROCEEDINGS OF THE 6TH INTERNATIONAL CONFERENCE ON INVENTIVE COMPUTATION TECHNOLOGIES (ICICT 2021), 2021, : 1329 - 1333
  • [25] Synthetically predicting the quality index of sinter using machine learning model
    Liu Song
    Lyu Qing
    Liu Xiaojie
    Sun Yanqin
    IRONMAKING & STEELMAKING, 2020, 47 (07) : 828 - 836
  • [26] Predicting and Analyzing Water Quality using Machine Learning: A Comprehensive Model
    Khan, Yafra
    See, Chai Soo
    2016 IEEE LONG ISLAND SYSTEMS, APPLICATIONS AND TECHNOLOGY CONFERENCE (LISAT), 2016,
  • [27] Predicting the recurrence of spontaneous intracerebral hemorrhage using a machine learning model
    Cui, Chaohua
    Lan, Jiaona
    Lao, Zhenxian
    Xia, Tianyu
    Long, Tonghua
    FRONTIERS IN NEUROLOGY, 2024, 15
  • [28] Predicting the Loan Using Machine Learning
    Yamparala, Rajesh
    Saranya, Jonnakuti Raja
    Anusha, Papanaboina
    Pragathi, Saripudi
    Sri, Panguluri Bhavya
    SOFT COMPUTING FOR SECURITY APPLICATIONS, ICSCS 2022, 2023, 1428 : 701 - 712
  • [29] A new hybrid machine learning model for predicting the bitcoin (BTC-USD) price
    Nagula, Pavan Kumar
    Alexakis, Christos
    JOURNAL OF BEHAVIORAL AND EXPERIMENTAL FINANCE, 2022, 36
  • [30] Predicting the compressive strength of high-performance concrete using an interpretable machine learning model
    Zhang, Yushuai
    Ren, Wangjun
    Chen, Yicun
    Mi, Yongtao
    Lei, Jiyong
    Sun, Licheng
    SCIENTIFIC REPORTS, 2024, 14 (01):