Predicting absolute adsorption of CO2 on Jurassic shale using machine learning

被引:0
|
作者
机构
[1] [1,2,Zeng, Changhui
[2] 1,Kalam, Shams
[3] Zhang, Haiyang
[4] Wang, Lei
[5] Luo, Yi
[6] Wang, Haizhu
[7] 2,Mu, Zongjie
[8] Arif, Muhammad
基金
中国国家自然科学基金;
关键词
Shale - Support vector regression;
D O I
10.1016/j.fuel.2024.133050
中图分类号
学科分类号
摘要
The injection of carbon dioxide (CO2) into shales has the potential for enhancing shale gas production as well as CO2 storage within shale repository. The key mechanism for CO2 storage in shales is the adsorption of CO2 in organic-rich pores and partly in clay minerals. While adsorption of CO2 in shales has been extensively studied via laboratory experiments and molecular simulations, robust methods of accurate predictions of CO2 adsorption in shales are still lacking. This paper proposes a novel method based on machine learning to predict the adsorption behavior of CO2 in shales. A total of 194 datasets of pure CO2 adsorption in shales were collected from the literature. The dataset was trained and validated using the random forest regression (RF), support vector regression (SVR), XGBoost, and multilayer perceptron (MLP) models. The input variables of the predictive models include pressure, temperature, total organic carbon (TOC), and inorganic minerals e.g., quartz, feldspar, illite, kaolinite, and pyrite, while the corresponding output variable is the absolute adsorption of CO2. The SVR model achieved an R2 value of 0.9998 and had the lowest MSE (0.0026), RMSE (0.0510), and MAE (0.0217) using the training dataset. The predictive accuracy of these models, ranked from high to low, is SVR > MLP > XGBoost > RF. Adsorption isotherm modeling was also conducted and compared with the proposed SVR model. The Dubinin-Astakhov adsorption isotherm provided the best fit for all shale samples. Predictions from the SVR model were found comparable to those from the Dubinin-Astakhov adsorption model. The developed SVR model significantly reduces time compared to time-consuming laboratory experiments to accurately predict CO2 adsorption on shales. The proposed SVR model can be conveniently updated for broader applications as additional data becomes available. © 2024 The Author(s)
引用
收藏
相关论文
共 50 条
  • [21] Modeling and predicting city-level CO2 emissions using open access data and machine learning
    Ying Li
    Yanwei Sun
    Environmental Science and Pollution Research, 2021, 28 : 19260 - 19271
  • [22] Comparison of the Absolute Adsorption of CH4, n-C4H10, and CO2 on Shale
    Wang, Chen
    Liu, Yueliang
    Gao, Yuan
    ENERGY & FUELS, 2020, 34 (04) : 4466 - 4473
  • [23] Accurate prediction of miscibility of CO2 and supercritical CO2 in ionic liquids using machine learning
    Mesbah, Mohammad
    Shahsavari, Shohreh
    Soroush, Ebrahim
    Rahaei, Neda
    Rezakazemi, Mashallah
    JOURNAL OF CO2 UTILIZATION, 2018, 25 : 99 - 107
  • [24] Investigation of adsorption kinetics of CH4 and CO2 on shale exposure to supercritical CO2
    Qin, Chao
    Jiang, Yongdong
    Zuo, Shuangying
    Chen, Shiwan
    Xiao, Siyou
    Liu, Zhengjie
    ENERGY, 2021, 236
  • [25] Lattice Boltzmann prediction of CO2 and CH4 competitive adsorption in shale porous media accelerated by machine learning for CO2 sequestration and enhanced CH4 recovery
    Wang, Han
    Zhang, Mingshan
    Xia, Xuanzhe
    Tian, Zhenhua
    Qin, Xiangjie
    Cai, Jianchao
    APPLIED ENERGY, 2024, 370
  • [26] Prediction of CO2 adsorption of biochar under KOH activation via machine learning
    Zhang, Junjie
    Zhang, Xiong
    Li, Xiaoqiang
    Song, Zhantao
    Shao, Jingai
    Zhang, Shihong
    Yang, Haiping
    Chen, Hanping
    CARBON CAPTURE SCIENCE & TECHNOLOGY, 2024, 13
  • [27] A Machine Learning Model for Adsorption Energies of Chemical Species Applied to CO2 Electroreduction
    Amaral, Paulo H. R.
    Torrez-Baptista, Alvaro D.
    Dionisio, Dawany
    Lopes, Thiago
    Meneghini, Julio R.
    Miranda, Caetano R.
    JOURNAL OF THE ELECTROCHEMICAL SOCIETY, 2022, 169 (11)
  • [28] Influence of Supercritical CO2 Exposure on CH4 and CO2 Adsorption Behaviors of Shale: Implications for CO2 Sequestration
    Zhou, Junping
    Xie, Shuang
    Jiang, Yongdong
    Xian, Xuefu
    Liu, Qili
    Lu, Zhaohui
    Lyu, Qiao
    ENERGY & FUELS, 2018, 32 (05) : 6073 - 6089
  • [29] Robust Machine Learning Models for Predicting High CO2 Working Capacity and CO2/H2 Selectivity of Gas Adsorption in Metal Organic Frameworks for Precombustion Carbon Capture
    Dureckova, Hana
    Krykunov, Mykhaylo
    Aghaji, Mohammad Zein
    Woo, Tom K.
    JOURNAL OF PHYSICAL CHEMISTRY C, 2019, 123 (07): : 4133 - 4139
  • [30] Estimation of transport CO2 emissions using machine learning algorithm
    Li, Shengwei
    Tong, Zeping
    Haroon, Muhammad
    TRANSPORTATION RESEARCH PART D-TRANSPORT AND ENVIRONMENT, 2024, 133