Modeling of H2S solubility in ionic liquids: comparison of white-box machine learning, deep learning and ensemble learning approaches

被引:0
|
作者
Seyed-Pezhman Mousavi
Reza Nakhaei-Kohani
Saeid Atashrouz
Fahimeh Hadavimoghaddam
Ali Abedi
Abdolhossein Hemmati-Sarapardeh
Ahmad Mohaddespour
机构
[1] Shahid Bahonar University of Kerman,Department of Petroleum Engineering
[2] Shiraz University,Department of Chemical and Petroleum Engineering
[3] Amirkabir University of Technology (Tehran Polytechnic),Department of Chemical Engineering
[4] Northeast Petroleum University,Key Laboratory of Continental Shale Hydrocarbon Accumulation and Efficient Development, Ministry of Education
[5] Ufa State Petroleum Technological University,College of Engineering and Technology
[6] American University of the Middle East,State Key Laboratory of Petroleum Resources and Prospecting
[7] China University of Petroleum (Beijing),Department of Chemical Engineering
[8] McGill University,undefined
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
In the context of gas processing and carbon sequestration, an adequate understanding of the solubility of acid gases in ionic liquids (ILs) under various thermodynamic circumstances is crucial. A poisonous, combustible, and acidic gas that can cause environmental damage is hydrogen sulfide (H2S). ILs are good choices for appropriate solvents in gas separation procedures. In this work, a variety of machine learning techniques, such as white-box machine learning, deep learning, and ensemble learning, were established to determine the solubility of H2S in ILs. The white-box models are group method of data handling (GMDH) and genetic programming (GP), the deep learning approach is deep belief network (DBN) and extreme gradient boosting (XGBoost) was selected as an ensemble approach. The models were established utilizing an extensive database with 1516 data points on the H2S solubility in 37 ILs throughout an extensive pressure and temperature range. Seven input variables, including temperature (T), pressure (P), two critical variables such as temperature (Tc) and pressure (Pc), acentric factor (ω), boiling temperature (Tb), and molecular weight (Mw), were used in these models; the output was the solubility of H2S. The findings show that the XGBoost model, with statistical parameters such as an average absolute percent relative error (AAPRE) of 1.14%, root mean square error (RMSE) of 0.002, standard deviation (SD) of 0.01, and a determination coefficient (R2) of 0.99, provides more precise calculations for H2S solubility in ILs. The sensitivity assessment demonstrated that temperature and pressure had the highest negative and highest positive affect on the H2S solubility in ILs, respectively. The Taylor diagram, cumulative frequency plot, cross-plot, and error bar all demonstrated the high effectiveness, accuracy, and reality of the XGBoost approach for predicting the H2S solubility in various ILs. The leverage analysis shows that the majority of the data points are experimentally reliable and just a small number of data points are found beyond the application domain of the XGBoost paradigm. Beyond these statistical results, some chemical structure effects were evaluated. First, it was shown that the lengthening of the cation alkyl chain enhances the H2S solubility in ILs. As another chemical structure effect, it was shown that higher fluorine content in anion leads to higher solubility in ILs. These phenomena were confirmed by experimental data and the model results. Connecting solubility data to the chemical structure of ILs, the results of this study can further assist to find appropriate ILs for specialized processes (based on the process conditions) as solvents for H2S.
引用
收藏
相关论文
共 50 条
  • [41] Estimating hydrogen sulfide solubility in ionic liquids using a machine learning approach
    Shafiei, Ali
    Ahmadi, Mohammad Ali
    Zaheri, Seyed Hayan
    Baghban, Alireza
    Amirfakhrian, Ali
    Soleimani, Reza
    JOURNAL OF SUPERCRITICAL FLUIDS, 2014, 95 : 525 - 534
  • [42] Comparative Analysis of Machine Learning, Ensemble Learning and Deep Learning Classifiers for Parkinson’s Disease Detection
    Goyal P.
    Rani R.
    SN Computer Science, 5 (1)
  • [43] Predicting the equilibrium solubility of CO2 in alcohols, ketones, and glycol ethers: Application of ensemble learning and deep learning approaches
    Bahmaninia, Hamid
    Shateri, Mohammadhadi
    Atashrouz, Saeid
    Jabbour, Karam
    Hemmati-Sarapardeh, Abdolhossein
    Mohaddespour, Ahmad
    FLUID PHASE EQUILIBRIA, 2023, 567
  • [44] Machine learning models coupled with ionic fragment σ-profiles to predict ammonia solubility in ionic liquids
    Li, Kaikai
    Zhu, Yuesong
    Shi, Sensen
    Song, Yongzheng
    Jiang, Haiyan
    Zhang, Xiaochun
    Zeng, Shaojuan
    Zhang, Xiangping
    Green Chemical Engineering, 2025, 6 (02) : 223 - 232
  • [45] Deep Ensemble learning and quantum machine learning approach for Alzheimer's disease detection
    Belay, Abebech Jenber
    Walle, Yelkal Mulualem
    Haile, Melaku Bitew
    SCIENTIFIC REPORTS, 2024, 14 (01):
  • [46] Modeling lignin extraction with ionic liquids using machine learning approach
    Baran, Karol
    Barczak, Beata
    Kloskowski, Adam
    SCIENCE OF THE TOTAL ENVIRONMENT, 2024, 935
  • [47] Benchmarking machine learning methods for modeling physical properties of ionic liquids
    Baskin, Igor
    Epshtein, Alon
    Ein-Eli, Yair
    Journal of Molecular Liquids, 2022, 351
  • [48] Predictive modeling of antibacterial activity of ionic liquids by machine learning methods
    Makarov, D. M.
    Fadeeva, Yu. A.
    Safonova, E. A.
    Shmukler, L. E.
    COMPUTATIONAL BIOLOGY AND CHEMISTRY, 2022, 101
  • [49] Benchmarking machine learning methods for modeling physical properties of ionic liquids
    Baskin, Igor
    Epshtein, Alon
    Ein-Eli, Yair
    JOURNAL OF MOLECULAR LIQUIDS, 2022, 351
  • [50] White-box Machine learning approaches to identify governing equations for overall dynamics of manufacturing systems: A case study on distillation column
    Subramanian, Renganathan
    Moar, Raghav Rajesh
    Singh, Shweta
    MACHINE LEARNING WITH APPLICATIONS, 2021, 3