|
Iranian Journal of Chemistry and Chemical Engineering، جلد ۴۴، شماره ۵، صفحات ۱۳۵۱-۱۳۶۲
|
|
|
عنوان فارسی |
|
|
چکیده فارسی مقاله |
|
|
کلیدواژههای فارسی مقاله |
|
|
عنوان انگلیسی |
High-Throughput Screening of Hypothetical MOFs for Predicting Xenon Uptake Using Machine Learning Methods |
|
چکیده انگلیسی مقاله |
Xenon (Xe) gas adsorption in Metal-Organic Frameworks (MOFs) is a critical area for noble gas separation due to Xe's scarcity and high market value. Despite its importance, previous studies have largely overlooked the role of diverse Machine Learning (ML) models in predicting gas adsorption behavior under varying pressures. This study aims to fill this gap by developing a comprehensive database of hypothetical MOFs and applying advanced ML frameworks to predict Xe adsorption. Key structural descriptors—Void Fraction, Gravimetric Surface Area, Volumetric Surface Area, Pore Limiting Diameter, and Large Cavity Diameter—were integrated alongside adsorption pressure to enhance predictive accuracy. We trained and evaluated multiple ML models, including Ensemble Learning, Exponential Gaussian Process Regression, Fine Gaussian Support Vector Machines, and Bilayered Neural Networks, based on metrics such as RMSE (0.937 for EGPR), R² (0.83 for EGPR), and processing speed (up to 58,000 observations per second for FGSVM). Our screening identified four optimal MOFs—hMOF-30258, hMOF-30132, hMOF-5001015, and hMOF-30001—with superior Xe adsorption capabilities, featuring pcu and sql topologies that offer high surface area and porosity. These results highlight the potential of ML-driven approaches to revolutionize MOF design, paving the way for efficient noble gas separation technologies. |
|
کلیدواژههای انگلیسی مقاله |
Metal-organic frameworks,Adsorption,Machine Learning,Xenon |
|
نویسندگان مقاله |
Rohollah Ghorbani | School of Chemical Engineering, College of Engineering, University of Tehran, Tehran, I.R. IRAN
Javad Karimi-Sabet | NFCRS, Nuclear Science and Technology Research Institute, Tehran, I.R. IRAN
Minoosh Lalinia | Department of Biomedical Engineering, Science and Research Branch, Islamic Azad University, Tehran, I.R. IRAN
Abolfazl Dastbaz | School of Chemical Engineering, College of Engineering, University of Tehran, Tehran, I.R. IRAN
Mohammad Ali Moosavian | School of Chemical Engineering, College of Engineering, University of Tehran, Tehran, I.R. IRAN
|
|
نشانی اینترنتی |
https://ijcce.ac.ir/article_722666_215016872b3c0ff67d3c086f5511ae39.pdf |
فایل مقاله |
فایلی برای مقاله ذخیره نشده است |
کد مقاله (doi) |
|
زبان مقاله منتشر شده |
en |
موضوعات مقاله منتشر شده |
|
نوع مقاله منتشر شده |
|
|
|
برگشت به:
صفحه اول پایگاه |
نسخه مرتبط |
نشریه مرتبط |
فهرست نشریات
|