石墨烯
膜
氧化物
阳离子聚合
脱水
酒
化学
材料科学
化学工程
纳米技术
有机化学
工程类
生物化学
作者
Longlong Sun,Quan Liu,Zhuolin Liang,Zhonglian Yang,Zhongbiao Zhang
标识
DOI:10.1021/acssuschemeng.4c05255
摘要
Machine learning (ML) plays a pivotal role in material design and performance prediction. However, research in ML related to fabricating two-dimensional (2D) graphene oxide (GO) membranes remains limited, facing challenges due to inherent structural variations and the need for precise modifications. Inspired by biological cells, this study highlights the importance of incorporating cations into GO membranes to enhance ballistic transport and alcohol dehydration performance. Through the exploration of different cations, it is identified that the Ca2+-GO membrane not only stabilizes the membrane structure by hydrogen bonding interactions, but also maximizes the water-capture ability of GO membranes by electrostatic attractions. For the first time, the CatBoost algorithm is employed in conjunction with Monte Carlo-molecular dynamics simulations to quantitatively assess the correlation and feature importance of operating temperature, chemical group, cationic loadings, cationic size, and its charges with membrane performance. A backpropagation ML algorithm is then developed to generate the post-training response for performance prediction with an accuracy above 0.96. Optimal Ca2+-GO performance is predicted at 32.1 mg·g–1 cationic loading, with water separation factors of 5922 and 46,369 for alcohol (C3–C4) dehydration, respectively, and water permeance ranging from 48.5 to 123.6 GPU, nearly 10 times higher than commercial membranes. This theoretical study pioneers an accurate ML algorithm to fabricate the cationic GO membranes, serving as a blueprint for developing high-performance 2D membranes for alcohol dehydration.
科研通智能强力驱动
Strongly Powered by AbleSci AI