膜
聚合
材料科学
单体
透视图(图形)
纳米技术
工作(物理)
二进制数
复合数
界面聚合
基石
密度泛函理论
计算机科学
分而治之算法
光学(聚焦)
深度学习
化学工程
平面的
开发(拓扑)
聚合物
人工智能
纳米结构
作者
Gergő Ignácz,Muhammad Irshad Baig,Karuppasamy Gopalsamy,Andres Villa,Suzana P. Nunes,Bernard Ghanem,Tejus Shastry,Sanat Kumar,György Székely
出处
期刊:Materials horizons
[Royal Society of Chemistry]
日期:2025-01-01
卷期号:12 (21): 9009-9025
被引量:6
摘要
Polymeric thin-film membranes prepared by interfacial polymerization are the cornerstone of liquid separation, with the potential to reduce industrial waste and energy consumption. However, the limited diversity of monomers may hinder further development by restricting the accessible chemical space. To address this, we propose a divide & conquer approach for the interfacial polymerization membrane development pipeline. We constructed a dataset using 18 organic- and 73 water-phase monomers, conducting 1246 interfacial reactions and analyzing membranes via AFM and optical microscopy. This unprecedentedly large and open access dataset marks a considerable step toward data-driven thin-film membrane development. We trained five machine learning models on molecular structures and density functional theory calculations to study film formation parameters and their binary outcomes. The results indicate that film formation can be predicted directly from monomers, facilitating the potential of data-driven membrane development. Our work shifts the focus from performance prediction to the fundamental step of thin-film formation, offering a new perspective in data-driven membrane research.
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