概化理论
化学
人工智能
沸石
过程(计算)
适用范围
机器学习
亚稳态
钥匙(锁)
领域(数学分析)
人工神经网络
生化工程
结晶
纳米技术
生物系统
金属有机骨架
监督学习
深度学习
领域知识
计算机科学
作者
Yì Wáng,Yaqi Fan,Wan Zheng,Xiangxiang Shen,Xinyue Zhao,Ziwen Niu,Xintong Li,Xianchen Gong,Jingang Jiang,Yun Ling,Yanping Luo,Yejun Guan,Xian Wei,Hui Xu,Yanhang Ma,He Xiao,Weimin Yang,Peng Wu
摘要
Zeolite crystallization is a metastable process under harsh conditions with poorly understood mechanisms, making the directed synthesis of specific frameworks challenging. Organic structure-directing agents (OSDAs) are key to framework control, but their discovery remains dominated by trial-and-error screening. Here, we develop a domain knowledge-informed machine learning model to predict OSDAs, which enables the successful synthesis of three novel zeolites, namely, ECNU-30, ECNU-34, and ECNU-40 (named after East China Normal University), validating the efficacy of the model. Traditional descriptor-based machine learning models exhibit limited predictive performance in screening OSDAs for unknown zeolite frameworks. Combining an end-to-end architecture with active learning, the ECNU-Zeoformer effectively overcomes this limitation, enabling more accurate prediction of OSDA-zeolite binding energies for selecting suitable OSDAs and superior generalizability to different framework topologies.
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