化学
水溶液
溶解度
分离(统计)
化学空间
配体(生物化学)
吞吐量
排名(信息检索)
工艺工程
组合化学
生化工程
人工智能
机器学习
计算机科学
有机化学
药物发现
电信
生物化学
受体
工程类
无线
作者
Bingbing Wang,Zhiyuan Zhang,Yue Dong,Yuqing Qiu,Junyu Ren,Kexin Bi,Xu Ji,Chong Liu,Li Zhou,Yiyang Dai
出处
期刊:Inorganic Chemistry
[American Chemical Society]
日期:2023-08-09
卷期号:62 (33): 13293-13303
被引量:4
标识
DOI:10.1021/acs.inorgchem.3c01564
摘要
The reprocessing of spent nuclear fuel is critical for the sustainability of the nuclear energy industry. However, several key separation processes present challenges in this regard, calling for continuous research into next-generation separation materials. Herein, we propose a high-throughput screening framework to improve efficiency in identifying potential ligands that selectively coordinate metal cations of interest in liquid wastes that considers multiple key chemical characteristics, including aqueous solubility, pKa, and coordination bond length. Machine-learning models were designed for the fast and accurate prediction of these characteristics by using graph convolution and transfer-learning techniques. Suitable ligands for Cs/Sr crystallizing separation were identified through the "computational funnel", and several top-ranking, nontoxic, low-cost ligands were selected for experimental verification.
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