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用于高效去除高铼酸根的吡啶基聚合物的机器学习辅助材料发现

Machine-Learning-Assisted Material Discovery of Pyridine-Based Polymers for Efficient Removal of ReO.

作者信息

Yuan Ling, Guo Haolin, Li Qinyang, Zhang Han, Xu Mujian, Zhang Weiming, Zhang Yanyang, Hua Ming, Lv Lu, Pan Bingcai

机构信息

State Key Laboratory of Pollution Control and Resource Reuse, School of the Environment, Nanjing University, Nanjing 210023, China.

Research Center for Environmental Nanotechnology (ReCENT), Nanjing University, Nanjing 210023, China.

出版信息

Environ Sci Technol. 2024 Aug 12. doi: 10.1021/acs.est.4c03686.

Abstract

Efficient capture of TcO is the focus in nuclear waste management. For laboratory operation, ReO is used as a nonradioactive alternative to TcO to develop high-performance adsorbents for the treatment. However, the traditional design of new adsorbents is primarily driven by the chemical intuition of scientists and experimental methods, which are inefficient. Herein, a machine learning (ML)-assisted material genome approach (MGA) is proposed to precisely design high-efficiency adsorbents. ML models were developed to accurately predict adsorption capacity from adsorbent structures and solvent environment, thus predicting and screening the 2450 virtual pyridine polymers obtained by MGA, and it was found that halogen functionalization can enhance its adsorption efficiency. Two halogenated functional pyridine polymers (F-C-CTF and Cl-C-CTF) predicted by this approach were synthesized that exhibited excellent acid/alkali resistance and selectivity for ReO. The adsorption capacity reached 940.13 (F-C-CTF) and 732.74 mg g (Cl-C-CTF), which were better than those of most reported adsorbents. The adsorption mechanism is comprehensively elucidated by experiment and density functional theory calculation, showing that halogen functionalization can form halogen-bonding interactions with TcO, which further justified the theoretical plausibility of the screening results. Our findings demonstrate that ML-assisted MGA represents a paradigm shift for next-generation adsorbent design.

摘要

高效捕获TcO是核废料管理的重点。对于实验室操作,ReO被用作TcO的非放射性替代品,以开发用于处理的高性能吸附剂。然而,新型吸附剂的传统设计主要由科学家的化学直觉和实验方法驱动,效率低下。在此,提出了一种机器学习(ML)辅助的材料基因组方法(MGA)来精确设计高效吸附剂。开发了ML模型以根据吸附剂结构和溶剂环境准确预测吸附容量,从而预测和筛选通过MGA获得的2450种虚拟吡啶聚合物,发现卤素官能化可以提高其吸附效率。合成了通过该方法预测的两种卤化官能化吡啶聚合物(F-C-CTF和Cl-C-CTF),它们对ReO表现出优异的耐酸碱性能和选择性。吸附容量分别达到940.13(F-C-CTF)和732.74 mg g(Cl-C-CTF),优于大多数报道的吸附剂。通过实验和密度泛函理论计算全面阐明了吸附机理,表明卤素官能化可以与TcO形成卤素键相互作用,这进一步证明了筛选结果的理论合理性。我们的研究结果表明,ML辅助的MGA代表了下一代吸附剂设计的范式转变。

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