High Throughput calculations and machine learning modeling of $^{17}\text{O}$ NMR in non-magnetic oxides

IF 3.3 3区 化学 Q2 CHEMISTRY, PHYSICAL Faraday Discussions Pub Date : 2024-07-01 DOI:10.1039/d4fd00128a
Zhiyuan Li, Bo Zhao, Hongbin Zhang, Yixuan Zhang
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Abstract

The only NMR active oxygen isotope, Oxygen-17($^{17}\text{O}$ ), serves as a sensitive probe due to its large chemical shift range, the electric field gradient at the oxygen site, and the quadrupolar interaction. Consequently, $^{17}\text{O}$ solid-state NMR offers unique insights into local structures and finds significant applications in the study of disorder, reactivity, and host-guest chemistry. Despite recent advances in sensitivity enhancement, isotopic labeling, and NMR crystallography, the application of $^{17}\text{O}$ solid-state NMR is still hindered by low natural abundance, costly enrichment, and challenges in handling spectrum signals. Density functional theory calculations and machine learning techniques offer an alternative approach to mapping the local crystal structures to NMR parameters. However, the lack of high-quality data remains a challenge, despite the establishment of some datasets. In this study, we implement and execute a high-throughput workflow combining AiiDA and Castep to evaluate the NMR parameters. Focusing on non-magnetic oxides, we have collected over 7100 binary, ternary, and quaternary compounds from the Materials Project and performed calculations. Furthermore, using various descriptors for the local crystalline environments, we model the $^{17}\text{O}$ NMR using machine learning techniques, further enhancing our ability to predict and understand $^{17}\text{O}$ NMR parameters in oxide crystals.
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非磁性氧化物中 $^{17}\text{O}$ NMR 的高通量计算和机器学习建模
唯一具有核磁共振活性的氧同位素氧-17($^{17}\text{O}$)因其化学位移范围大、氧位点的电场梯度以及四极相互作用而成为灵敏的探针。因此,$^{17}text{O}$ 固态核磁共振能提供对局部结构的独特见解,并在无序、反应性和主-客体化学研究中得到重要应用。尽管最近在灵敏度增强、同位素标记和 NMR 晶体学方面取得了进展,但 $^{17}\text{O}$ 固态 NMR 的应用仍然受到天然丰度低、富集成本高以及处理频谱信号的挑战等因素的阻碍。密度泛函理论计算和机器学习技术为将局部晶体结构映射到 NMR 参数提供了另一种方法。然而,尽管建立了一些数据集,但高质量数据的缺乏仍然是一个挑战。在本研究中,我们实施并执行了结合 AiiDA 和 Castep 的高通量工作流程,以评估核磁共振参数。以非磁性氧化物为重点,我们从材料项目中收集了 7100 多种二元、三元和四元化合物,并进行了计算。此外,我们使用各种局部晶体环境描述符,利用机器学习技术建立了 $^{17}\text{O}$ NMR 模型,进一步提高了我们预测和理解氧化物晶体中 $^{17}\text{O}$ NMR 参数的能力。
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Faraday Discussions
Faraday Discussions 化学-物理化学
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期刊介绍: Discussion summary and research papers from discussion meetings that focus on rapidly developing areas of physical chemistry and its interfaces
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