通过机器学习解码动态溶剂化结构对电池电解质核磁共振化学位移的竞争效应

IF 15.6 1区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY
Qi You, Yan Sun, Feng Wang, Jun Cheng* and Fujie Tang*, 
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引用次数: 0

摘要

了解电解质的溶剂化结构对于优化可充电电池的电化学性能至关重要,因为它直接影响离子电导率、粘度和电化学稳定性等性能。高度复杂的结构和高浓度电解质中的强相互作用使得光谱方法对其“结构-性质”关系的精确建模和解释更具挑战性。在这项研究中,我们提出了一种基于机器学习的方法来预测LiFSI/DME电解质溶液中的动态7Li NMR化学位移。此外,我们还提供了一个全面的结构分析来解释实验中观察到的化学位移行为,特别是高浓度下7Li化学位移的突变。利用先进的建模技术,我们定量地建立了分子结构和核磁共振谱之间的关系,为溶剂化结构分配提供了关键的见解。我们的研究结果揭示了两种相互竞争的局部溶剂化结构共存,当电解质浓度接近浓缩极限时,它们会发生优势转移,导致实验中7Li核磁共振化学位移的异常逆转。这项工作提供了一个详细的分子水平的理解复杂的溶剂化结构通过核磁共振波谱探测,领导了增强电解质设计的方式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Decoding the Competing Effects of Dynamic Solvation Structures on Nuclear Magnetic Resonance Chemical Shifts of Battery Electrolytes via Machine Learning

Decoding the Competing Effects of Dynamic Solvation Structures on Nuclear Magnetic Resonance Chemical Shifts of Battery Electrolytes via Machine Learning

Understanding the solvation structure of electrolytes is critical for optimizing the electrochemical performance of rechargeable batteries as it directly influences properties such as ionic conductivity, viscosity, and electrochemical stability. The highly complex structures and strong interactions in high-concentration electrolytes make accurate modeling and interpretation of their “structure–property” relationships even more challenging with spectroscopic methods. In this study, we present a machine learning-based approach to predict dynamic 7Li NMR chemical shifts in LiFSI/DME electrolyte solutions. Additionally, we provide a comprehensive structural analysis to interpret the observed chemical shift behavior in experiments, particularly the abrupt changes in 7Li chemical shifts at high concentrations. Using advanced modeling techniques, we quantitatively establish the relationship between the molecular structure and NMR spectrum, offering critical insights into solvation structure assignments. Our findings reveal the coexistence of two competing local solvation structures that shift in dominance as electrolyte concentration approaches the concentrated limit, leading to an anomalous reversal of 7Li NMR chemical shift in the experiment. This work provides a detailed molecular-level understanding of the intricate solvation structures probed by NMR spectroscopy, leading the way for an enhanced electrolyte design.

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来源期刊
CiteScore
24.40
自引率
6.00%
发文量
2398
审稿时长
1.6 months
期刊介绍: The flagship journal of the American Chemical Society, known as the Journal of the American Chemical Society (JACS), has been a prestigious publication since its establishment in 1879. It holds a preeminent position in the field of chemistry and related interdisciplinary sciences. JACS is committed to disseminating cutting-edge research papers, covering a wide range of topics, and encompasses approximately 19,000 pages of Articles, Communications, and Perspectives annually. With a weekly publication frequency, JACS plays a vital role in advancing the field of chemistry by providing essential research.
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