电解质
溶解
离子
电池(电)
谱线
化学
材料科学
分析化学(期刊)
核磁共振
电极
物理化学
色谱法
物理
有机化学
功率(物理)
量子力学
天文
作者
Chloé Gioiosa,Ekaterina V. Pokochueva,James Tolchard,Charlotte Bocquelet,Mohamed Ayman Ennachet,Nghia Huu Le,Laurent Veyre,Anne Lesage,Ségolène Laage,Simon Pondaven,Sami Jannin
标识
DOI:10.26434/chemrxiv-2024-8gvxg
摘要
Dissolution Dynamic Nuclear Polarization (dDNP) is a powerful hyperpolarization technique enabling sensitivity gains beyond four orders of magnitude in solution nuclear magnetic resonance (NMR). Over the last decades, researchers’ efforts have led to an extension of dDNP applications in fields such as imaging, metabolomics, and drug discovery. Lithium-ion batteries are one of the most widespread types of rechargeable batteries, which calls for a deeper understanding of the various physicochemical mechanisms involved in making them more efficient, safe, and sustainable. One of the key challenges lies in better understanding and limiting the degradation of the battery electrolyte, which can significantly impact the battery’s performance. While NMR has been used in attempts to understand these mechanisms, notably by investigating the degradation products, the intrinsic lack of sensitivity of this technique, combined with the limited accessible volume of such compounds, makes its application often challenging. In this work, we combine several state-of-the-art dDNP methodologies to acquire with high sensitivity solution 13C NMR spectra of battery electrolytes. We show that we can successfully detect hyperpolarized 13C signals on formulated battery electrolyte solutions on a 600 MHz spectrometer with sensitivity gains of up to 3 orders of magnitude. This work paves the way for studying lithium-ion battery electrolyte degradation under real usage conditions (cycling, thermal aging, air exposure…) with a 13C detection limit below the micromolar range. This methodology has the potential to provide new insights into degradation mechanisms and the role and effectiveness of additives to mitigate electrolyte degradation.
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