Shayestehpour Omid, Zahn Stefan
Leibniz Institute of Surface Engineering, 04318 Leipzig, Germany.
J Chem Phys. 2024 Oct 7;161(13). doi: 10.1063/5.0232631.
Deep eutectic solvents have recently gained significant attention as versatile and inexpensive materials with many desirable properties and a wide range of applications. In particular, their characteristics, similar to those of ionic liquids, make them a promising class of liquid electrolytes for electrochemical applications. In this study, we utilized a local equivariant neural network interatomic potential model to study a series of deep eutectic electrolytes based on lithium bis(trifluoromethanesulfonyl)imide (LiTFSI) using molecular dynamics (MD) simulations. The use of equivariant features combined with strict locality results in highly accurate, data-efficient, and scalable interatomic potentials, enabling large-scale MD simulations of these liquids with first-principles accuracy. Comparing the structure of the liquids to the reported results from classical force field (FF) simulations indicates that ion-ion interactions are not accurately characterized by FFs. Furthermore, close contacts between lithium ions, bridged by oxygen atoms of two amide molecules, are observed. The computed cationic transport numbers (t+) and the estimated ratios of Li+-amide lifetime (τLi-amide) to the amide's rotational relaxation time (τR), combined with the ionic conductivity trend, suggest a more structural Li+ transport mechanism in the LiTFSI:urea mixture through the exchange of amide molecules. However, a vehicular mechanism could have a larger contribution to Li+ ion transport in the LiTFSI:N-methylacetamide electrolyte. Moreover, comparable diffusivities of Li+ cation and TFSI- anion and a τLi-amide/τR close to unity indicate that vehicular and solvent-exchange mechanisms have rather equal contributions to Li+ ion transport in the LiTFSI:acetamide system.
深共熔溶剂作为一种多功能且廉价的材料,具有许多理想的特性和广泛的应用,近年来受到了广泛关注。特别是,它们与离子液体相似的特性使其成为一类有前途的用于电化学应用的液体电解质。在本研究中,我们利用局部等变神经网络原子间势模型,通过分子动力学(MD)模拟研究了一系列基于双(三氟甲烷磺酰)亚胺锂(LiTFSI)的深共熔电解质。等变特征与严格局部性的结合产生了高度准确、数据高效且可扩展的原子间势,能够以第一性原理精度对这些液体进行大规模MD模拟。将这些液体的结构与经典力场(FF)模拟报告的结果进行比较表明,FF不能准确表征离子-离子相互作用。此外,还观察到锂离子之间通过两个酰胺分子的氧原子桥连形成的紧密接触。计算得到的阳离子迁移数(t+)以及Li+-酰胺寿命(τLi-酰胺)与酰胺旋转弛豫时间(τR)的估计比值,结合离子电导率趋势,表明在LiTFSI:尿素混合物中,Li+通过酰胺分子的交换存在一种更具结构性的传输机制。然而,在LiTFSI:N-甲基乙酰胺电解质中,载体机制可能对Li+离子传输有更大贡献。此外,Li+阳离子和TFSI-阴离子具有相当的扩散率,且τLi-酰胺/τR接近1,这表明在LiTFSI:乙酰胺体系中,载体和溶剂交换机制对Li+离子传输的贡献相当。