材料科学
化学物理
离子
氧气
氧化物
扩散
分子动力学
离子电导率
离子键合
钛酸锶
快离子导体
纳米技术
电极
物理化学
计算化学
热力学
薄膜
电解质
化学
物理
有机化学
冶金
作者
Kapil Dev Sharma,Hrushikesh M. Gade,Neetu Kumari
标识
DOI:10.1021/acsami.3c19377
摘要
The performance of strontium titanate-based perovskite materials, widely employed as electrode materials for reversible solid oxide cells, is directly characterized by their efficiency and their ability to facilitate the diffusion of generated oxygen ions. A technique frequently employed for enhancing oxygen ion diffusivity involves artificially generating A-site vacancies in these structures. In this study, the molecular-level mechanism of oxygen ion diffusion for a range of A-site deficient structures is extensively investigated using combined molecular dynamics simulations and machine learning-based technique. The analysis of molecular simulation trajectories yields diffusion parameters for the bulk system. Additionally, clustering analysis of time-overlapped locations of oxygen ions provides a spatial distribution of oxygen ion dislocations. Concurrently, tracking the motion of individual oxygen ions elucidates the contribution of each ion to the overall ionic conductance. Overall, the systematic generation of A-site deficiency is found to significantly influence oxygen ion dislocations, thereby impacting the performance of these materials in terms of oxide ion conduction.
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