成核
铁电性
钛酸钡
材料科学
位错
凝聚态物理
极化(电化学)
电场
分子动力学
电介质
化学物理
物理
复合材料
化学
计算化学
热力学
光电子学
物理化学
量子力学
作者
Genki Deguchi,Ryo Kobayashi,Hikaru Azuma,Shūji Ogata,Masayuki Uranagase,Samuele Spreafico
标识
DOI:10.1002/pssr.202300292
摘要
Barium titanate (BaTiO 3 ) is a ferroelectric material without toxic elements, whose ferroelectric properties such as permittivity, coercive field, and spontaneous polarization are affected by the nucleation of domains of reversed polarization and the motion of domain walls. Dislocations can act as obstacles to domain‐wall migration or as active sites for domain nucleation. Thus, studies are conducted on the utilization of dislocations to improve the ferroelectric properties of BaTiO 3 . However, the atomistic mechanism of domain nucleation around the dislocation core is still unclear. In this article, a machine learning (ML) potential is developed to study the influence of dislocations on domain nucleation. The potential is trained using an active‐learning approach to ensure accuracy in the bulk properties of the ferroelectric and paraelectric phases, as well as in the dislocation core structures in BaTiO 3 . Molecular dynamics simulations using the ML potential show that the influence of dislocations on polarization reversal depends on the directional relationship between the external electric field and the dislocation. Furthermore, strong local polarizations exist surrounding the dislocation core, owing to vacancies in the core. These polarizations can act as both domain nucleation sites and obstacles for domain migration when ordered along the dislocation line.
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