posted on 2022-08-09, 20:00authored byJunhyoung Gil, Takuji Oda
Liquid metals (LMs) have various applications in energy
systems,
such as coolants in advanced nuclear reactors. In addition, room-temperature
LMs are attracting attention as flexible components in robotics and
electronics and as novel chemical reaction media to form low-dimensional
materials. In many of these applications, the capabilities of LMs
can be further enhanced if one can better understand and control the
chemical reactivity of LMs, which is largely affected by the stability
and mobility of solutes in LMs. Here, we propose an automated method
using a machine learning moment tensor potential to efficiently calculate
the solution enthalpy and diffusivity of solutes in LMs. From several
test cases in liquid Na, we demonstrate that the method can achieve
an accuracy comparable to that of a direct calculation using first-principles
molecular dynamics, while significantly reducing the calculation cost
to the order of 1/10 to 1/100. The method is expected to contribute
to the advancement of LM chemistry and the development of new LMs.