4.6 Article

Implanted neural network potentials: Application to Li-Si alloys

Journal

PHYSICAL REVIEW B
Volume 97, Issue 9, Pages -

Publisher

AMER PHYSICAL SOC
DOI: 10.1103/PhysRevB.97.094106

Keywords

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Funding

  1. US Army Research Laboratory through the Collaborative Research Alliance (CRA) for Multiscale Multidisciplinary Modeling of Electronic Materials (MSME)
  2. Scientific and Technological Research Council of Turkey [TUBITAK-2219]
  3. National Science Foundation (NSF) [ACI-1548562]
  4. NSF [TG-DMR120073, TGPHY120021]

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Modeling the behavior of materials composed of elements with different bonding and electronic structure character for large spatial and temporal scales and over a large compositional range is a challenging problem. Cases in point are amorphous alloys of Si, a prototypical covalent material, and Li, a prototypical metal, which are being considered as anodes for high-energy-density batteries. To address this challenge, we develop a methodology based on neural networks that extends the conventional training approach to incorporate pre-trained parts that capture the character of different components, into the overall network; we refer to this model as the implanted neural network method. We show that this approach works well for the Si-Li amorphous alloys for a wide range of compositions, giving good results for key quantities like the diffusion coefficients. The method is readily generalizable to more complicated situations that involve two or more different elements.

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