Combining the excellent thermal and electrical properties of Cu with the high
abrasion resistance and thermal stability of W, Cu-W nanoparticle-reinforced
metal matrix composites and nano-multilayers (NMLs) are finding applications as
brazing fillers and shielding material for plasma and radiation. Due to the
large lattice mismatch between fcc Cu and bcc W, these systems have complex
interfaces that are beyond the scales suitable for ab initio methods, thus
motivating the development of chemically accurate interatomic potentials. Here,
a neural network potential (NNP) for Cu-W is developed within the
Behler-Parrinello framework using a curated training dataset that captures
metallurgically-relevant local atomic environments. The Cu-W NNP accurately
predicts (i) the metallurgical properties (elasticity, stacking faults,
dislocations, thermodynamic behavior) in elemental Cu and W, (ii) energies and
structures of Cu-W intermetallics and solid solutions, and (iii) a range of fcc
Cu/bcc W interfaces, and exhibits physically-reasonable behavior for solid
W/liquid Cu systems. As will be demonstrated in forthcoming work, this near-ab
initio-accurate NNP can be applied to understand complex phenomena involving
interface-driven processes and properties in Cu-W composites.Comment: Submitted, yet unpublishe