Monte Carlo simulation of diffusion and ionic conductivity in a simple cubic random alloy via the interstitialcy mechanism.

J Phys Condens Matter

Institut für Materialphysik, University of Münster, Wilhelm-Klemm-Str. 10, 48149 Münster, Germany.

Published: December 2015

This Monte Carlo study deals with mass and charge transport in binary ionic alloys governed by interstitialcy defects acting as diffusion vehicles. In particular, we calculate tracer correlation factors f(A) and f(B) in a simple cubic random alloy AB for diffusion via the collinear interstitialcy mechanism as a function of composition and jump frequency ratio wA/wB. [corrected]. Interstitialcy correlation factors f(I), which play a crucial role in the interpretation of ion-conductivity data, are also determined. The evaluation of partial correlation factors provides insight into the types of jumps that mostly contribute to the different transport processes under consideration. Examination of the percolation behaviour yields the site-percolation threshold of the mobile component B for w(A) = 0. Surprisingly, a unique second-order threshold composition is found, which relates to the abundance of different interstitialcy jump types when wA << wB [corrected]. Both numerically obtained threshold values are accurately reproduced by estimated analytical expressions based on simple arguments. Practical implications of the simulation results are explored by calculating tracer diffusivity ratios D*(A)/D*(B) and by comparing self-diffusion with ionic conductivity using the Nernst-Einstein equation.

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http://dx.doi.org/10.1088/0953-8984/27/50/505401DOI Listing

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