Cluster-mining: an approach for determining core structures of metallic nanoparticles from atomic pair distribution function data

Acta Crystallogr A Found Adv. 2020 Jan 1;76(Pt 1):24-31. doi: 10.1107/S2053273319013214. Epub 2020 Jan 1.

Abstract

A novel approach for finding and evaluating structural models of small metallic nanoparticles is presented. Rather than fitting a single model with many degrees of freedom, libraries of clusters from multiple structural motifs are built algorithmically and individually refined against experimental pair distribution functions. Each cluster fit is highly constrained. The approach, called cluster-mining, returns all candidate structure models that are consistent with the data as measured by a goodness of fit. It is highly automated, easy to use, and yields models that are more physically realistic and result in better agreement to the data than models based on cubic close-packed crystallographic cores, often reported in the literature for metallic nanoparticles.

Keywords: clusters; data mining; nanoparticles; pair distribution functions; screening; structural models.