TY - JOUR
T1 - ClusterFinder
T2 - a fast tool to find cluster structures from pair distribution function data
AU - Anker, Andy S.
AU - Friis-jensen, Ulrik
AU - Johansen, Frederik L.
AU - Billinge, Simon J. L
AU - Jensen, Kirsten M. Ø.
PY - 2024
Y1 - 2024
N2 - A novel automated high-throughput screening approach, ClusterFinder, is reported for finding candidate structures for atomic pair distribution function (PDF) structural refinements. Finding starting models for PDF refinements is notoriously difficult when the PDF originates from nanoclusters or small nanoparticles. The reported ClusterFinder algorithm can screen 104 to 105 candidate structures from structural databases such as the Inorganic Crystal Structure Database (ICSD) in minutes, using the crystal structures as templates in which it looks for atomic clusters that result in a PDF similar to the target measured PDF. The algorithm returns a rank-ordered list of clusters for further assessment by the user. The algorithm has performed well for simulated and measured PDFs of metal–oxido clusters such as Keggin clusters. This is therefore a powerful approach to finding structural cluster candidates in a modelling campaign for PDFs of nanoparticles and nanoclusters.
AB - A novel automated high-throughput screening approach, ClusterFinder, is reported for finding candidate structures for atomic pair distribution function (PDF) structural refinements. Finding starting models for PDF refinements is notoriously difficult when the PDF originates from nanoclusters or small nanoparticles. The reported ClusterFinder algorithm can screen 104 to 105 candidate structures from structural databases such as the Inorganic Crystal Structure Database (ICSD) in minutes, using the crystal structures as templates in which it looks for atomic clusters that result in a PDF similar to the target measured PDF. The algorithm returns a rank-ordered list of clusters for further assessment by the user. The algorithm has performed well for simulated and measured PDFs of metal–oxido clusters such as Keggin clusters. This is therefore a powerful approach to finding structural cluster candidates in a modelling campaign for PDFs of nanoparticles and nanoclusters.
U2 - 10.1107/S2053273324001116
DO - 10.1107/S2053273324001116
M3 - Journal article
C2 - 38420993
VL - 80
SP - 213
EP - 220
JO - Acta Crystallographica Section A Foundations and Advances
JF - Acta Crystallographica Section A Foundations and Advances
SN - 2053-2733
IS - 2
ER -