Structure-mining: screening structure models by automated fitting to the atomic pair distribution function over large numbers of models.
Long YangPavol JuhásMaxwell W TerbanMatthew G TuckerSimon J L BillingePublished in: Acta crystallographica. Section A, Foundations and advances (2020)
A new approach is presented to obtain candidate structures from atomic pair distribution function (PDF) data in a highly automated way. It fetches, from web-based structural databases, all the structures meeting the experimenter's search criteria and performs structure refinements on them without human intervention. It supports both X-ray and neutron PDFs. Tests on various material systems show the effectiveness and robustness of the algorithm in finding the correct atomic crystal structure. It works on crystalline and nanocrystalline materials including complex oxide nanoparticles and nanowires, low-symmetry and locally distorted structures, and complicated doped and magnetic materials. This approach could greatly reduce the traditional structure searching work and enable the possibility of high-throughput real-time auto-analysis PDF experiments in the future.
Keyphrases
- high throughput
- high resolution
- crystal structure
- machine learning
- deep learning
- randomized controlled trial
- endothelial cells
- oxide nanoparticles
- systematic review
- electron microscopy
- room temperature
- electronic health record
- magnetic resonance imaging
- quantum dots
- current status
- highly efficient
- gold nanoparticles
- metal organic framework
- molecularly imprinted