Machine-learning approach for local classification of crystalline structures in multiphase systems
C. Dietz, T. Kretz, and M. H. Thoma
Index: 10.1103/PhysRevE.96.011301
Full Text: HTML
Abstract
Machine learning is one of the most popular fields in computer science and has a vast number of applications. In this work we will propose a method that will use a neural network to locally identify crystal structures in a mixed phase Yukawa system consisting of fcc, hcp, and bcc clusters and disordered particles similar to plasma crystals. We compare our approach to already used methods and show that the quality of identification increases significantly. The technique works very well for highly disturbed lattices and shows a flexible and robust way to classify crystalline structures that can be used by only providing particle positions. This leads to insights into highly disturbed crystalline structures.
Latest Articles:
Coupling of lipid membrane elasticity and in-plane dynamics
2017-07-19
[10.1103/PhysRevE.96.012410]
2017-07-19
[10.1103/PhysRevE.96.019901]
Modulated phases in a three-dimensional Maier-Saupe model with competing interactions
2017-07-19
[10.1103/PhysRevE.96.012137]
Ballistic front dynamics after joining two semi-infinite quantum Ising chains
2017-07-19
[10.1103/PhysRevE.96.012138]
Production rate of the system-bath mutual information
2017-07-19
[10.1103/PhysRevE.96.012139]