4.5 Article

ClasSOMfier: A neural network for cluster analysis and detection of lattice defects

Journal

COMPUTATIONAL MATERIALS SCIENCE
Volume 188, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.commatsci.2020.110167

Keywords

Neural network; Kohonen network; Cluster analysis

Funding

  1. Science Foundation Ireland (SFI)
  2. Department for the Economy Northern Ireland [15/IA/3160]

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ClasSOMfier is a software package designed to classify atoms into disconnected groups and detect lattice defects using an unsupervised learning Kohonen network. It accelerates the application of machine learning for cluster analysis with efficient code and a user-friendly interface.
ClasSOMfier is a software package to classify atoms into a given number of disconnected groups (or clusters) and detect lattice defects, such as vacancies, interstitials, dislocations, voids and grain boundaries. Each cluster is formed by atoms whose atomic environment can be described by a common pattern. Unlike many methods available in the literature, where these patterns are given in advance and are associated with known lattice structures (i.e. fcc, bcc or hcp), this code implements a Kohonen network, which is based on unsupervised learning and where no information about the atomic environment has to be given in advance. ClasSOMfier accelerates the application of machine learning for cluster analysis by providing an efficient and fast code in Fortran with a user-friendly interface in Python.

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