Pattern recognition of messily grown nanowire morphologies applying multi-layer connected self-organized feature maps

Qing Liu, Hejun Li, Yulei Zhang, Zhigang Zhao

Research output: Contribution to journalArticlepeer-review

4 Scopus citations

Abstract

Multi-layer connected self-organizing feature maps (SOFMs) and the associated learning procedure were proposed to achieve efficient recognition and clustering of messily grown nanowire morphologies. The network is made up by several paratactic 2-D SOFMs with inter-layer connections. By means of Monte Carlo simulations, virtual morphologies were generated to be the training samples. With the unsupervised inner-layer and inter-layer learning, the neural network can cluster different morphologies of messily grown nanowires and build connections between the morphological microstructure and geometrical features of nanowires within. Then, the as-proposed networks were applied on recognitions and quantitative estimations of the experimental morphologies. Results show that the as-trained SOFMs are able to cluster the morphologies and recognize the average length and quantity of the messily grown nanowires within. The inter-layer connections between winning neurons on each competitive layer have significant influence on the relations between the microstructure of the morphology and physical parameters of the nanowires within.

Original languageEnglish
Pages (from-to)946-956
Number of pages11
JournalJournal of Materials Science and Technology
Volume35
Issue number5
DOIs
StatePublished - May 2019

Keywords

  • Artificial neural networks
  • Messily grown nanowire morphologies
  • Monte Carlo simulation
  • Pattern recognition
  • Self-organizing feature maps

Fingerprint

Dive into the research topics of 'Pattern recognition of messily grown nanowire morphologies applying multi-layer connected self-organized feature maps'. Together they form a unique fingerprint.

Cite this