| Literature DB >> 29790333 |
Mohammad Rashidi1,2, Robert A Wolkow1,2,3.
Abstract
Atomic-scale characterization and manipulation with scanning probe microscopy rely upon the use of an atomically sharp probe. Here we present automated methods based on machine learning to automatically detect and recondition the quality of the probe of a scanning tunneling microscope. As a model system, we employ these techniques on the technologically relevant hydrogen-terminated silicon surface, training the network to recognize abnormalities in the appearance of surface dangling bonds. Of the machine learning methods tested, a convolutional neural network yielded the greatest accuracy, achieving a positive identification of degraded tips in 97% of the test cases. By using multiple points of comparison and majority voting, the accuracy of the method is improved beyond 99%.Entities:
Keywords: convolutional neural network; hydrogen terminated silicon; in situ tip conditioning; machine learning; scanning probe microscopy; surface dangling bonds
Year: 2018 PMID: 29790333 DOI: 10.1021/acsnano.8b02208
Source DB: PubMed Journal: ACS Nano ISSN: 1936-0851 Impact factor: 15.881