Deep learning-guided surface characterization for autonomous hydrogen lithography

As the development of atom scale devices transitions from novel, proof-of-concept demonstrations to state-of-the-art commercial applications, automated assembly of such devices must be implemented. Here we present an automation method for the identification of defects prior to atomic fabrication via...

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Veröffentlicht in:Machine learning: science and technology 2020-06, Vol.1 (2), p.25001, Article 025001
Hauptverfasser: Rashidi, Mohammad, Croshaw, Jeremiah, Mastel, Kieran, Tamura, Marcus, Hosseinzadeh, Hedieh, Wolkow, Robert A
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Sprache:eng
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Zusammenfassung:As the development of atom scale devices transitions from novel, proof-of-concept demonstrations to state-of-the-art commercial applications, automated assembly of such devices must be implemented. Here we present an automation method for the identification of defects prior to atomic fabrication via hydrogen lithography using deep learning. We trained a convolutional neural network to locate and differentiate between surface features of the technologically relevant hydrogen-terminated silicon surface imaged using a scanning tunneling microscope. Once the positions and types of surface features are determined, the predefined atomic structures are patterned in a defect-free area. By training the network to differentiate between common defects we are able to avoid charged defects as well as edges of the patterning terraces. Augmentation with previously developed autonomous tip shaping and patterning modules allows for atomic scale lithography with minimal user intervention.
ISSN:2632-2153
2632-2153
DOI:10.1088/2632-2153/ab6d5e