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Dynamics of growing carbon nanotube interfaces probed by machine learning-enabled molecular simulations

Author(s)
Hedman, DanielMcLean, BenBichara, ChristopheMaruyama, ShigeoLarsson, J. AndreasDing, Feng
Issued Date
2024-05
DOI
10.1038/s41467-024-47999-7
URI
https://scholarworks.unist.ac.kr/handle/201301/82794
Citation
NATURE COMMUNICATIONS, v.15, no.1, pp.4076
Abstract
Carbon nanotubes (CNTs), hollow cylinders of carbon, hold great promise for advanced technologies, provided their structure remains uniform throughout their length. Their growth takes place at high temperatures across a tube-catalyst interface. Structural defects formed during growth alter CNT properties. These defects are believed to form and heal at the tube-catalyst interface but an understanding of these mechanisms at the atomic-level is lacking. Here we present DeepCNT-22, a machine learning force field (MLFF) to drive molecular dynamics simulations through which we unveil the mechanisms of CNT formation, from nucleation to growth including defect formation and healing. We find the tube-catalyst interface to be highly dynamic, with large fluctuations in the chiral structure of the CNT-edge. This does not support continuous spiral growth as a general mechanism, instead, at these growth conditions, the growing tube edge exhibits significant configurational entropy. We demonstrate that defects form stochastically at the tube-catalyst interface, but under low growth rates and high temperatures, these heal before becoming incorporated in the tube wall, allowing CNTs to grow defect-free to seemingly unlimited lengths. These insights, not readily available through experiments, demonstrate the remarkable power of MLFF-driven simulations and fill long-standing gaps in our understanding of CNT growth mechanisms. There is a lack of atomic level insight on the role of defects on carbon nanotubes' growth. Here, authors present a machine learning force field to drive near-microsecond simulations the entire growth process of this material, unveiling mechanisms of defect formation and healing.
Publisher
NATURE PORTFOLIO
ISSN
2041-1723
Keyword
NUCLEATIONDENSITYCHIRALITYULTRALONGTOTAL-ENERGY CALCULATIONSGROWTH

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