scholarly journals Molecular Process of Gramicidin a Dimerization Determined with Milliseconds Atomistic Simulations and Machine Learning

2020 ◽  
Vol 118 (3) ◽  
pp. 555a
Author(s):  
Delin Sun ◽  
Stewart He ◽  
W.F. Drew Bennett ◽  
Felice C. Lightstone ◽  
Helgi I. Ingólfsson
ACS Nano ◽  
2018 ◽  
Vol 12 (8) ◽  
pp. 8006-8016 ◽  
Author(s):  
Tarak K. Patra ◽  
Fu Zhang ◽  
Daniel S. Schulman ◽  
Henry Chan ◽  
Mathew J. Cherukara ◽  
...  

Nanoscale ◽  
2021 ◽  
Author(s):  
Daniele Dragoni ◽  
Jörg Behler ◽  
Marco Bernasconi

Large scale atomistic simulations with an interatomic potential generated by a machine learning method have been exploited to study the crystallization of Sb in ultrathin films.


2022 ◽  
Author(s):  
Dylan Bayerl ◽  
Christopher Michael Andolina ◽  
Shyam Dwaraknath ◽  
Wissam A Saidi

Machine learning potentials (MLPs) for atomistic simulations have an enormous prospective impact on materials modeling, offering orders of magnitude speedup over density functional theory (DFT) calculations without appreciably sacrificing accuracy...


2015 ◽  
Vol 115 (16) ◽  
pp. 1129-1139 ◽  
Author(s):  
Marco Caccin ◽  
Zhenwei Li ◽  
James R. Kermode ◽  
Alessandro De Vita

2021 ◽  
Vol 7 (1) ◽  
Author(s):  
Cody Kunka ◽  
Apaar Shanker ◽  
Elton Y. Chen ◽  
Surya R. Kalidindi ◽  
Rémi Dingreville

AbstractDiffraction techniques can powerfully and nondestructively probe materials while maintaining high resolution in both space and time. Unfortunately, these characterizations have been limited and sometimes even erroneous due to the difficulty of decoding the desired material information from features of the diffractograms. Currently, these features are identified non-comprehensively via human intuition, so the resulting models can only predict a subset of the available structural information. In the present work we show (i) how to compute machine-identified features that fully summarize a diffractogram and (ii) how to employ machine learning to reliably connect these features to an expanded set of structural statistics. To exemplify this framework, we assessed virtual electron diffractograms generated from atomistic simulations of irradiated copper. When based on machine-identified features rather than human-identified features, our machine-learning model not only predicted one-point statistics (i.e. density) but also a two-point statistic (i.e. spatial distribution) of the defect population. Hence, this work demonstrates that machine-learning models that input machine-identified features significantly advance the state of the art for accurately and robustly decoding diffractograms.


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