Cargando…

Machine Learning Enabled Prediction of Mechanical Properties of Tungsten Disulfide Monolayer

[Image: see text] One of two-dimensional transition metal dichalcogenide materials, tungsten disulfide (WS(2)), has aroused much research interest, and its mechanical properties play an important role in a practical application. Here the mechanical properties of h-WS(2) and t-WS(2) monolayers in the...

Descripción completa

Detalles Bibliográficos
Autores principales: Wang, Xinyu, Han, Dan, Hong, Yang, Sun, Haiyi, Zhang, Jingzhi, Zhang, Jingchao
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2019
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6648085/
https://www.ncbi.nlm.nih.gov/pubmed/31460104
http://dx.doi.org/10.1021/acsomega.9b01087
_version_ 1783437803011440640
author Wang, Xinyu
Han, Dan
Hong, Yang
Sun, Haiyi
Zhang, Jingzhi
Zhang, Jingchao
author_facet Wang, Xinyu
Han, Dan
Hong, Yang
Sun, Haiyi
Zhang, Jingzhi
Zhang, Jingchao
author_sort Wang, Xinyu
collection PubMed
description [Image: see text] One of two-dimensional transition metal dichalcogenide materials, tungsten disulfide (WS(2)), has aroused much research interest, and its mechanical properties play an important role in a practical application. Here the mechanical properties of h-WS(2) and t-WS(2) monolayers in the armchair and zigzag directions are evaluated by utilizing the molecular dynamics (MD) simulations and machine learning (ML) technique. We mainly focus on the effects of chirality, system size, temperature, strain rate, and random vacancy defect on mechanical properties, including fracture strain, fracture strength, and Young’s modulus. We find that the mechanical properties of h-WS(2) surpass those of t-WS(2) due to the different coordination spheres of the transition metal atoms. It can also be observed that the fracture strain, fracture strength, and Young’s modulus decrease when temperature and vacancy defect ratio are enhanced. The random forest (RF) supervised ML algorithm is employed to model the correlations between different impact factors and target outputs. A total number of 3600 MD simulations are performed to generate the training and testing dataset for the ML model. The mechanical properties of WS(2) (i.e., target outputs) can be predicted using the trained model with the knowledge of different input features, such as WS(2) type, chirality, temperature, strain rate, and defect ratio. The mean square errors of ML predictions for the mechanical properties are orders of magnitude smaller than the actual values of each property, indicating good training results of the RF model.
format Online
Article
Text
id pubmed-6648085
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher American Chemical Society
record_format MEDLINE/PubMed
spelling pubmed-66480852019-08-27 Machine Learning Enabled Prediction of Mechanical Properties of Tungsten Disulfide Monolayer Wang, Xinyu Han, Dan Hong, Yang Sun, Haiyi Zhang, Jingzhi Zhang, Jingchao ACS Omega [Image: see text] One of two-dimensional transition metal dichalcogenide materials, tungsten disulfide (WS(2)), has aroused much research interest, and its mechanical properties play an important role in a practical application. Here the mechanical properties of h-WS(2) and t-WS(2) monolayers in the armchair and zigzag directions are evaluated by utilizing the molecular dynamics (MD) simulations and machine learning (ML) technique. We mainly focus on the effects of chirality, system size, temperature, strain rate, and random vacancy defect on mechanical properties, including fracture strain, fracture strength, and Young’s modulus. We find that the mechanical properties of h-WS(2) surpass those of t-WS(2) due to the different coordination spheres of the transition metal atoms. It can also be observed that the fracture strain, fracture strength, and Young’s modulus decrease when temperature and vacancy defect ratio are enhanced. The random forest (RF) supervised ML algorithm is employed to model the correlations between different impact factors and target outputs. A total number of 3600 MD simulations are performed to generate the training and testing dataset for the ML model. The mechanical properties of WS(2) (i.e., target outputs) can be predicted using the trained model with the knowledge of different input features, such as WS(2) type, chirality, temperature, strain rate, and defect ratio. The mean square errors of ML predictions for the mechanical properties are orders of magnitude smaller than the actual values of each property, indicating good training results of the RF model. American Chemical Society 2019-06-11 /pmc/articles/PMC6648085/ /pubmed/31460104 http://dx.doi.org/10.1021/acsomega.9b01087 Text en Copyright © 2019 American Chemical Society This is an open access article published under an ACS AuthorChoice License (http://pubs.acs.org/page/policy/authorchoice_termsofuse.html) , which permits copying and redistribution of the article or any adaptations for non-commercial purposes.
spellingShingle Wang, Xinyu
Han, Dan
Hong, Yang
Sun, Haiyi
Zhang, Jingzhi
Zhang, Jingchao
Machine Learning Enabled Prediction of Mechanical Properties of Tungsten Disulfide Monolayer
title Machine Learning Enabled Prediction of Mechanical Properties of Tungsten Disulfide Monolayer
title_full Machine Learning Enabled Prediction of Mechanical Properties of Tungsten Disulfide Monolayer
title_fullStr Machine Learning Enabled Prediction of Mechanical Properties of Tungsten Disulfide Monolayer
title_full_unstemmed Machine Learning Enabled Prediction of Mechanical Properties of Tungsten Disulfide Monolayer
title_short Machine Learning Enabled Prediction of Mechanical Properties of Tungsten Disulfide Monolayer
title_sort machine learning enabled prediction of mechanical properties of tungsten disulfide monolayer
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6648085/
https://www.ncbi.nlm.nih.gov/pubmed/31460104
http://dx.doi.org/10.1021/acsomega.9b01087
work_keys_str_mv AT wangxinyu machinelearningenabledpredictionofmechanicalpropertiesoftungstendisulfidemonolayer
AT handan machinelearningenabledpredictionofmechanicalpropertiesoftungstendisulfidemonolayer
AT hongyang machinelearningenabledpredictionofmechanicalpropertiesoftungstendisulfidemonolayer
AT sunhaiyi machinelearningenabledpredictionofmechanicalpropertiesoftungstendisulfidemonolayer
AT zhangjingzhi machinelearningenabledpredictionofmechanicalpropertiesoftungstendisulfidemonolayer
AT zhangjingchao machinelearningenabledpredictionofmechanicalpropertiesoftungstendisulfidemonolayer