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Characterizing fracture stress of defective graphene samples using shallow and deep artificial neural networks

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dc.contributor.author Dewapriya, MAN
dc.contributor.author Rajapakse, RKND
dc.contributor.author Dias, WPS
dc.date.accessioned 2023-03-14T04:27:35Z
dc.date.available 2023-03-14T04:27:35Z
dc.date.issued 2020
dc.identifier.citation Dewapriya, M. A. N., Rajapakse, R. K. N. D., & Dias, W. P. S. (2020). Characterizing fracture stress of defective graphene samples using shallow and deep artificial neural networks. Carbon, 163, 425–440. https://doi.org/10.1016/j.carbon.2020.03.038 en_US
dc.identifier.issn 0008-6223 en_US
dc.identifier.uri http://dl.lib.uom.lk/handle/123/20724
dc.description.abstract Advanced machine learning methods could be useful to obtain novel insights into some challenging nanomechanical problems. In this work, we employed artificial neural networks to predict the fracture stress of defective graphene samples. First, shallow neural networks were used to predict the fracture stress, which depends on the temperature, vacancy concentration, strain rate, and loading direction. A part of the data required to model the shallow networks was obtained by developing an analytical solution based on the Bailey durability criterion and the Arrhenius equation. Molecular dynamics (MD) simulations were also used to obtain some data. Sensitivity analysis was performed to explore the features learnt by the neural network, and their behaviour under extrapolation was also investigated. Subsequently, deep convolutional neural networks (CNNs) were developed to predict the fracture stress of graphene samples containing random distributions of vacancy defects. Data required to model CNNs was obtained from MD simulations. Our results reveal that the neural networks have a strong ability to predict the fracture stress of defective graphene under various processing conditions. In addition, this work highlights some advantages as well as limitations and challenges in using neural networks to solve complex problems in the domain of computational materials design. en_US
dc.language.iso en_US en_US
dc.publisher Elsevier en_US
dc.subject Deep learning en_US
dc.subject Neural networks en_US
dc.subject Molecular dynamics en_US
dc.subject Defective graphene en_US
dc.subject Fracture stress en_US
dc.subject Defect distribution en_US
dc.title Characterizing fracture stress of defective graphene samples using shallow and deep artificial neural networks en_US
dc.type Article-Full-text en_US
dc.identifier.year 2020 en_US
dc.identifier.journal Carbon en_US
dc.identifier.volume 163 en_US
dc.identifier.database ScienceDirect en_US
dc.identifier.pgnos 425-440 en_US
dc.identifier.doi 10.1016/j.carbon.2020.03.038 en_US


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