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Research Article

Physical insights into stress–strain process of polymers under tensile deformation via machine learning

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Pages 323-334 | Received 23 Dec 2019, Accepted 08 Mar 2020, Published online: 07 Apr 2020
 

ABSTRACT

Strain localization is a ubiquitous phenomenon of soft matters subjected to strain. Polymeric materials are a very important class of soft materials and widely used nowadays. Polymers have unique strain localization behavior such as crazing during tensile deformation. How to understand the mechanism at the molecular level of strain localization in polymeric materials has become an important topic in material science. In this work, tensile deformation process of polymers both under a melt state and a glassy state are investigated in MD simulations using a generic coarse-grained model. We use a machine learning technique, i.e., support vector machine (SVM) algorithm, to understand the local molecular structure and the dynamical properties during tensile deformation. By defining “softness” from the SVM model, we investigate the stress–strain behavior of both ductile polymer above glass transition temperature and brittle polymer glass during tensile deformation. We demonstrated that the softness can be used to predict physical properties efficiently; the softness provides deep physical insights into the non-equilibrium stress–strain process. We also find that the Hookean behavior of polymer glasses is mostly contributed by the hard regions of the system, and the elastic limit is quantitatively discussed as well.

Acknowledgments

This work is supported by the National Natural Science Foundation of China (21873040, 21534004, 21374043). H.-J. Qian and Z.-Y. Lu also thank the support from the Program for JLU Science and Technology Innovative Research Team. The authors also thank the High Performance Computing Center of Jilin University for providing part of the computer time in this work.

Additional information

Funding

This work was supported by the National Natural Science Foundation of China [21873040,21534004,21374043].

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