Literature DB >> 34253831

Characterize traction-separation relation and interfacial imperfections by data-driven machine learning models.

Sanjida Ferdousi1, Qiyi Chen2, Mehrzad Soltani1, Jiadeng Zhu3, Pengfei Cao3, Wonbong Choi1,4, Rigoberto Advincula2,5, Yijie Jiang6.   

Abstract

Interfacial mechanical properties are important in composite materials and their applications, including vehicle structures, soft robotics, and aerospace. Determination of traction-separation (T-S) relations at interfaces in composites can lead to evaluations of structural reliability, mechanical robustness, and failures criteria. Accurate measurements on T-S relations remain challenging, since the interface interaction generally happens at microscale. With the emergence of machine learning (ML), data-driven model becomes an efficient method to predict the interfacial behaviors of composite materials and establish their mechanical models. Here, we combine ML, finite element analysis (FEA), and empirical experiments to develop data-driven models that characterize interfacial mechanical properties precisely. Specifically, eXtreme Gradient Boosting (XGBoost) multi-output regressions and classifier models are harnessed to investigate T-S relations and identify the imperfection locations at interface, respectively. The ML models are trained by macroscale force-displacement curves, which can be obtained from FEA and standard mechanical tests. The results show accurate predictions of T-S relations (R2 = 0.988) and identification of imperfection locations with 81% accuracy. Our models are experimentally validated by 3D printed double cantilever beam specimens from different materials. Furthermore, we provide a code package containing trained ML models, allowing other researchers to establish T-S relations for different material interfaces.
© 2021. The Author(s).

Entities:  

Year:  2021        PMID: 34253831     DOI: 10.1038/s41598-021-93852-y

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  10 in total

1.  Molecular design of strong single-wall carbon nanotube/polyelectrolyte multilayer composites.

Authors:  Arif A Mamedov; Nicholas A Kotov; Maurizio Prato; Dirk M Guldi; James P Wicksted; Andreas Hirsch
Journal:  Nat Mater       Date:  2002-11       Impact factor: 43.841

2.  Adhesive contact based on the Lennard-Jones potential: a correction to the value of the equilibrium distance as used in the potential.

Authors:  Ning Yu; Andreas A Polycarpou
Journal:  J Colloid Interface Sci       Date:  2004-10-15       Impact factor: 8.128

3.  Interfacial separation of a mature biofilm from a glass surface - A combined experimental and cohesive zone modelling approach.

Authors:  Ashkan Safari; Zeljko Tukovic; Philip Cardiff; Maik Walter; Eoin Casey; Alojz Ivankovic
Journal:  J Mech Behav Biomed Mater       Date:  2015-09-21

4.  Characterizing nanoscale scanning probes using electron microscopy: A novel fixture and a practical guide.

Authors:  Tevis D B Jacobs; Graham E Wabiszewski; Alexander J Goodman; Robert W Carpick
Journal:  Rev Sci Instrum       Date:  2016-01       Impact factor: 1.523

5.  Using the Dugdale approximation to match a specific interaction in the adhesive contact of elastic objects.

Authors:  Zhijun Zheng; Jilin Yu
Journal:  J Colloid Interface Sci       Date:  2007-03-01       Impact factor: 8.128

6.  Tough, bio-inspired hybrid materials.

Authors:  E Munch; M E Launey; D H Alsem; E Saiz; A P Tomsia; R O Ritchie
Journal:  Science       Date:  2008-12-05       Impact factor: 47.728

7.  The interfacial strength of carbon nanofiber epoxy composite using single fiber pullout experiments.

Authors:  M P Manoharan; A Sharma; A V Desai; M A Haque; C E Bakis; K W Wang
Journal:  Nanotechnology       Date:  2009-07-01       Impact factor: 3.874

8.  Composite Microposts with High Dry Adhesion Strength.

Authors:  H K Minsky; Kevin T Turner
Journal:  ACS Appl Mater Interfaces       Date:  2017-05-17       Impact factor: 9.229

9.  Soft nanocomposite electroadhesives for digital micro- and nanotransfer printing.

Authors:  Sanha Kim; Yijie Jiang; Kiera L Thompson Towell; Michael S H Boutilier; Nigamaa Nayakanti; Changhong Cao; Chunxu Chen; Christine Jacob; Hangbo Zhao; Kevin T Turner; A John Hart
Journal:  Sci Adv       Date:  2019-10-11       Impact factor: 14.136

Review 10.  Machine learning for molecular and materials science.

Authors:  Keith T Butler; Daniel W Davies; Hugh Cartwright; Olexandr Isayev; Aron Walsh
Journal:  Nature       Date:  2018-07-25       Impact factor: 49.962

  10 in total

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