Machine learning enabled autonomous microstructural characterization in 3D samples
Henry Chan,Mathew J. Cherukara,Troy D. Loeffler,Badri Narayanan,Badri Narayanan,Subramanian K. R. S. Sankaranarayanan,Subramanian K. R. S. Sankaranarayanan +6 more
- 06 Jan 2020
- Vol. 6, Iss: 1, pp 1-9
TL;DR: This work introduces an unsupervised machine learning (ML) based technique for the identification and characterization of microstructures in three-dimensional samples obtained from molecular dynamics simulations, particle tracking data, or experiments that combines topology classification, image processing, and clustering algorithms.
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Abstract: We introduce an unsupervised machine learning (ML) based technique for the identification and characterization of microstructures in three-dimensional (3D) samples obtained from molecular dynamics simulations, particle tracking data, or experiments. Our technique combines topology classification, image processing, and clustering algorithms, and can handle a wide range of microstructure types including grains in polycrystalline materials, voids in porous systems, and structures from self/directed assembly in soft-matter complex solutions. Our technique does not require a priori microstructure description of the target system and is insensitive to disorder such as extended defects in polycrystals arising from line and plane defects. We demonstrate quantitively that our technique provides unbiased microstructural information such as precise quantification of grains and their size distributions in 3D polycrystalline samples, characterizes features such as voids and porosity in 3D polymeric samples and micellar size distribution in 3D complex fluids. To demonstrate the efficacy of our ML approach, we benchmark it against a diverse set of synthetic data samples representing nanocrystalline metals, polymers and complex fluids as well as experimentally published characterization data. Our technique is computationally efficient and provides a way to quickly identify, track, and quantify complex microstructural features that impact the observed material behavior.
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References
Determination of the average grain size of cemented carbides
Håkan Engqvist,B Uhrenius +1 more
TL;DR: In this article, the authors proposed a new method to calculate the average grain size based on the calculation of the volume (or mass) average of the frequency distribution of a carbide cross-section.
56
Machine learnt bond order potential to model metal–organic (Co–C) heterostructures
Badri Narayanan,Henry Chan,Alper Kinaci,Fatih Şen,Stephen Gray,Maria K. Y. Chan,Subramanian K. R. S. Sankaranarayanan +6 more
TL;DR: The BOP model developed in this work is a valuable tool to investigate atomic scale processes, structure-property relationships, and temperature/pressure response of Co-C systems, as well as design organic-inorganic hybrid structures with a desired set of properties.
16
Measuring WC grain size distribution.
TL;DR: In this paper, computer simulation techniques for investigating microstructural variables in hardmetal microstructures are developed at the UK's National Physical Laboratory (NPL), which can be used to study grain size distribution and have the potential to be used as a source of reference images for calibrating standard measurement methods.
10
The metallographic measurement of WC grain size.
B Roebuck,E G Bennett +1 more
- 01 Jan 2000
TL;DR: In this article, a survey of recent developments in understanding the measurement issues for characterising the microstructures of hardmetals, particularly those ultrafine grain size, is presented.
6
Complexation-Induced Supramolecular Assembly Drives Metal-Ion Extraction
Ross J. Ellis,Yannick Meridiano,Julie M. Muller,Laurence Berthon,Philippe Guilbaud,Nicole Zorz,Mark R. Antonio,Thomas Demars,Thomas Zemb +8 more
TL;DR: For the first time, this multiscale approach links metal-ion coordination with nanoscale structure to reveal the free-energy balance that drives the phase transfer of neutral metal salts.