Back to Search Start Over

A General Materials Data Science Framework for Quantitative 2D Analysis of Particle Growth from Image Sequences

Authors :
Nalin Venkat, Sameera
Ciardi, Thomas G.
Lu, Mingjian
DeLeo, Preston C.
Augustino, Jube
Goodman, Adam
Jimenez, Jayvic Cristian
Mondal, Anirban
Ernst, Frank
Orme, Christine A.
Wu, Yinghui
French, Roger H.
Bruckman, Laura S.
Source :
Integrating Materials and Manufacturing Innovation; March 2024, Vol. 13 Issue: 1 p71-82, 12p
Publication Year :
2024

Abstract

Phase transformations are a challenging problem in materials science, which lead to changes in properties and may impact performance of material systems in various applications. We introduce a general framework for the analysis of particle growth kinetics by utilizing concepts from machine learning and graph theory. As a model system, we use image sequences of atomic force microscopy showing the crystallization of an amorphous fluoroelastomer film. To identify crystalline particles in an amorphous matrix and track the temporal evolution of the particle dispersion, we have developed quantitative methods of 2D analysis. 700 image sequences were analyzed using a neural network architecture, achieving 0.97 pixel-wise classification accuracy as a measure of the correctly classified pixels. The growth kinetics of isolated and impinged particles were tracked throughout time using these image sequences. The relationship between image sequences and spatiotemporal graph representations was explored to identify the proximity of crystallites from each other. The framework enables the analysis of all image sequences without the requirement of sampling for specific particles or timesteps for various materials systems.

Details

Language :
English
ISSN :
21939764 and 21939772
Volume :
13
Issue :
1
Database :
Supplemental Index
Journal :
Integrating Materials and Manufacturing Innovation
Publication Type :
Periodical
Accession number :
ejs65549315
Full Text :
https://doi.org/10.1007/s40192-024-00342-w