Explainable Multimodal Machine Learning for Revealing Structure-Property Relationships in Carbon Nanotube Fibers
Daisuke Kimura, Naoko Tajima, Toshiya Okazaki, Shun Muroga

TL;DR
This paper introduces an explainable multimodal machine learning framework that integrates diverse data analysis techniques to understand and optimize the structure-property relationships in carbon nanotube fibers.
Contribution
The study presents EMML, a novel approach combining factor analysis, NMF, and XAI to interpret complex data and reveal key factors affecting CNT fiber properties.
Findings
Small, uniform aggregates improve fracture strength
Longer CNTs enhance electrical conductivity
Identified thresholds for key structural factors
Abstract
In this study, we propose Explainable Multimodal Machine Learning (EMML), which integrates the analysis of diverse data types (multimodal data) using factor analysis for feature extraction with Explainable AI (XAI), for carbon nanotube (CNT) fibers prepared from aqueous dispersions. This method is a powerful approach to elucidate the mechanisms governing material properties, where multi-stage fabrication conditions and multiscale structures have complex influences. Thus, in our case, this approach helps us understand how different processing steps and structures at various scales impact the final properties of CNT fibers. The analysis targeted structures ranging from the nanoscale to the macroscale, including aggregation size distributions of CNT dispersions and the effective length of CNTs. Furthermore, because some types of data were difficult to interpret using standard methods,…
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Taxonomy
TopicsMachine Learning in Materials Science
