Linking Properties to Microstructure in Liquid Metal Embedded Elastomers via Machine Learning
Abhijith Thoopul Anantharanga, Mohammad Saber Hashemi, Azadeh Sheidaei

TL;DR
This paper presents a machine learning approach using a variational autoencoder to link microstructure to properties in liquid-metal embedded elastomers, enabling rational material design for applications in soft robotics and electronics.
Contribution
It introduces a semi-supervised VAE model trained on simulated microstructure-property data for efficient design of liquid-metal elastomers.
Findings
Surrogate model accurately predicts material properties.
Inverse design capability for targeted properties.
Validated with experimental results.
Abstract
Liquid metals (LM) are embedded in an elastomer matrix to obtain soft composites with unique thermal, dielectric, and mechanical properties. They have applications in soft robotics, biomedical engineering, and wearable electronics. By linking the structure to the properties of these materials, it is possible to perform material design rationally. Liquid-metal embedded elastomers (LMEEs) have been designed for targeted electro-thermo-mechanical properties by semi-supervised learning of structure-property (SP) links in a variational autoencoder network (VAE). The design parameters are the microstructural descriptors that are physically meaningful and have affine relationships with the synthetization of the studied particulate composite. The machine learning (ML) model is trained on a generated dataset of microstructural descriptors with their multifunctional property quantities as their…
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Taxonomy
TopicsAdvanced Sensor and Energy Harvesting Materials · Dielectric materials and actuators · Advanced Materials and Mechanics
