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Activity Number: 58 - Q&P and SPES Student Paper Award
Type: Topic Contributed
Date/Time: Sunday, August 7, 2022 : 4:00 PM to 5:50 PM
Sponsor: Quality and Productivity Section
Abstract #320822
Title: How to See Hidden Patterns in Metamaterials with Interpretable Machine Learning
Author(s): Zhi Chen* and Alexander Ogren and Chiara Daraio and L. Catherine Brinson and Cynthia Rudin
Companies: Duke University and Caltech and Caltech and Duke University and Duke University
Keywords: metamaterials; band gaps; interpretable machine learning; rule-based model; multi-resolution design
Abstract:

Metamaterials are composite materials with engineered geometrical micro- and meso-structures that can lead to uncommon physical properties, like negative Poisson's ratio or ultra-low shear resistance. Periodic metamaterials are composed of repeating unit-cells, and geometrical patterns within these unit-cells influence the propagation of elastic or acoustic waves and control dispersion. In this work, we develop a new interpretable, multi-resolution machine learning framework for finding patterns in the unit-cells of materials that reveal their dynamic properties. Specifically, we propose two new interpretable representations of metamaterials, called shape-frequency features and unit-cell templates. Machine learning models built using these feature classes can accurately predict dynamic material properties. These feature representations (particularly the unit-cell templates) have a useful property: they can operate on designs of higher resolutions. By learning key coarse scale patterns that can be reliably transferred to finer resolution design space via the shape-frequency features or unit-cell templates, we can almost freely design the fine resolution fe


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