CEMTRL-SCILGJul 1, 2023

Data-Driven Design for Metamaterials and Multiscale Systems: A Review

arXiv:2307.05506v1205 citationsh-index: 54
Originality Synthesis-oriented
AI Analysis

This is an incremental review that synthesizes existing research for researchers in metamaterials and multiscale systems.

The paper reviews data-driven design approaches for metamaterials and multiscale systems, addressing challenges in their vast design space and intricate structure-property relationships to enable next-generation devices with exotic functionalities.

Metamaterials are artificial materials designed to exhibit effective material parameters that go beyond those found in nature. Composed of unit cells with rich designability that are assembled into multiscale systems, they hold great promise for realizing next-generation devices with exceptional, often exotic, functionalities. However, the vast design space and intricate structure-property relationships pose significant challenges in their design. A compelling paradigm that could bring the full potential of metamaterials to fruition is emerging: data-driven design. In this review, we provide a holistic overview of this rapidly evolving field, emphasizing the general methodology instead of specific domains and deployment contexts. We organize existing research into data-driven modules, encompassing data acquisition, machine learning-based unit cell design, and data-driven multiscale optimization. We further categorize the approaches within each module based on shared principles, analyze and compare strengths and applicability, explore connections between different modules, and identify open research questions and opportunities.

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