Machine Learning for Metamaterial Design
ORAL
Abstract
There is no standard method to design mechanical metamaterials. Instead, one is limited by designer's intuition and the tuning of a few predefined design parameters. Here we show that machine learning overcomes this limitation by learning the relation between design and mechanical property, which we use to inverse design for desired mechanical properties. This allows us to consider and efficiently explore much larger design spaces, opening up new possibilities for complex design of (meta)materials.
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Publication: R. van Mastrigt et al., Phys. Rev. Lett. 2022.
Presenters
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Ryan van Mastrigt
University of Amsterdam
Authors
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Ryan van Mastrigt
University of Amsterdam
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Marjolein Dijkstra
Utrecht University
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Martin van Hecke
AMOLF Amsterdam & Leiden University, AMOLF
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Corentin Coulais
University of Amsterdam