Litcius/Paper detail

Machine Learning of Implicit Combinatorial Rules in Mechanical Metamaterials

Ryan van Mastrigt, Marjolein Dijkstra, Martin van Hecke, Corentin Coulais

2022Physical Review Letters38 citationsDOIOpen Access PDF

Abstract

Combinatorial problems arising in puzzles, origami, and (meta)material design have rare sets of solutions, which define complex and sharply delineated boundaries in configuration space. These boundaries are difficult to capture with conventional statistical and numerical methods. Here we show that convolutional neural networks can learn to recognize these boundaries for combinatorial mechanical metamaterials, down to finest detail, despite using heavily undersampled training sets, and can successfully generalize. This suggests that the network infers the underlying combinatorial rules from the sparse training set, opening up new possibilities for complex design of (meta)materials.

Topics & Concepts

MetamaterialComputer scienceSet (abstract data type)Space (punctuation)Convolutional neural networkParameter spaceCombinatorial explosionTheoretical computer scienceArtificial intelligenceMathematicsPhysicsGeometryCombinatoricsProgramming languageOptoelectronicsOperating systemModular Robots and Swarm IntelligenceAdvanced Materials and MechanicsMachine Learning in Materials Science