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
Artificial intelligence (AI) has been referred to as the “fourth paradigm of science,” and as part o...
Neural Combinatorial Optimization approaches have recently leveraged the expressiveness and flexibil...
Machine learning has gained widespread attention as a powerful tool to identify structure in complex...
Combinatorial problems arising in puzzles, origami, and (meta)material design have rare sets of solu...
Combinatorial problems arising in puzzles, origami, and (meta)material design have rare sets of solu...
This dataset contains the training and test data, as well as the trained neural networks as used for...
Machine learning models can assist with metamaterials design by approximating computationally expens...
Emerging multi-material 3D printing techniques enables the rational design of metamaterials with not...
This paper presents a new meta-modeling framework that employs deep reinforcement learning (DRL) to ...
From designing architected materials to connecting mechanical behavior across scales, computational ...
As typical mechanical metamaterials with negative Poisson’s ratios, auxetic metamaterials exhibit co...
This dissertation builds the foundational knowledge required for creating a general material capable...
Mechanical design is one of the essential disciplines in engineering applications, while inspiration...
(Artificial) neural networks have become increasingly popular in mechanics and materials sciences to...
We present our work on using deep neural networks for the prediction of the optical properties of na...
Artificial intelligence (AI) has been referred to as the “fourth paradigm of science,” and as part o...
Neural Combinatorial Optimization approaches have recently leveraged the expressiveness and flexibil...
Machine learning has gained widespread attention as a powerful tool to identify structure in complex...
Combinatorial problems arising in puzzles, origami, and (meta)material design have rare sets of solu...
Combinatorial problems arising in puzzles, origami, and (meta)material design have rare sets of solu...
This dataset contains the training and test data, as well as the trained neural networks as used for...
Machine learning models can assist with metamaterials design by approximating computationally expens...
Emerging multi-material 3D printing techniques enables the rational design of metamaterials with not...
This paper presents a new meta-modeling framework that employs deep reinforcement learning (DRL) to ...
From designing architected materials to connecting mechanical behavior across scales, computational ...
As typical mechanical metamaterials with negative Poisson’s ratios, auxetic metamaterials exhibit co...
This dissertation builds the foundational knowledge required for creating a general material capable...
Mechanical design is one of the essential disciplines in engineering applications, while inspiration...
(Artificial) neural networks have become increasingly popular in mechanics and materials sciences to...
We present our work on using deep neural networks for the prediction of the optical properties of na...
Artificial intelligence (AI) has been referred to as the “fourth paradigm of science,” and as part o...
Neural Combinatorial Optimization approaches have recently leveraged the expressiveness and flexibil...
Machine learning has gained widespread attention as a powerful tool to identify structure in complex...