Abstract Neural network-based generative models have been actively investigated as an inverse design method for finding novel materials in a vast design space. However, the applicability of conventional generative models is limited because they cannot access data outside the range of training sets. Advanced generative models that were devised to overcome the limitation also suffer from the weak predictive power on the unseen domain. In this study, we propose a deep neural network-based forward design approach that enables an efficient search for superior materials far beyond the domain of the initial training set. This approach compensates for the weak predictive power of neural networks on an unseen domain through gradual updates of the ne...
We present our work on using deep neural networks for the prediction of the optical properties of na...
In the expanding landscape of metamaterial design, Zheng and colleagues introduces a framework that ...
Data-driven models have been increasingly used in recent years. However, their application to explor...
Generative adversarial networks (GANs) are deep generative models (GMs) that have recently attracted...
Materials-by-design is a paradigm to develop previously unknown high-performance materials. However,...
Autonomous materials discovery with desired properties is one of the ultimate goals for materials sc...
Generative deep learning is powering a wave of new innovations in materials design. This article dis...
Abstract High‐throughput screening has become one of the major strategies for the discovery of novel...
Machine learning has the potential to dramatically accelerate high-throughput approaches to material...
Abstract Predicting properties from a material’s composition or structure is of great interest for m...
Computational materials design is a rapidly evolving field of challenges and opportunities aiming at...
As typical mechanical metamaterials with negative Poisson’s ratios, auxetic metamaterials exhibit co...
It is safe to say that every invention that has changed the world has depended on materials. At pres...
This paper presents a non-iterative topology optimizer for conductive heat transfer structures with ...
10 pages, 9 figuresDeep learning is a promising, ultra-fast approach for inverse design in nano-opti...
We present our work on using deep neural networks for the prediction of the optical properties of na...
In the expanding landscape of metamaterial design, Zheng and colleagues introduces a framework that ...
Data-driven models have been increasingly used in recent years. However, their application to explor...
Generative adversarial networks (GANs) are deep generative models (GMs) that have recently attracted...
Materials-by-design is a paradigm to develop previously unknown high-performance materials. However,...
Autonomous materials discovery with desired properties is one of the ultimate goals for materials sc...
Generative deep learning is powering a wave of new innovations in materials design. This article dis...
Abstract High‐throughput screening has become one of the major strategies for the discovery of novel...
Machine learning has the potential to dramatically accelerate high-throughput approaches to material...
Abstract Predicting properties from a material’s composition or structure is of great interest for m...
Computational materials design is a rapidly evolving field of challenges and opportunities aiming at...
As typical mechanical metamaterials with negative Poisson’s ratios, auxetic metamaterials exhibit co...
It is safe to say that every invention that has changed the world has depended on materials. At pres...
This paper presents a non-iterative topology optimizer for conductive heat transfer structures with ...
10 pages, 9 figuresDeep learning is a promising, ultra-fast approach for inverse design in nano-opti...
We present our work on using deep neural networks for the prediction of the optical properties of na...
In the expanding landscape of metamaterial design, Zheng and colleagues introduces a framework that ...
Data-driven models have been increasingly used in recent years. However, their application to explor...