Chirality in light–matter interaction
The scientific effort to control the interaction between light and matter has grown
exponentially in the last 2 decades. This growth has been aided by the development of …
exponentially in the last 2 decades. This growth has been aided by the development of …
Deep learning the electromagnetic properties of metamaterials—a comprehensive review
Deep neural networks (DNNs) are empirically derived systems that have transformed
traditional research methods, and are driving scientific discovery. Artificial electromagnetic …
traditional research methods, and are driving scientific discovery. Artificial electromagnetic …
Equivariant contrastive learning
In state-of-the-art self-supervised learning (SSL) pre-training produces semantically good
representations by encouraging them to be invariant under meaningful transformations …
representations by encouraging them to be invariant under meaningful transformations …
Intelligent on-demand design of phononic metamaterials
With the growing interest in the field of artificial materials, more advanced and sophisticated
functionalities are required from phononic crystals and acoustic metamaterials. This implies …
functionalities are required from phononic crystals and acoustic metamaterials. This implies …
Inverse machine learning framework for optimizing lightweight metamaterials
Abstract Structure scouting and design optimization for superior mechanical performance
through inverse machine learning is an emerging area of interest. Inverse machine learning …
through inverse machine learning is an emerging area of interest. Inverse machine learning …
[HTML][HTML] Deep learning aided topology optimization of phononic crystals
In this work, a novel approach for the topology optimization of phononic crystals based on
the replacement of the computationally demanding traditional solvers for the calculation of …
the replacement of the computationally demanding traditional solvers for the calculation of …
Deep learning for topological photonics
In this paper, we review the specific field that combines topological photonics and deep
learning (DL). Recent progress of topological photonics has attracted enormous interest for …
learning (DL). Recent progress of topological photonics has attracted enormous interest for …
General inverse design of layered thin-film materials with convolutional neural networks
The design of metamaterials which support unique optical responses is the basis for most
thin-film nanophotonic applications. In practice, this inverse design (ID) problem can be …
thin-film nanophotonic applications. In practice, this inverse design (ID) problem can be …
Inverse design for fluid-structure interactions using graph network simulators
Designing physical artifacts that serve a purpose---such as tools and other functional
structures---is central to engineering as well as everyday human behavior. Though …
structures---is central to engineering as well as everyday human behavior. Though …
Machine learning in chemical product engineering: The state of the art and a guide for newcomers
Chemical Product Engineering (CPE) is marked by numerous challenges, such as the
complexity of the properties–structure–ingredients–process relationship of the different …
complexity of the properties–structure–ingredients–process relationship of the different …