Three different deep learning models were designed in this paper, to predict the electric fields of single nanoparticles, dimers, and nanoparticle arrays. For single nanoparticles, the prediction error was 4.4%, respectively. For dimers with strong couplings, a sample self-normalization method was proposed, and the error was reduced by an order of magnitude compared with traditional methods. For nanoparticle arrays, the error was reduced from 28.8% to 5.6% compared with previous work. Numerical tests proved the validity of the proposed deep learning models, which have potential applications in the design of nanostructures.</p
In this paper, we demonstrate a computationally ecient new approach based on deep learning (DL) tech...
Determination of nanoparticle size and size distribution is important because these key parameters d...
International audienceSubwavelength small particles can be tailored to fulfill manifold functionalit...
Deep artificial neural networks are powerful tools with many possible applications in nanophotonics....
Dataset supports: Wiecha, P. R. & Muskens, O. L. "Deep learning meets nanophotonics: A gene...
Deep learning has become the dominant approach in artificial intelligence to solve complex data-driv...
We proposed and demonstrated a novel inverse design method of metal nanoparticles based on deep lear...
Nanoparticles exhibit diverse structural and morphological features that are often interconnected, m...
This paper demonstrates how neural networks can be applied to model and predict the functional behav...
This paper demonstrates how neural networks can be applied to model and predict the functional behav...
Precise control over dimension of nanocrystals is critical to tune the properties for various applic...
© 2019 IEEE.We present a novel approach of using deep convolutional neural networks (CNN) to predict...
DNA nanotechnology is a rapidly developing field that uses DNA as a building material for nanoscale ...
Advances in plasmonic materials and devices have given rise to a variety of applications in photocat...
In the present work, two types of deep neural networks (DNNs) were employed to establish the structu...
In this paper, we demonstrate a computationally ecient new approach based on deep learning (DL) tech...
Determination of nanoparticle size and size distribution is important because these key parameters d...
International audienceSubwavelength small particles can be tailored to fulfill manifold functionalit...
Deep artificial neural networks are powerful tools with many possible applications in nanophotonics....
Dataset supports: Wiecha, P. R. & Muskens, O. L. "Deep learning meets nanophotonics: A gene...
Deep learning has become the dominant approach in artificial intelligence to solve complex data-driv...
We proposed and demonstrated a novel inverse design method of metal nanoparticles based on deep lear...
Nanoparticles exhibit diverse structural and morphological features that are often interconnected, m...
This paper demonstrates how neural networks can be applied to model and predict the functional behav...
This paper demonstrates how neural networks can be applied to model and predict the functional behav...
Precise control over dimension of nanocrystals is critical to tune the properties for various applic...
© 2019 IEEE.We present a novel approach of using deep convolutional neural networks (CNN) to predict...
DNA nanotechnology is a rapidly developing field that uses DNA as a building material for nanoscale ...
Advances in plasmonic materials and devices have given rise to a variety of applications in photocat...
In the present work, two types of deep neural networks (DNNs) were employed to establish the structu...
In this paper, we demonstrate a computationally ecient new approach based on deep learning (DL) tech...
Determination of nanoparticle size and size distribution is important because these key parameters d...
International audienceSubwavelength small particles can be tailored to fulfill manifold functionalit...