We report an approach assisted by deep learning to design spectrally sensitive multiband absorbers that work in the visible range. We propose a five-layered metal-insulator-metal grating structure composed of aluminum and silicon dioxide, and we design its structural parameters by using an artificial neural network (ANN). For a spectrally sensitive design, spectral information of resonant wavelengths is additionally provided as input as well as the reflection spectrum. The ANN facilitates highly robust design of a grating structure that has an average mean squared error (MSE) of 0.023. The optical properties of the designed structures are validated using electromagnetic simulations and experiments. Analysis of design results for gradually c...
This article presents a study of the ARTMAP neural network in designing cascaded gratings. A neural ...
Core-shells metallic nanoparticles have the advantage of possessing two plasmon resonances, one in t...
We present an open-source deep artificial neural network (ANN) model for the accelerated design of p...
Reaching the true potential of nanophotonic devices requires the broadband control of spectral and a...
Machine learning offers the potential to revolutionize the inverse design of complex nanophotonic co...
We present our work on using deep neural networks for the prediction of the optical properties of na...
A central challenge in contemporary materials and photonics research is understanding how intrinsic ...
Distributed Bragg Reflectors are optical structures capable of manipulating light behaviour, which a...
Integrated grating structure has been widely used in the optical addressing of trapped ion qubits in...
We propose and demonstrate the first end-to-end artificial neural network (ANN) modeler for the auto...
We demonstrate the use of machine learning through convolutional neural networks to solve inverse de...
Transition edge sensors (TESs) are extremely sensitive thermometers made of superconducting material...
Recent developments in the application of aperiodic fiber Bragg gratings (AFBG) in astrophotonics, s...
We demonstrate that the deep learning algorithm can considerably simplify the design and characteriz...
Data-driven design approaches based on deep learning have been introduced in nanophotonics to reduce...
This article presents a study of the ARTMAP neural network in designing cascaded gratings. A neural ...
Core-shells metallic nanoparticles have the advantage of possessing two plasmon resonances, one in t...
We present an open-source deep artificial neural network (ANN) model for the accelerated design of p...
Reaching the true potential of nanophotonic devices requires the broadband control of spectral and a...
Machine learning offers the potential to revolutionize the inverse design of complex nanophotonic co...
We present our work on using deep neural networks for the prediction of the optical properties of na...
A central challenge in contemporary materials and photonics research is understanding how intrinsic ...
Distributed Bragg Reflectors are optical structures capable of manipulating light behaviour, which a...
Integrated grating structure has been widely used in the optical addressing of trapped ion qubits in...
We propose and demonstrate the first end-to-end artificial neural network (ANN) modeler for the auto...
We demonstrate the use of machine learning through convolutional neural networks to solve inverse de...
Transition edge sensors (TESs) are extremely sensitive thermometers made of superconducting material...
Recent developments in the application of aperiodic fiber Bragg gratings (AFBG) in astrophotonics, s...
We demonstrate that the deep learning algorithm can considerably simplify the design and characteriz...
Data-driven design approaches based on deep learning have been introduced in nanophotonics to reduce...
This article presents a study of the ARTMAP neural network in designing cascaded gratings. A neural ...
Core-shells metallic nanoparticles have the advantage of possessing two plasmon resonances, one in t...
We present an open-source deep artificial neural network (ANN) model for the accelerated design of p...