相关参考文献
注意:仅列出部分参考文献,下载原文获取全部文献信息。Pushing the Limits of Functionality-Multiplexing Capability in Metasurface Design Based on Statistical Machine Learning
Wei Ma et al.
ADVANCED MATERIALS (2022)
Highly suppressed solar absorption in a daytime radiative cooler designed by genetic algorithm
Sunae So et al.
NANOPHOTONICS (2022)
Deep learning for the design of photonic structures
Wei Ma et al.
NATURE PHOTONICS (2021)
Building Multifunctional Metasystems via Algorithmic Construction
Dayu Zhu et al.
ACS NANO (2021)
Multifunctional Metasurface Design with a Generative Adversarial Network
Sensong An et al.
ADVANCED OPTICAL MATERIALS (2021)
Deep neural networks for the evaluation and design of photonic devices
Jiaqi Jiang et al.
NATURE REVIEWS MATERIALS (2021)
An improved tandem neural network for the inverse design of nanophotonics devices
Xiaopeng Xu et al.
OPTICS COMMUNICATIONS (2021)
Accurate inverse design of Fabry-Perot-cavity-based color filters far beyond sRGB via a bidirectional artificial neural network
Peng Dai et al.
PHOTONICS RESEARCH (2021)
Deep learning in nano-photonics: inverse design and beyond
Peter R. Wiecha et al.
PHOTONICS RESEARCH (2021)
Realizing transmitted metasurface cloak by a tandem neural network
Zheng Zhen et al.
PHOTONICS RESEARCH (2021)
Metamaterial Reverse Multiple Prediction Method Based on Deep Learning
Zheyu Hou et al.
NANOMATERIALS (2021)
A deep learning approach to the forward prediction and inverse design of plasmonic metasurface structural color
Nathan Bryn Roberts et al.
APPLIED PHYSICS LETTERS (2021)
Artificial Structural Colors and Applications
Zhiyi Xuan et al.
INNOVATION (2021)
A mixture-density-based tandem optimization network for on-demand inverse design of thin-film high reflectors
Rohit Unni et al.
NANOPHOTONICS (2021)
Machine learning-assisted global optimization of photonic devices
Zhaxylyk A. Kudyshev et al.
NANOPHOTONICS (2021)
Hierarchical Design and Optimization of Silicon Photonics
Andrew Michaels et al.
IEEE JOURNAL OF SELECTED TOPICS IN QUANTUM ELECTRONICS (2020)
Design of high-performance plasmonic nanosensors by particle swarm optimization algorithm combined with machine learning
Ruoqin Yan et al.
NANOTECHNOLOGY (2020)
Robust Freeform Metasurface Design Based on Progressively Growing Generative Networks
Fufang Wen et al.
ACS PHOTONICS (2020)
Generative Adversarial Networks
Ian Goodfellow et al.
COMMUNICATIONS OF THE ACM (2020)
A data-efficient self-supervised deep learning model for design and characterization of nanophotonic structures
Wei Ma et al.
SCIENCE CHINA-PHYSICS MECHANICS & ASTRONOMY (2020)
Numerical Optimization Methods for Metasurfaces
Mahmoud M. R. Elsawy et al.
LASER & PHOTONICS REVIEWS (2020)
Design Space Reparameterization Enforces Hard Geometric Constraints in Inverse-Designed Nanophotonic Devices
Mingkun Chen et al.
ACS PHOTONICS (2020)
Simulator-based training of generative neural networks for the inverse design of metasurfaces
Jiaqi Jiang et al.
NANOPHOTONICS (2020)
Deep learning enabled inverse design in nanophotonics
Sunae So et al.
NANOPHOTONICS (2020)
Deep learning: a new tool for photonic nanostructure design
Ravi S. Hegde
NANOSCALE ADVANCES (2020)
Review of numerical optimization techniques for meta-device design [Invited]
Sawyer D. Campbell et al.
OPTICAL MATERIALS EXPRESS (2019)
Free-Form Diffractive Metagrating Design Based on Generative Adversarial Networks
Jiaqi Jiang et al.
ACS NANO (2019)
Probabilistic Representation and Inverse Design of Metamaterials Based on a Deep Generative Model with Semi-Supervised Learning Strategy
Wei Ma et al.
ADVANCED MATERIALS (2019)
A multi-frequency piezoelectric vibration energy harvester with liquid filled container as the proof mass
Donghuan Liu et al.
APPLIED PHYSICS LETTERS (2019)
Plasmonic colours predicted by deep learning
Joshua Baxter et al.
SCIENTIFIC REPORTS (2019)
A Bidirectional Deep Neural Network for Accurate Silicon Color Design
Li Gao et al.
ADVANCED MATERIALS (2019)
Designing nanophotonic structures using conditional deep convolutional generative adversarial networks
Sunae So et al.
NANOPHOTONICS (2019)
Full color generation with Fano-type resonant HfO2 nanopillars designed by a deep-learning approach
Omid Hemmatyar et al.
NANOSCALE (2019)
The inverse design of structural color using machine learning
Zhao Huang et al.
NANOSCALE (2019)
Deep-Learning-Enabled On-Demand Design of Chiral Metamaterials
Wei Ma et al.
ACS NANO (2018)
Training Deep Neural Networks for the Inverse Design of Nanophotonic Structures
Dianjing Liu et al.
ACS PHOTONICS (2018)
Generative Model for the Inverse Design of Metasurfaces
Zhaocheng Liu et al.
NANO LETTERS (2018)
Stepwise-Nanocavity-Assisted Transmissive Color Filter Array Microprints
Yasi Wang et al.
RESEARCH (2018)
Artificial Structural Color Pixels: A Review
Yuqian Zhao et al.
MATERIALS (2017)
Colorful solar selective absorber integrated with different colored units
Feiliang Chen et al.
OPTICS EXPRESS (2016)
Binary particle swarm optimized 2 x 2 power splitters in a standard foundry silicon photonic platform
Jason C. C. Mak et al.
OPTICS LETTERS (2016)
Reflective Color Filters and Monolithic Color Printing Based on Asymmetric Fabry-Perot Cavities Using Nickel as a Broadband Absorber
Zhengmei Yang et al.
ADVANCED OPTICAL MATERIALS (2016)
Near-Ideal Optical Metamaterial Absorbers with Super-Octave Bandwidth
Jeremy A. Bossard et al.
ACS NANO (2014)
Structural and Optical Properties of Chemical Bath Deposited Silver Oxide Thin Films: Role of Deposition Time
A. C. Nwanya et al.
ADVANCES IN MATERIALS SCIENCE AND ENGINEERING (2013)
Topology optimization for nano-photonics
Jakob S. Jensen et al.
LASER & PHOTONICS REVIEWS (2011)
Neural network inverse modeling and applications to microwave filter design
Humayun Kabir et al.
IEEE TRANSACTIONS ON MICROWAVE THEORY AND TECHNIQUES (2008)
The CIEDE2000 color-difference formula: Implementation notes, supplementary test data, and mathematical observations
G Sharma et al.
COLOR RESEARCH AND APPLICATION (2005)
General transfer-matrix method for optical multilayer systems with coherent, partially coherent, and incoherent interference
CC Katsidis et al.
APPLIED OPTICS (2002)