• Photonics Research
  • Vol. 7, Issue 3, 368 (2019)
Tian Zhang1, Jia Wang1, Qi Liu1, Jinzan Zhou1, Jian Dai1, Xu Han2, Yue Zhou1, and Kun Xu1、*
Author Affiliations
  • 1State Key Laboratory of Information Photonics and Optical Communications, Beijing University of Posts and Telecommunications, Beijing 100876, China
  • 2Huawei Technologies Co., Ltd., Shenzhen 518129, China
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    DOI: 10.1364/PRJ.7.000368 Cite this Article Set citation alerts
    Tian Zhang, Jia Wang, Qi Liu, Jinzan Zhou, Jian Dai, Xu Han, Yue Zhou, Kun Xu. Efficient spectrum prediction and inverse design for plasmonic waveguide systems based on artificial neural networks[J]. Photonics Research, 2019, 7(3): 368 Copy Citation Text show less

    Abstract

    In this paper, we propose a novel approach to achieve spectrum prediction, parameter fitting, inverse design, and performance optimization for the plasmonic waveguide-coupled with cavities structure (PWCCS) based on artificial neural networks (ANNs). The Fano resonance and plasmon-induced transparency effect originated from the PWCCS have been selected as illustrations to verify the effectiveness of ANNs. We use the genetic algorithm to design the network architecture and select the hyperparameters for ANNs. Once ANNs are trained by using a small sampling of the data generated by the Monte Carlo method, the transmission spectra predicted by the ANNs are quite approximate to the simulated results. The physical mechanisms behind the phenomena are discussed theoretically, and the uncertain parameters in the theoretical models are fitted by utilizing the trained ANNs. More importantly, our results demonstrate that this model-driven method not only realizes the inverse design of the PWCCS with high precision but also optimizes some critical performance metrics for the transmission spectrum. Compared with previous works, we construct a novel model-driven analysis method for the PWCCS that is expected to have significant applications in the device design, performance optimization, variability analysis, defect detection, theoretical modeling, optical interconnects, and so on.
    1J2=1i=0N(ytrueiypredi)2i=0N(ytrueiypredi/N)2,(1)

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    Tian Zhang, Jia Wang, Qi Liu, Jinzan Zhou, Jian Dai, Xu Han, Yue Zhou, Kun Xu. Efficient spectrum prediction and inverse design for plasmonic waveguide systems based on artificial neural networks[J]. Photonics Research, 2019, 7(3): 368
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