• Photonics Research
  • Vol. 10, Issue 10, 2343 (2022)
Bing Duan1、†, Hanying Zou2、†, Jin-Hui Chen3、4, Chun Hui Ma1, Xingyun Zhao1, Xiaolong Zheng2, Chuan Wang5、6、*, Liang Liu2、7、*, and Daquan Yang1、8、*
Author Affiliations
  • 1State Key Laboratory of Information Photonics and Optical Communications, School of Information and Communication Engineering, Beijing University of Posts and Telecommunications, Beijing 100876, China
  • 2Beijing Key Laboratory of Intelligent Telecommunication Software and Multimedia, Beijing University of Posts and Telecommunications, Beijing 100876, China
  • 3Institute of Electromagnetics and Acoustics and Fujian Provincial Key Laboratory of Electromagnetic Wave Science and Detection Technology, Xiamen University, Xiamen 361005, China
  • 4Shenzhen Research Institute of Xiamen University, Shenzhen 518000, China
  • 5School of Artificial Intelligence, Beijing Normal University, Beijing 100875, China
  • 6e-mail:
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  • 8e-mail:
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    DOI: 10.1364/PRJ.464133 Cite this Article Set citation alerts
    Bing Duan, Hanying Zou, Jin-Hui Chen, Chun Hui Ma, Xingyun Zhao, Xiaolong Zheng, Chuan Wang, Liang Liu, Daquan Yang. High-precision whispering gallery microsensors with ergodic spectra empowered by machine learning[J]. Photonics Research, 2022, 10(10): 2343 Copy Citation Text show less
    Schematic of ergodic spectra sensing for pressure measurement, including (a) the experimental setup and (b) data analysis process. VOA, variable optical attenuator; FPC, fiber polarization controller; PD, photodetector; OSC, oscilloscope; AFG, arbitrary function generator.
    Fig. 1. Schematic of ergodic spectra sensing for pressure measurement, including (a) the experimental setup and (b) data analysis process. VOA, variable optical attenuator; FPC, fiber polarization controller; PD, photodetector; OSC, oscilloscope; AFG, arbitrary function generator.
    (a) Microscope images of the hollow silica capillary (left) and the fabricated MBR (right); (b) measured spectra around the resonant wavelength at 778.9532 nm; (c) transmission spectra of the MBR with the wavelength ranging from 778 to 780 nm; (d) long-term stability of MBR (inset, Allan variance of resonant wavelength); (e) dependence of the wavelength shift on pressure variations; (f) real-time wavelength shift with progressively increasing and decreasing pressure.
    Fig. 2. (a) Microscope images of the hollow silica capillary (left) and the fabricated MBR (right); (b) measured spectra around the resonant wavelength at 778.9532 nm; (c) transmission spectra of the MBR with the wavelength ranging from 778 to 780 nm; (d) long-term stability of MBR (inset, Allan variance of resonant wavelength); (e) dependence of the wavelength shift on pressure variations; (f) real-time wavelength shift with progressively increasing and decreasing pressure.
    (a) The transmission spectra are collected as raw data to form a database. (b) Conversion of transmission spectra to matrix, where the m and n are the number of samples and input neurons, respectively; (c) schematic diagram of the fully connected three-layer perceptron neural network used for ergodic spectra sensing; (d) MSE over different epochs; (e) effects of neurons’ number in hidden layer on prediction accuracy; (f) learning rate versus prediction accuracy.
    Fig. 3. (a) The transmission spectra are collected as raw data to form a database. (b) Conversion of transmission spectra to matrix, where the m and n are the number of samples and input neurons, respectively; (c) schematic diagram of the fully connected three-layer perceptron neural network used for ergodic spectra sensing; (d) MSE over different epochs; (e) effects of neurons’ number in hidden layer on prediction accuracy; (f) learning rate versus prediction accuracy.
    Pressure predicted by a fully connected three-layer perceptron neural network. (a) Dependence of predicted pressure on ground truth; (b) histogram of prediction errors of 3150 testing samples in (a); (c) comparison between predictions and ground truth of arbitrary unknown pressure; (d) histogram of prediction errors of 1650 testing samples in (c).
    Fig. 4. Pressure predicted by a fully connected three-layer perceptron neural network. (a) Dependence of predicted pressure on ground truth; (b) histogram of prediction errors of 3150 testing samples in (a); (c) comparison between predictions and ground truth of arbitrary unknown pressure; (d) histogram of prediction errors of 1650 testing samples in (c).
    (a) The prediction accuracy of 98.94% is obtained by extracting global features of a full spectrum with a fully connected three-layer perceptron neural network. (b) As a comparison, the prediction accuracy of only 87.43% is obtained by simply employing the resonant wavelength of multiple modes with a fully connected four-layer perceptron neural network.
    Fig. 5. (a) The prediction accuracy of 98.94% is obtained by extracting global features of a full spectrum with a fully connected three-layer perceptron neural network. (b) As a comparison, the prediction accuracy of only 87.43% is obtained by simply employing the resonant wavelength of multiple modes with a fully connected four-layer perceptron neural network.
    Bing Duan, Hanying Zou, Jin-Hui Chen, Chun Hui Ma, Xingyun Zhao, Xiaolong Zheng, Chuan Wang, Liang Liu, Daquan Yang. High-precision whispering gallery microsensors with ergodic spectra empowered by machine learning[J]. Photonics Research, 2022, 10(10): 2343
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