Semiconductor Optoelectronics, Volume. 43, Issue 1, 188(2022)

A Fast Strain Demodulation Method for Intelligent Overhead Line Based on Artificial Neural Network

YE Mingwu1, ZHONG Chaoyi1, ZHANG Lujuan1, ZHENG Xingyue1, LEI Yu1, and ZHAO Lijuan2,3,4、*
Author Affiliations
  • 1[in Chinese]
  • 2[in Chinese]
  • 3[in Chinese]
  • 4[in Chinese]
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    In order to improve the real-time performance in situation awareness of intelligent optical fiber composite overhead line, the artificial neural network (ANN) method is introduced into the strain demodulation along the optical fiber. The structure of the ANN for strain demodulation is determined. The programs of the least-squares spectrum fitting method and ANN method based on Lorentzian model are written. The ANN is trained by the Brillouin spectra with different signal-to-noise ratios (SNRs) and Brillouin frequency shifts. The trained ANN is applied to the optical fiber strain measurement for an optical fiber composite overhead line. The results of the two methods are compared from different aspects. The results indicate that the ANN method can effectively obtain the Brillouin frequency shift along the optical fiber and then obtain the strain, which has the similar accuracy as the spectral fitting method. However, its computation time is much less than that of the spectrum fitting method. The work provides a reference value for improving the real-time performance of situation awareness of intelligent optical fiber composite overhead lines.

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    YE Mingwu, ZHONG Chaoyi, ZHANG Lujuan, ZHENG Xingyue, LEI Yu, ZHAO Lijuan. A Fast Strain Demodulation Method for Intelligent Overhead Line Based on Artificial Neural Network[J]. Semiconductor Optoelectronics, 2022, 43(1): 188

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    Paper Information

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    Received: Sep. 24, 2021

    Accepted: --

    Published Online: Mar. 24, 2022

    The Author Email: Lijuan ZHAO (hdzlj@126.com)

    DOI:10.16818/j.issn1001-5868.2021092401

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