Shock recognition method of sns fiber based on deep learning of autoencoder
An autoencoder and deep learning technology, which is applied in the field of SNS optical fiber impact recognition based on autoencoder deep learning, can solve the problems of structural adaptation and environmental changes without adaptability, no definite theoretical guidance, and incomplete impact characteristics.
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[0052] Please refer to Figure 1 ~ Figure 4 As shown, the present invention is based on the distributed SNS multi-mode interference optical fiber sensor and the automatic encoder deep learning algorithm combining the flexible thin plate structure impact load identification method, including the following steps:
[0053] Step 1: Distributed single mode-no core-single mode (SNS) optical fiber sensor layout;
[0054] like image 3 , define a square monitoring area ABCD at the center of the four-sided fixed-supported aluminum alloy plate structure, where points A, B, C, and D are the vertices of the square arranged in a clockwise direction, and divide it into n×n grids, O is the center point position of the monitoring area in the positive direction; a total of 15 SNS sensors are arranged orthogonally at the four corner positions of the plate structure square monitoring area A, B, C, D and the center point position O respectively, respectively SNS1, SNS2, SNS3, SNS4, SNS5, SNS6, ...
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