Multi-peak detection algorithm for FBG array sensing based on self-adaptive thresholding

When dealing with the reflected signals from an array of optical fiber Bragg gratings (FBGs) in fiber optic sensing, the conventional multi-peak detection algorithm often faces challenges due to the presence of noise interference, potentially resulting in demodulation failures. In this study, we pro...

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Published inOptics express Vol. 33; no. 13; p. 27753
Main Authors Xiong, Xuanwei, Zhang, Xiyuan, Ma, Sen, Wan, Xingyu, Liu, Chen, Lou, Yuyang, Wu, Jianwei, Yang, Tianyu, Liu, Huanhuan, Dong, Yuming
Format Journal Article
LanguageEnglish
Published United States 30.06.2025
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ISSN1094-4087
1094-4087
DOI10.1364/OE.551106

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Summary:When dealing with the reflected signals from an array of optical fiber Bragg gratings (FBGs) in fiber optic sensing, the conventional multi-peak detection algorithm often faces challenges due to the presence of noise interference, potentially resulting in demodulation failures. In this study, we propose a robust self-adaptive multi-peak detection algorithm. First, the reflected signals from the optical fiber Bragg grating array are normalized to enhance the stability of the algorithm. Next, an improved thresholding function in a wavelet transform denoising method is introduced to process the normalized FBG signals, effectively reducing high-frequency noise within the signals. Following this, the spectrum is segmented using the Hilbert transform and a self-adaptive threshold mathematical model, and then achieve stable 3 dB bandwidth spectrum segmentation by using spectrum expansion techniques. Lastly, the traditional peak detection algorithm is applied to extract the Bragg wavelengths from the segmented sub-spectral signals. Theoretical analysis and experimental results provide comprehensive evidence that employing a self-adaptive threshold for spectral segmentation significantly enhances the algorithm’s portability across diverse scenarios, thereby improving the demodulation speed and stability of the algorithm. The proposed algorithm provides a precise and noise-resistant demodulation method for handling multi-peak signals in quasi-distributed sensing networks.
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ISSN:1094-4087
1094-4087
DOI:10.1364/OE.551106