2020
DOI: 10.3390/photonics7040079
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Comparative Analysis on the Deployment of Machine Learning Algorithms in the Distributed Brillouin Optical Time Domain Analysis (BOTDA) Fiber Sensor

Abstract: This paper demonstrates a comparative analysis of five machine learning (ML) algorithms for improving the signal processing time and temperature prediction accuracy in Brillouin optical time domain analysis (BOTDA) fiber sensor. The algorithms analyzed were generalized linear model (GLM), deep learning (DL), random forest (RF), gradient boosted trees (GBT), and support vector machine (SVM). In this proof-of-concept experiment, the performance of each algorithm was investigated by pairing Brillouin gain spectru… Show more

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Cited by 24 publications
(20 citation statements)
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“…The undesired increase in the time duration properties and general shape of the filtered signals would impair several of the performance parameters of the coded TDM-FBG sensor. Our ongoing work focuses on merging the hybrid deployment of SG and MM filters and machine learning techniques (ML) in several aspects of Golay coded DOFS [ 36 , 37 ].…”
Section: Discussionmentioning
confidence: 99%
“…The undesired increase in the time duration properties and general shape of the filtered signals would impair several of the performance parameters of the coded TDM-FBG sensor. Our ongoing work focuses on merging the hybrid deployment of SG and MM filters and machine learning techniques (ML) in several aspects of Golay coded DOFS [ 36 , 37 ].…”
Section: Discussionmentioning
confidence: 99%
“…The phase transformation, the deposition of materials, the uncertainty of corrosion distribution, the laser parameters, and the laser working path will affect the cleaning procedure and result. In this study, an SVM [21] is considered to search for suitable laser process parameters under complex working conditions [22]. In the training stage, a variety of image features and laser parameters are used as the input vector, and the qualified or unqualified evaluation result is regarded as the SVM output.…”
Section: Cleaning Performance Prediction Using Particle Swarm Optimiz...mentioning
confidence: 99%
“…Particularly in BOTDA sensing, machine learning algorithms based on artificial neural networks (ANN) [ 12 , 13 , 14 ] and support vector machines (SVM) [ 15 ] were implemented to extract the Brillouin frequency shift (BFS) outperforming conventional algorithms based on Lorentzian curve fitting (LCF). Because the extraction of temperature or strain necessitates the estimation of the temperature or strain coefficient, respectively, machine learning models were trained to predict the measurand of interest directly from the Brillouin gain spectrum providing a more compact solution [ 16 , 17 , 18 ]. Additionally, convolutional neural networks (CNNs) were trained for denoising of Brillouin gain spectra (BGS), facilitating the estimation of the Brillouin frequency shift [ 19 ].…”
Section: Introductionmentioning
confidence: 99%