Multievent localization for loop-based Sagnac sensing system using machine learning

In optical sensing applications such as pipeline monitoring and intrusion detection systems, accurate localization of the event is crucial for timely and effective response. This paper experimentally demonstrates multievent localization for long perimeter monitoring using a Sagnac interferometer loo...

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Veröffentlicht in:Optics express 2023-07, Vol.31 (15), p.24005-24024
Hauptverfasser: Ali, Jameel, Almaiman, Ahmed, Ragheb, Amr M, Esmail, Maged A, Almohimmah, Esam M, Alshebeili, Saleh A
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container_end_page 24024
container_issue 15
container_start_page 24005
container_title Optics express
container_volume 31
creator Ali, Jameel
Almaiman, Ahmed
Ragheb, Amr M
Esmail, Maged A
Almohimmah, Esam M
Alshebeili, Saleh A
description In optical sensing applications such as pipeline monitoring and intrusion detection systems, accurate localization of the event is crucial for timely and effective response. This paper experimentally demonstrates multievent localization for long perimeter monitoring using a Sagnac interferometer loop sensor and machine learning techniques. The proposed method considers the multievent localization problem as a multilabel multiclassification problem by dividing the optical fiber into 250 segments. A deep neural network (DNN) model is used to predict the likelihood of event occurrence in each segment and accurately locate the events. The sensing loop comprises 106.245 km of single-mode fiber, equivalent to ∼50 km of effective sensing distance. The training dataset is constructed in simulation using VPItransmissionMaker, and the proposed machine learning model's complexity is reduced by using discrete cosine transform (DCT). The designed DNN is tested for event localization in both simulation and experiment. The simulation results show that the proposed model achieves an accuracy of 99% in predicting the location of one event within one segment error, an accuracy of 95% in predicting the location of one event out of the two within one segment error, and an accuracy of 78% in predicting the location of the two events within one segment error. The experimental results validate the simulation ones, demonstrating the proposed model's effectiveness in accurately localizing events with high precision. In addition, the paper includes a discussion on extending the proposed model to sense more than two events simultaneously.
doi_str_mv 10.1364/OE.495367
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title Multievent localization for loop-based Sagnac sensing system using machine learning
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