Characterization of DWT as Denoising Method for ?-OTDR Signal

DAS system based on ?-OTDR technique suffers from random noises that affect the signalto-noise-ratio of the extracted signals. This results in high false alarm rate, reducing the capabilities of the systems to detect vibration signals. This paper presented a thorough analysis of a denoising method u...

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Main Authors: Yusri M.S., Faisal B., Ismail A., Saleh N.L., Ismail M.F., Nordin N.D., Sulaiman A.H., Abdullah F., Jamaludin M.Z.
Other Authors: 57480859600
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Published: Universiti Malaysia Perlis 2023
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spelling my.uniten.dspace-258512023-05-29T17:05:17Z Characterization of DWT as Denoising Method for ?-OTDR Signal Yusri M.S. Faisal B. Ismail A. Saleh N.L. Ismail M.F. Nordin N.D. Sulaiman A.H. Abdullah F. Jamaludin M.Z. 57480859600 57209973264 36023817800 57198797134 57211721986 57217851042 36810678100 56613644500 57216839721 DAS system based on ?-OTDR technique suffers from random noises that affect the signalto-noise-ratio of the extracted signals. This results in high false alarm rate, reducing the capabilities of the systems to detect vibration signals. This paper presented a thorough analysis of a denoising method using discrete wavelet function (DWT). We implemented and compared different mother wavelets such as Symlet 4, Haar, Daubechies 4 (Db4), Biorthogonal 4.4 (Bior4.4), Coiflets 3 (Coif3), Discrete approximation of Meyer wavelet (dmey), Fej�r-Korovkin filters 8 (fk8) and Reverse Biorthogonal 6.8 (rbio6.8), using multiple levels of decomposition. Four denoising thresholds, Empirical Bayes, Universal Threshold, Stein's Unbiased Risk Estimation (SURE), and Minimax Estimation (Minimax) were characterized using soft threshold rule. From the results obtained, the combination of the Daubechies 4 wavelet function, level 3 decomposition, SURE denoising threshold with soft threshold rule produces the best denoising performance on the ?-OTDR data. � 2021, Universiti Malaysia Perlis. All rights reserved. Final 2023-05-29T09:05:17Z 2023-05-29T09:05:17Z 2021 Article 2-s2.0-85126847328 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85126847328&partnerID=40&md5=a9a61e55adb6d66d3a3c0792258d29e3 https://irepository.uniten.edu.my/handle/123456789/25851 14 Special Issue InCAPE 333 340 Universiti Malaysia Perlis Scopus
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description DAS system based on ?-OTDR technique suffers from random noises that affect the signalto-noise-ratio of the extracted signals. This results in high false alarm rate, reducing the capabilities of the systems to detect vibration signals. This paper presented a thorough analysis of a denoising method using discrete wavelet function (DWT). We implemented and compared different mother wavelets such as Symlet 4, Haar, Daubechies 4 (Db4), Biorthogonal 4.4 (Bior4.4), Coiflets 3 (Coif3), Discrete approximation of Meyer wavelet (dmey), Fej�r-Korovkin filters 8 (fk8) and Reverse Biorthogonal 6.8 (rbio6.8), using multiple levels of decomposition. Four denoising thresholds, Empirical Bayes, Universal Threshold, Stein's Unbiased Risk Estimation (SURE), and Minimax Estimation (Minimax) were characterized using soft threshold rule. From the results obtained, the combination of the Daubechies 4 wavelet function, level 3 decomposition, SURE denoising threshold with soft threshold rule produces the best denoising performance on the ?-OTDR data. � 2021, Universiti Malaysia Perlis. All rights reserved.
author2 57480859600
author_facet 57480859600
Yusri M.S.
Faisal B.
Ismail A.
Saleh N.L.
Ismail M.F.
Nordin N.D.
Sulaiman A.H.
Abdullah F.
Jamaludin M.Z.
format Article
author Yusri M.S.
Faisal B.
Ismail A.
Saleh N.L.
Ismail M.F.
Nordin N.D.
Sulaiman A.H.
Abdullah F.
Jamaludin M.Z.
spellingShingle Yusri M.S.
Faisal B.
Ismail A.
Saleh N.L.
Ismail M.F.
Nordin N.D.
Sulaiman A.H.
Abdullah F.
Jamaludin M.Z.
Characterization of DWT as Denoising Method for ?-OTDR Signal
author_sort Yusri M.S.
title Characterization of DWT as Denoising Method for ?-OTDR Signal
title_short Characterization of DWT as Denoising Method for ?-OTDR Signal
title_full Characterization of DWT as Denoising Method for ?-OTDR Signal
title_fullStr Characterization of DWT as Denoising Method for ?-OTDR Signal
title_full_unstemmed Characterization of DWT as Denoising Method for ?-OTDR Signal
title_sort characterization of dwt as denoising method for ?-otdr signal
publisher Universiti Malaysia Perlis
publishDate 2023
_version_ 1806425702837256192
score 13.214268