2015
DOI: 10.1007/s13320-015-0245-0
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Study on the algorithm of vibration source identification based on the optical fiber vibration pre-warning system

Abstract: Abstract:One of the key technologies for optical fiber vibration pre-warning system (OFVWS) refers to identifying the vibration source accurately from the detected vibration signals. Because of many kinds of vibration sources and complex geological structures, the implement of identifying vibration sources presents some interesting challenges which need to be overcome in order to achieve acceptable performance. This paper mainly conducts on the time domain and frequency domain analysis of the vibration signals… Show more

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Cited by 16 publications
(6 citation statements)
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References 5 publications
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“…In 2014, Q. Li et al carried out power spectrum analysis and used the total energy of each sampling point as a feature to locate the intrusion 142 . In 2015, H. Qu et al used energy information entropy as the feature to identify raindrop vibration source, and the fundamental frequency as the feature to identify construction machine and train or car passing by 167 . In the same year, C. Cao et al selected the total energy, the ratio of the low-band energy to the total energy, and the ratio of the peak amplitude to the average value of the spectrum as three features.…”
Section: Event Discriminationmentioning
confidence: 99%
“…In 2014, Q. Li et al carried out power spectrum analysis and used the total energy of each sampling point as a feature to locate the intrusion 142 . In 2015, H. Qu et al used energy information entropy as the feature to identify raindrop vibration source, and the fundamental frequency as the feature to identify construction machine and train or car passing by 167 . In the same year, C. Cao et al selected the total energy, the ratio of the low-band energy to the total energy, and the ratio of the peak amplitude to the average value of the spectrum as three features.…”
Section: Event Discriminationmentioning
confidence: 99%
“…H. Zhu et al set an empirical value as threshold and calculate the rate of measured trace crossing through the threshold as a feature, namely the level crossing rate [44]. In [45], Qu et al use the local maximum amplitude and short-time average energy as the feature. F. Jiang et al use spatial kurtosis as a time-domain feature, which denotes the rapid change of the measured light intensity over time [46].…”
Section: A Feature Extractionmentioning
confidence: 99%
“…It is known that the constant false alarm rate (CFAR) is a common target automatic detection method for radar signal processing [8]. Among them, the cell average constant false alarm rate (CA-CFAR) method is widely used in optical fiber vibration signals processing with the advantages of strong adaptability and low computation cost [9][10][11][12]. The CA-CFAR detector achieves the best performance when the background units are IID, and its performance is close to the detection performance of the Neyman-Pearson detector [13].…”
Section: Introductionmentioning
confidence: 99%