2019
DOI: 10.1002/stc.2436
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Automated peak picking using region‐based convolutional neural network for operational modal analysis

Abstract: Peak picking is used to determine locations of salient peaks in a graphical representation of a physical quantity. It is often used to extract possible natural frequencies from the frequency domain representation of structural responses.One of the challenges in peak picking is to establish a method to automatically distinguish peaks from data containing noise peaks. As selecting peaks intrinsically depends on human perception, algorithms for automated peak picking have exhibited only partial success to date. T… Show more

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Cited by 37 publications
(22 citation statements)
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“…However, the user-defined threshold is dependent on the type of civil structure and may fail to remove undesirable peaks due to noise. [18][19][20] Peak-picking that identifies local maxima near predefined natural frequencies may identify undesirable peaks when the modal properties of the cable are altered due to structural damage resulting from environmental effects. 18 Currently, deep learning has shown considerable potential for automated peak-picking based on frequency domain representations of structural responses, making it possible to extract natural frequencies automatically.…”
Section: Introductionmentioning
confidence: 99%
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“…However, the user-defined threshold is dependent on the type of civil structure and may fail to remove undesirable peaks due to noise. [18][19][20] Peak-picking that identifies local maxima near predefined natural frequencies may identify undesirable peaks when the modal properties of the cable are altered due to structural damage resulting from environmental effects. 18 Currently, deep learning has shown considerable potential for automated peak-picking based on frequency domain representations of structural responses, making it possible to extract natural frequencies automatically.…”
Section: Introductionmentioning
confidence: 99%
“…[18][19][20] Peak-picking that identifies local maxima near predefined natural frequencies may identify undesirable peaks when the modal properties of the cable are altered due to structural damage resulting from environmental effects. 18 Currently, deep learning has shown considerable potential for automated peak-picking based on frequency domain representations of structural responses, making it possible to extract natural frequencies automatically. 18 However, the proposed peak-picking method may detect undesirable peaks when applied to the cable response, because this method is tailored to deal with responses from bridge components, such as beams, trusses, and cables.…”
Section: Introductionmentioning
confidence: 99%
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“…A spatial timefrequency data set was established using multi-dimensional vibration signals, and different railway events were classified by monitoring data that contained environmental noise. Kim and Sim (2019) proposed a framework composed of a fast R-CNN and a region-suggestion network based on deep learning that can automatically extract peaks in frequency-domain pattern recognition. Tang et al (2020) presented an overview of recognition and localization methods for vision-based fruitpicking robots.…”
Section: Introductionmentioning
confidence: 99%
“…have a similar form as matrix singular value decomposition (SVD)[40]. Therefore it's possible to pick peaks from the measured vibration signals' singular value spectrum using manual and automated algorithms[41] to identify modal frequency while the corresponding singular vectors is taken as mode shape. Generally, the first singular walue is considered in PSD matrix(dB) 1st singular value 2nd singular value 3rd singular value (b) Auto-power spectrum of strain Singular value spectrum of monitoring data: black points are peaks picked manualy this process.…”
mentioning
confidence: 99%