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Empirical mode decomposition of the acceleration response of a prismatic beam subject to a moving load to Identify multiple damage locations
Author(s)
Date Issued
2012-06
Date Available
2014-11-21T10:05:06Z
Abstract
Empirical Mode Decomposition (EMD) is a technique that converts the measured signal into a number of basic functions known as intrinsic mode functions. The EMD-based damage detection algorithm relies on the principle that a sudden loss of stiffness in a structural member will cause a discontinuity in the measured response that can be detected through a distinctive spike in the filtered intrinsic mode function. Recent studies have shown that applying EMD to the acceleration response, due to the crossing of a constant load over a beam finite element model, can be used to detect a single damaged location. In this paper, the technique is further tested using the response of a discretized finite element beam with multiple damaged sections modeled as localized losses of stiffness. The ability of the algorithm to detect more than one damaged section is analysed for a variety of scenarios including a range of bridge lengths, speeds of the moving load and noise levels. The use of a moving average filter on the acceleration response, prior to applying EMD, is shown to improve the sensitivity to damage. The influence of the number of measurement points and their distance to the damaged sections on the accuracy of the predicted damage is also discussed.
Sponsorship
Irish Research Council for Science, Engineering and Technology
Type of Material
Journal Article
Publisher
Hindawi
Journal
Shock and Vibration
Volume
19
Issue
5
Start Page
845
End Page
856
Copyright (Published Version)
2012 Hindawi Publishing Corporation
Language
English
Status of Item
Peer reviewed
This item is made available under a Creative Commons License
File(s)
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Name
Meredith_etal_2012_EMD_of_acceleration_response_of_a_prismatic_beam_subjected_to_a_moving_load.pdf
Size
608.5 KB
Format
Adobe PDF
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