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Features for damage detection with insensitivity to environmental and operational variations
by
Worden, K.
, Manson, G.
, Cross, E. J.
, Pierce, S. G.
in
Chambers
/ Damage
/ Damage detection
/ Damage-Sensitive Features
/ Data normalization
/ Datasets
/ Econometrics
/ Environmental And Operational Variability
/ Environmental disorders
/ Health monitoring (engineering)
/ Inspection
/ Line spectra
/ Mathematical analysis
/ Mathematical vectors
/ Novelty detection
/ Outliers
/ Principal components analysis
/ Statistical variance
/ Structural Health Monitoring
/ Yield point
2012
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Features for damage detection with insensitivity to environmental and operational variations
by
Worden, K.
, Manson, G.
, Cross, E. J.
, Pierce, S. G.
in
Chambers
/ Damage
/ Damage detection
/ Damage-Sensitive Features
/ Data normalization
/ Datasets
/ Econometrics
/ Environmental And Operational Variability
/ Environmental disorders
/ Health monitoring (engineering)
/ Inspection
/ Line spectra
/ Mathematical analysis
/ Mathematical vectors
/ Novelty detection
/ Outliers
/ Principal components analysis
/ Statistical variance
/ Structural Health Monitoring
/ Yield point
2012
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Do you wish to request the book?
Features for damage detection with insensitivity to environmental and operational variations
by
Worden, K.
, Manson, G.
, Cross, E. J.
, Pierce, S. G.
in
Chambers
/ Damage
/ Damage detection
/ Damage-Sensitive Features
/ Data normalization
/ Datasets
/ Econometrics
/ Environmental And Operational Variability
/ Environmental disorders
/ Health monitoring (engineering)
/ Inspection
/ Line spectra
/ Mathematical analysis
/ Mathematical vectors
/ Novelty detection
/ Outliers
/ Principal components analysis
/ Statistical variance
/ Structural Health Monitoring
/ Yield point
2012
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Features for damage detection with insensitivity to environmental and operational variations
Journal Article
Features for damage detection with insensitivity to environmental and operational variations
2012
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Overview
This paper explores and compares the application of three different approaches to the data normalization problem in structural health monitoring (SHM), which concerns the removal of confounding trends induced by varying operational conditions from a measured structural response that correlates with damage. The methodologies for singling out or creating damage-sensitive features that are insensitive to environmental influences explored here include cointegration, outlier analysis and an approach relying on principal component analysis. The application of cointegration is a new idea for SHM from the field of econometrics, and this is the first work in which it has been comprehensively applied to an SHM problem. Results when applying cointegration are compared with results from the more familiar outlier analysis and an approach that uses minor principal components. The ability of these methods for removing the effects of environmental/operational variations from damage-sensitive features is demonstrated and compared with benchmark data from the Brite-Euram project DAMASCOS (BE97 4213), which was collected from a Lamb-wave inspection of a composite panel subject to temperature variations in an environmental chamber.
Publisher
The Royal Society Publishing,The Royal Society
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