• DocumentCode
    720042
  • Title

    Applicability of linear and nonlinear principal component analysis for damage detection

  • Author

    Santos, A.D.F. ; Silva, M.F.M. ; Sales, C.S. ; Costa, J.C.W.A. ; Figueiredo, E.

  • Author_Institution
    Appl. Electromagn. Lab., Univ. Fed. do Para, Belem, Brazil
  • fYear
    2015
  • fDate
    11-14 May 2015
  • Firstpage
    869
  • Lastpage
    874
  • Abstract
    The goal of this work is to detect structural damage using vibration-based damage identification approaches even when the damage-sensitive features are camouflaged by the presence of operational and environmental conditions. For feature classification purposes, four machine learning algorithms are applied based on the principal component analysis (PCA), nonlinear PCA, kernel PCA and greedy kernel PCA. Time-series data from an array of accelerometers under several structural state conditions were obtained from a well-known base-excited three-story frame structure. The main contribution of this work is the applicability of those PCA-based algorithms, for damage detection, in the presence of operational and environmental effects. For these specific data sets, one can infer that the greedy kernel PCA algorithm is more appropriate when one wants to minimize false-positive indications of damage without increasing, significantly, the false-negative indications of damage.
  • Keywords
    accelerometers; failure analysis; greedy algorithms; learning (artificial intelligence); pattern classification; principal component analysis; structural engineering computing; time series; vibrations; accelerometers; base-excited three-story frame structure; damage-sensitive features; environmental conditions; environmental effects; false-negative indications; false-positive indications; greedy kernel PCA-based algorithms; linear principal component analysis; machine learning algorithms; nonlinear PCA; nonlinear principal component analysis; operational conditions; operational effects; structural damage detection; structural state conditions; time-series data; vibration-based damage identification approaches; Data models; Feature extraction; Kernel; Machine learning algorithms; Mathematical model; Principal component analysis; Training; PCA; SHM; damage detection;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Instrumentation and Measurement Technology Conference (I2MTC), 2015 IEEE International
  • Conference_Location
    Pisa
  • Type

    conf

  • DOI
    10.1109/I2MTC.2015.7151383
  • Filename
    7151383