• DocumentCode
    743052
  • Title

    Comparison of Data-Driven Reconstruction Methods For Fault Detection

  • Author

    Baraldi, Piero ; Di Maio, Francesco ; Genini, Davide ; Zio, Enrico

  • Author_Institution
    Energy Dept., Politec. di Milano, Milan, Italy
  • Volume
    64
  • Issue
    3
  • fYear
    2015
  • Firstpage
    852
  • Lastpage
    860
  • Abstract
    This work proposes a comparison of three data-driven signal reconstruction methods, which are Auto-Associative Kernel Regression (AAKR), Fuzzy Similarity (FS), and Elman Recurrent Neural Network (RNN), for fault detection based on the difference between the signal observations and the reconstructions of the signal in normal (typical) operating conditions. The aim is to show the capabilities and drawbacks of the methods, and propose a strategy for the aggregation of their outcomes, to overcome their limitations. For this purpose, the performance of each method is evaluated in terms of fault detection capability, considering accuracy, robustness, and resistance to the spillover effect of the obtained signal reconstructions. The comparison is supported by the application to a real industrial case study regarding temperature signals collected during operation of a rotating machine in an energy production plant. An ensemble of the three methods is proposed to overcome the limitations of the three methods.
  • Keywords
    electric machine analysis computing; electric machines; fault diagnosis; fuzzy set theory; recurrent neural nets; regression analysis; signal reconstruction; AAKR; Elman recurrent neural network; FS; RNN; auto-associative kernel regression; data-driven signal reconstruction methods; energy production plant; fault detection; fuzzy similarity; rotating machine; signal observations; temperature signals; Fault detection; Reconstruction algorithms; Robustness; Signal reconstruction; Time measurement; Training; Trajectory; Auto-associative kernel regression; Elman recurrent neural network; ensemble of methods; fault detection; fuzzy similarity; signal reconstruction;
  • fLanguage
    English
  • Journal_Title
    Reliability, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0018-9529
  • Type

    jour

  • DOI
    10.1109/TR.2015.2436384
  • Filename
    7115190