• DocumentCode
    58810
  • Title

    Learning in the Model Space for Cognitive Fault Diagnosis

  • Author

    Huanhuan Chen ; Tino, Peter ; Rodan, Ali ; Xin Yao

  • Author_Institution
    Centre of Excellence for Res. in Comput. Intell. & Applic., Univ. of Birmingham, Birmingham, UK
  • Volume
    25
  • Issue
    1
  • fYear
    2014
  • fDate
    Jan. 2014
  • Firstpage
    124
  • Lastpage
    136
  • Abstract
    The emergence of large sensor networks has facilitated the collection of large amounts of real-time data to monitor and control complex engineering systems. However, in many cases the collected data may be incomplete or inconsistent, while the underlying environment may be time-varying or unformulated. In this paper, we develop an innovative cognitive fault diagnosis framework that tackles the above challenges. This framework investigates fault diagnosis in the model space instead of the signal space. Learning in the model space is implemented by fitting a series of models using a series of signal segments selected with a sliding window. By investigating the learning techniques in the fitted model space, faulty models can be discriminated from healthy models using a one-class learning algorithm. The framework enables us to construct a fault library when unknown faults occur, which can be regarded as cognitive fault isolation. This paper also theoretically investigates how to measure the pairwise distance between two models in the model space and incorporates the model distance into the learning algorithm in the model space. The results on three benchmark applications and one simulated model for the Barcelona water distribution network confirm the effectiveness of the proposed framework.
  • Keywords
    cognitive systems; fault diagnosis; learning (artificial intelligence); water supply; Barcelona water distribution network; cognitive fault isolation; complex engineering systems; fault library; fitted model space; innovative cognitive fault diagnosis framework; large sensor networks; learning algorithm; one-class learning algorithm; signal segments; signal space; sliding window; Cognitive fault diagnosis; fault detection; learning in the model space; one class learning; reservoir computing (RC);
  • fLanguage
    English
  • Journal_Title
    Neural Networks and Learning Systems, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    2162-237X
  • Type

    jour

  • DOI
    10.1109/TNNLS.2013.2256797
  • Filename
    6515601