• DocumentCode
    2692481
  • Title

    Automotive diagnostics using trainable classifiers: statistical testing and paradigm selection

  • Author

    Marko, K.A. ; Feldkamp, L.A. ; Puskorius, G.V.

  • fYear
    1990
  • fDate
    17-21 June 1990
  • Firstpage
    33
  • Abstract
    An analysis is presented of the requirements for developing a practical trainable classifier to detect and identify faults in vehicle powertrain systems. An examination is made of requirements on the data sets used for training and testing and the criteria needed to select the most appropriate classifier for a particular family of problems. Empirical results supporting the authors´ hypothesis are presented based on an analysis of two data sets drawn under rather different circumstances from test vehicles with faults introduced. Several different classifier forms are applied to these data sets, and their performance is evaluated. Despite similar performance on simple statistical tests, the classifies exhibit significant performance variations on more rigorous tests, and therefore viable criteria for selecting the most appropriate classifiers can be established
  • Keywords
    automotive electronics; fault location; learning systems; pattern recognition; data sets; fault detection; statistical tests; testing; trainable classifiers; training; vehicle powertrain systems;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Neural Networks, 1990., 1990 IJCNN International Joint Conference on
  • Conference_Location
    San Diego, CA, USA
  • Type

    conf

  • DOI
    10.1109/IJCNN.1990.137540
  • Filename
    5726503