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2016 | 26 | 4 | 815-826
Tytuł artykułu

Fault isolability with different forms of the faults-symptoms relation

Treść / Zawartość
Warianty tytułu
Języki publikacji
EN
Abstrakty
EN
The definitions and conditions for fault isolability of single faults for various forms of the diagnostic relation are reviewed. Fault isolability and unisolability on the basis of a binary diagnostic matrix are analyzed. Definitions for conditional and unconditional isolability and unisolability on the basis of a fault information system (FIS), symptom sequences and directional residuals are formulated. General definitions for conditional and unconditional isolability and unisolability in the cases of simultaneous evaluation of diagnostic signal values and a sequence of symptoms are provided. A comprehensive example is discussed.
Rocznik
Tom
26
Numer
4
Strony
815-826
Opis fizyczny
Daty
wydano
2016
otrzymano
2016-01-18
poprawiono
2016-06-08
poprawiono
2016-07-19
zaakceptowano
2016-08-14
Twórcy
  • Institute of Automatic Control and Robotics, Warsaw University of Technology, ul. Św. Andrzeja Boboli 8, 02-525 Warsaw, Poland
  • Institute of Automatic Control and Robotics, Warsaw University of Technology, ul. Św. Andrzeja Boboli 8, 02-525 Warsaw, Poland
  • Institute of Automatic Control and Robotics, Warsaw University of Technology, ul. Św. Andrzeja Boboli 8, 02-525 Warsaw, Poland
autor
  • Institute of Automatic Control and Robotics, Warsaw University of Technology, ul. Św. Andrzeja Boboli 8, 02-525 Warsaw, Poland
Bibliografia
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  • Düştegör, D., Frisk, E., Cocquempot, V., Krysander, M. and Staroswiecki, M. (2006). Structural analysis of fault isolability in the damadics benchmark, Control Engineering Practice 14(6): 597-608, DOI: 10.1016/j.conengprac.2005.04.008.
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  • Kościelny, J.M., Bartyś, M., Rzepiejewski, P. and Sa Da Costa, J. (2006). Actuator fault distinguishability study for the damadics benchmark problem, Control Engineering Practice 14(6): 645-652, DOI: 10.1016/j.conengprac.2005.06.014.
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  • Travé-Massuyes, L., Escobet, T. and Olive, X. (2006). Diagnosability analysis based on component-supported analytical redundancy relations, IEEE Transactions on Systems, Man and Cybernetics A: Systems and Humans 36(6): 1146-1160, DOI: 10.1109/TSMCA.2006.878984.
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Typ dokumentu
Bibliografia
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