Fault isolability with different forms of the faults-symptoms relation

Jan Maciej Kościelny; Michał Syfert; Kornel Rostek; Anna Sztyber

International Journal of Applied Mathematics and Computer Science (2016)

  • Volume: 26, Issue: 4, page 815-826
  • ISSN: 1641-876X

Abstract

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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.

How to cite

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Jan Maciej Kościelny, et al. "Fault isolability with different forms of the faults-symptoms relation." International Journal of Applied Mathematics and Computer Science 26.4 (2016): 815-826. <http://eudml.org/doc/287175>.

@article{JanMaciejKościelny2016,
abstract = {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.},
author = {Jan Maciej Kościelny, Michał Syfert, Kornel Rostek, Anna Sztyber},
journal = {International Journal of Applied Mathematics and Computer Science},
keywords = {diagnosis; fault diagnosis; fault isolation; sequences; information systems},
language = {eng},
number = {4},
pages = {815-826},
title = {Fault isolability with different forms of the faults-symptoms relation},
url = {http://eudml.org/doc/287175},
volume = {26},
year = {2016},
}

TY - JOUR
AU - Jan Maciej Kościelny
AU - Michał Syfert
AU - Kornel Rostek
AU - Anna Sztyber
TI - Fault isolability with different forms of the faults-symptoms relation
JO - International Journal of Applied Mathematics and Computer Science
PY - 2016
VL - 26
IS - 4
SP - 815
EP - 826
AB - 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.
LA - eng
KW - diagnosis; fault diagnosis; fault isolation; sequences; information systems
UR - http://eudml.org/doc/287175
ER -

References

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