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Applied Sensor Fault Detection, Identification and Data Reconstruction

Version 4 2024-03-12, 12:25
Version 3 2023-10-29, 09:03
journal contribution
posted on 2024-03-12, 12:25 authored by Yu Zhang, Chris BinghamChris Bingham, Michael Gallimore

Sensor fault detection and identification (SFD/I) has attracted considerable attention in military applications, especially when safety- or mission-critical issues are of paramount importance. Here, two readily implementable approaches for SFD/I are proposed through hierarchical clustering and self-organizing map neural networks. The proposed methodologies are capable of detecting sensor faults from a large group of sensors measuring different physical quantities and achieve SFD/I in a single stage. Furthermore, it is possible to reconstruct the measurements expected from the faulted sensor and thereby facilitate improved unit availability. The efficacy of the proposed approaches is demonstrated through the use of measurements from experimental trials on a gas turbine. Ultimately, the underlying principles are readily transferable to other complex industrial and military systems.

History

School affiliated with

  • School of Engineering (Research Outputs)

Publication Title

Advances in Military Technology

Volume

8

Issue

2

Pages/Article Number

13-26

Publisher

University of Defence, Kounicova 65, 662 10 Brno, Czech Republic

ISSN

1802-2308

Date Submitted

2014-01-16

Date Accepted

2013-12-01

Date of First Publication

2013-12-01

Date of Final Publication

2013-12-01

Date Document First Uploaded

2014-01-15

ePrints ID

12955

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