It is challenging to have a good fault diagnostic scheme that can distinguish between model uncertainties and occurrence of faults, which helps in reducing false alarms and missed detections. In this paper, a dynamic threshold algorithm is developed for aircraft engine sensor fault diagnosis that accommodates parametric uncertainties. Using the robustness analysis of parametric uncertain systems, we generate upper-and-lower bound trajectories for the dynamic threshold. The extent of parametric uncertainties is assumed to be such that the perturbed eigenvalues reside in a set of distinct circular regions. Dedicated observer scheme is used for engine sensor fault diagnosis design. The residuals are errors between estimated state variables from a bank of Kalman filters. With this design approach, the residual crossing the upper-and-lower bounds of the dynamic threshold indicates the occurrence of fault. Application to an aircraft gas turbine engine Component Level Model clearly illustrates the improved performance of the proposed method.
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ASME 2008 Dynamic Systems and Control Conference
October 20–22, 2008
Ann Arbor, Michigan, USA
Conference Sponsors:
- Dynamic Systems and Control Division
ISBN:
978-0-7918-4335-2
PROCEEDINGS PAPER
Dynamic Threshold Method Based Aircraft Engine Sensor Fault Diagnosis
Rama K. Yedavalli
Rama K. Yedavalli
Ohio State University, Columbus, OH
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Wenfei Li
Ohio State University, Columbus, OH
Rama K. Yedavalli
Ohio State University, Columbus, OH
Paper No:
DSCC2008-2262, pp. 1179-1185; 7 pages
Published Online:
June 29, 2009
Citation
Li, W, & Yedavalli, RK. "Dynamic Threshold Method Based Aircraft Engine Sensor Fault Diagnosis." Proceedings of the ASME 2008 Dynamic Systems and Control Conference. ASME 2008 Dynamic Systems and Control Conference, Parts A and B. Ann Arbor, Michigan, USA. October 20–22, 2008. pp. 1179-1185. ASME. https://doi.org/10.1115/DSCC2008-2262
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