Show simple item record

AuthorPourbabaee, B.
AuthorMeskin, Nader
AuthorKhorasani, K.
Available date2022-04-14T08:45:45Z
Publication Date2013
Publication NameProceedings of the American Control Conference
ResourceScopus
URIhttp://hdl.handle.net/10576/29825
AbstractIn this paper, an efficient sensor fault detection and isolation (FDI) strategy is proposed based on multiple-model (MM) approach. The scheme is composed of hybrid kalman filters (HKF) by integrating a nonlinear gas turbine engine model that represents the operational engine model with a number of piecewise linear (PWL) models to estimate sensor outputs. The proposed FDI scheme is capable of detecting and isolating permanent sensor bias faults during the entire operational regime of the engine by interpolating the PWL models using a Bayesian approach. Another important aspect of our proposed FDI strategy is its effectiveness within the engine life cycle by periodically updating the model to the degraded health parameters, that one estimated by means of an off-line trend monitoring system that is based on post flight data. The simulation results demonstrate the effectiveness of our proposed online sensor fault diagnosis scheme as well as the robustness of our technique with respect to the engine health parameters degradations. 2013 AACC American Automatic Control Council.
SponsorQatar National Research Fund
Languageen
Publisher2013 1st American Control Conference, ACC 2013
SubjectBayesian approaches
Filter approach
Health parameters
Nonlinear gas turbines
Piecewise linear models
Sensor fault detection and isolations (FDI)
Sensor fault diagnosis
Trend monitoring
Bayesian networks
Engines
Gas turbines
Kalman filters
Piecewise linear techniques
Sensors
TitleMultiple-model based sensor fault diagnosis using hybrid kalman filter approach for nonlinear gas turbine engines
TypeConference Paper
Pagination4717-4723


Files in this item

FilesSizeFormatView

There are no files associated with this item.

This item appears in the following Collection(s)

Show simple item record