DocumentCode :
2439847
Title :
Adaptive On-Wing Gas Turbine Engine Performance Estimation
Author :
Luppold, Rob ; Brotherton, Tom ; Volponi, A.
Author_Institution :
Intelligent Autom. Corp., Poway
fYear :
2007
fDate :
3-10 March 2007
Firstpage :
1
Lastpage :
12
Abstract :
A key technological concept for producing reliable engine diagnostics and prognostics exploits the benefits of fusing sensor data, information, and/or processing algorithms. In this paper, we consider a real-time physics based model of a commercial turbofan engine called STORM: self tuning on-board, real-time engine model. The STORM system provides a means for tracking engine module performance changes in real-time. However, modeling error can have a corruptive effect on STORM´s estimation of performance changes. Fusing an empirical neural network based model with STORM forms a unique hybrid model of the engine called enhanced STORM (eSTORM). This approach can eliminate the STORM engine diagnostic errors. A practical consideration for implementing the hybrid engine model, involves the application of some form of sequential model building to construct and specify the empirical elements. A methodology for constructing the empirical model (EM) in a sequential manner without the requirement for storing all of the original data has been developed. This paper describes the development of the adaptive hybrid model scheme for a commercial turbofan engine. This adaptive hybrid-modeling scheme has been implemented in real-time on an intelligent automation corporation (IAC) computational platform. Model performance achieved with the automated update algorithm using real on-wing commercial aircraft engine data will be presented.
Keywords :
automatic testing; gas turbines; jet engines; neural nets; sensor fusion; STORM; adaptive hybrid model; empirical model; intelligent automation corporation; performance estimation; real time physics; self tuning on board real time engine model; turbine engine; turbofan engine; Automation; Buildings; Computational intelligence; Engines; Neural networks; Physics; Real time systems; Storms; Tropical cyclones; Turbines;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Aerospace Conference, 2007 IEEE
Conference_Location :
Big Sky, MT
ISSN :
1095-323X
Print_ISBN :
1-4244-0524-6
Electronic_ISBN :
1095-323X
Type :
conf
DOI :
10.1109/AERO.2007.352836
Filename :
4161631
Link To Document :
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