Title :
Dynamic Decision Support and Automated Fault Accommodation for Jet Engines
Author :
Tang, Liang ; Roemer, Michael ; Kacprzynski, Gregory J. ; Ge, Jianhua
Author_Institution :
Impact Technol., LLC, Rochester
Abstract :
The development of a dynamic decision support (D2S) system for real-time assessments of system health and fault contingency planning for jet engine is presented. The goal of the proposed D2S system is to increase engine operation autonomy level by bridging the gap between onboard prognosis & health management (PHM) system and baseline control systems. The D2S system consists of two major functions: real-time system health identification (RT-SHI), and automated contingency management (ACM). The RT-SHI modules enhance on-board PHM functions with a dynamic system identification algorithm that is capable of detecting and isolating faults/failures with a continuously updated dynamic model. Particularly, a real-time strong tracking system identification module that is robust to low-excitation conditions was developed to track time-varying parameters and sudden changes in plant dynamics. In addition, a realtime, self-tuning Kalman filter and a probabilistic neural networks based fault classifier are combined to provide accurate health estimation. Based on the inferred health condition, mission requirements and flight regime information, the on-board ACM module automatically makes decisions regarding control reconfiguration and change of control strategies. The presented D2S architecture and modules have been applied to a generic turbofan engine model. Simulation results are presented to illustrate the effectiveness of the approaches.
Keywords :
aerospace engineering; aircraft testing; decision support systems; jet engines; neural nets; planning; automated contingency management; automated fault accommodation; continuously updated dynamic model; control reconfiguration; dynamic decision support; dynamic system identification; engine operation autonomy; fault classifier; fault contingency planning; fault detection; fault isolation; generic turbofan engine model; health estimation; jet engines; plant dynamics; probabilistic neural networks; real-time assessments; real-time strong tracking system; real-time system health identification; self-tuning Kalman filter; Automatic control; Contingency management; Control systems; Fault detection; Heuristic algorithms; Jet engines; Prognostics and health management; Real time systems; Robustness; System identification;
Conference_Titel :
Aerospace Conference, 2007 IEEE
Conference_Location :
Big Sky, MT
Print_ISBN :
1-4244-0524-6
Electronic_ISBN :
1095-323X
DOI :
10.1109/AERO.2007.352846