An enhanced design methodology for minimizing the error in on-line Kalman filter-based aircraft engine performance estimation applications is presented in this paper. It specifically addresses the underdetermined estimation problem, in which there are more unknown parameters than available sensor measurements. This work builds upon an existing technique for systematically selecting a model tuning parameter vector of appropriate dimension to enable estimation by a Kalman filter, while minimizing the estimation error in the parameters of interest. While the existing technique was optimized for open-loop engine operation at a fixed design point, in this paper an alternative formulation is presented that enables the technique to be optimized for an engine operating under closed-loop control throughout the flight envelope. The theoretical Kalman filter mean squared estimation error at a steady-state closed-loop operating point is derived, and the tuner selection approach applied to minimize this error is discussed. A technique for constructing a globally optimal tuning parameter vector, which enables full-envelope application of the technology, is also presented, along with design steps for adjusting the dynamic response of the Kalman filter state estimates. Results from the application of the technique to linear and nonlinear aircraft engine simulations are presented and compared to the conventional approach of tuner selection. The new methodology is shown to yield a significant improvement in on-line Kalman filter estimation accuracy.
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ASME 2011 Turbo Expo: Turbine Technical Conference and Exposition
June 6–10, 2011
Vancouver, British Columbia, Canada
Conference Sponsors:
- International Gas Turbine Institute
ISBN:
978-0-7918-5463-1
PROCEEDINGS PAPER
Application of an Optimal Tuner Selection Approach for On-Board Self-Tuning Engine Models
Donald L. Simon,
Donald L. Simon
NASA Glenn Research Center, Cleveland, OH
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Jeffrey B. Armstrong,
Jeffrey B. Armstrong
ASRC Aerospace Corporation, Cleveland, OH
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Sanjay Garg
Sanjay Garg
NASA Glenn Research Center, Cleveland, OH
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Donald L. Simon
NASA Glenn Research Center, Cleveland, OH
Jeffrey B. Armstrong
ASRC Aerospace Corporation, Cleveland, OH
Sanjay Garg
NASA Glenn Research Center, Cleveland, OH
Paper No:
GT2011-46408, pp. 361-373; 13 pages
Published Online:
May 3, 2012
Citation
Simon, DL, Armstrong, JB, & Garg, S. "Application of an Optimal Tuner Selection Approach for On-Board Self-Tuning Engine Models." Proceedings of the ASME 2011 Turbo Expo: Turbine Technical Conference and Exposition. Volume 3: Controls, Diagnostics and Instrumentation; Education; Electric Power; Microturbines and Small Turbomachinery; Solar Brayton and Rankine Cycle. Vancouver, British Columbia, Canada. June 6–10, 2011. pp. 361-373. ASME. https://doi.org/10.1115/GT2011-46408
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