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Adaptive Optimization of Aircraft Engine Performance Using Neural NetworksPreliminary results are presented on the development of an adaptive neural network based control algorithm to enhance aircraft engine performance. This work builds upon a previous National Aeronautics and Space Administration (NASA) effort known as Performance Seeking Control (PSC). PSC is an adaptive control algorithm which contains a model of the aircraft's propulsion system which is updated on-line to match the operation of the aircraft's actual propulsion system. Information from the on-line model is used to adapt the control system during flight to allow optimal operation of the aircraft's propulsion system (inlet, engine, and nozzle) to improve aircraft engine performance without compromising reliability or operability. Performance Seeking Control has been shown to yield reductions in fuel flow, increases in thrust, and reductions in engine fan turbine inlet temperature. The neural network based adaptive control, like PSC, will contain a model of the propulsion system which will be used to calculate optimal control commands on-line. Hopes are that it will be able to provide some additional benefits above and beyond those of PSC. The PSC algorithm is computationally intensive, it is valid only at near steady-state flight conditions, and it has no way to adapt or learn on-line. These issues are being addressed in the development of the optimal neural controller. Specialized neural network processing hardware is being developed to run the software, the algorithm will be valid at steady-state and transient conditions, and will take advantage of the on-line learning capability of neural networks. Future plans include testing the neural network software and hardware prototype against an aircraft engine simulation. In this paper, the proposed neural network software and hardware is described and preliminary neural network training results are presented.
Document ID
19960008932
Acquisition Source
Headquarters
Document Type
Conference Paper
Authors
Simon, Donald L.
(Army Research Lab. Cleveland, OH., United States)
Long, Theresa W.
(NeuroDyne, Inc. Williamsburg, VA., United States)
Date Acquired
September 6, 2013
Publication Date
November 1, 1995
Subject Category
Aircraft Stability And Control
Report/Patent Number
E-10015
ARL-TR-765
NAS 1.15:107110
NIPS-95-06490
NASA-TM-107110
Report Number: E-10015
Report Number: ARL-TR-765
Report Number: NAS 1.15:107110
Report Number: NIPS-95-06490
Report Number: NASA-TM-107110
Meeting Information
Meeting: Symposium on Advanced Aero Engines Concepts and Controls
Location: Bellevue, WA
Country: United States
Start Date: September 25, 1995
End Date: September 29, 1995
Sponsors: AGARD
Accession Number
96N16098
Funding Number(s)
PROJECT: RTOP 244-02-01
CONTRACT_GRANT: NAS3-27250
Distribution Limits
Public
Copyright
Public Use Permitted.
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