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A neural network-based estimator for the mixture ratio of the Space Shuttle Main EngineIn order to properly utilize the available fuel and oxidizer of a liquid propellant rocket engine, the mixture ratio is closed loop controlled during main stage (65 percent - 109 percent power) operation. However, because of the lack of flight-capable instrumentation for measuring mixture ratio, the value of mixture ratio in the control loop is estimated using available sensor measurements such as the combustion chamber pressure and the volumetric flow, and the temperature and pressure at the exit duct on the low pressure fuel pump. This estimation scheme has two limitations. First, the estimation formula is based on an empirical curve fitting which is accurate only within a narrow operating range. Second, the mixture ratio estimate relies on a few sensor measurements and loss of any of these measurements will make the estimate invalid. In this paper, we propose a neural network-based estimator for the mixture ratio of the Space Shuttle Main Engine. The estimator is an extension of a previously developed neural network based sensor failure detection and recovery algorithm (sensor validation). This neural network uses an auto associative structure which utilizes the redundant information of dissimilar sensors to detect inconsistent measurements. Two approaches have been identified for synthesizing mixture ratio from measurement data using a neural network. The first approach uses an auto associative neural network for sensor validation which is modified to include the mixture ratio as an additional output. The second uses a new network for the mixture ratio estimation in addition to the sensor validation network. Although mixture ratio is not directly measured in flight, it is generally available in simulation and in test bed firing data from facility measurements of fuel and oxidizer volumetric flows. The pros and cons of these two approaches will be discussed in terms of robustness to sensor failures and accuracy of the estimate during typical transients using simulation data.
Document ID
19930015900
Acquisition Source
Legacy CDMS
Document Type
Conference Paper
Authors
Guo, T. H.
(NASA Lewis Research Center Cleveland, OH, United States)
Musgrave, J.
(NASA Lewis Research Center Cleveland, OH, United States)
Date Acquired
September 6, 2013
Publication Date
November 1, 1992
Subject Category
Spacecraft Propulsion And Power
Report/Patent Number
NASA-TM-106070
NAS 1.15:106070
E-7675
Report Number: NASA-TM-106070
Report Number: NAS 1.15:106070
Report Number: E-7675
Meeting Information
Meeting: Annual Health Monitoring Conference for Space Propulsion Systems
Location: Cincinnati, OH
Country: United States
Start Date: November 17, 1992
End Date: November 18, 1992
Sponsors: Univ. of Cincinnati
Accession Number
93N25089
Funding Number(s)
PROJECT: RTOP 582-01-11
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
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