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Neural Network and Response Surface Methodology for Rocket Engine Component OptimizationThe goal of this work is to compare the performance of response surface methodology (RSM) and two types of neural networks (NN) to aid preliminary design of two rocket engine components. A data set of 45 training points and 20 test points obtained from a semi-empirical model based on three design variables is used for a shear coaxial injector element. Data for supersonic turbine design is based on six design variables, 76 training, data and 18 test data obtained from simplified aerodynamic analysis. Several RS and NN are first constructed using the training data. The test data are then employed to select the best RS or NN. Quadratic and cubic response surfaces. radial basis neural network (RBNN) and back-propagation neural network (BPNN) are compared. Two-layered RBNN are generated using two different training algorithms, namely solverbe and solverb. A two layered BPNN is generated with Tan-Sigmoid transfer function. Various issues related to the training of the neural networks are addressed including number of neurons, error goals, spread constants and the accuracy of different models in representing the design space. A search for the optimum design is carried out using a standard gradient-based optimization algorithm over the response surfaces represented by the polynomials and trained neural networks. Usually a cubic polynominal performs better than the quadratic polynomial but exceptions have been noticed. Among the NN choices, the RBNN designed using solverb yields more consistent performance for both engine components considered. The training of RBNN is easier as it requires linear regression. This coupled with the consistency in performance promise the possibility of it being used as an optimization strategy for engineering design problems.
Document ID
20000089909
Acquisition Source
Marshall Space Flight Center
Document Type
Preprint (Draft being sent to journal)
Authors
Vaidyanathan, Rajkumar
(Florida Univ. Gainesville, FL United States)
Papita, Nilay
(Florida Univ. Gainesville, FL United States)
Shyy, Wei
(Florida Univ. Gainesville, FL United States)
Tucker, P. Kevin
(NASA Marshall Space Flight Center Huntsville, AL United States)
Griffin, Lisa W.
(NASA Marshall Space Flight Center Huntsville, AL United States)
Haftka, Raphael
(Florida Univ. Gainesville, FL United States)
Fitz-Coy, Norman
(Florida Univ. Gainesville, FL United States)
McConnaughey, Helen
Date Acquired
September 7, 2013
Publication Date
January 1, 2000
Subject Category
Spacecraft Propulsion And Power
Report/Patent Number
AIAA 2000-4880
Report Number: AIAA 2000-4880
Meeting Information
Meeting: Multidisciplinary Analysis and Optimization
Location: Long Beach, CA
Country: United States
Start Date: October 22, 2000
End Date: October 25, 2000
Sponsors: Department of the Air Force, NASA, International Society for Structural and Multidisciplinary Optimization, American Inst. of Aeronautics and Astronautics
Funding Number(s)
CONTRACT_GRANT: NAG8-1251
Distribution Limits
Public
Copyright
Public Use Permitted.
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