High-Lift Optimization Design Using Neural Networks on a Multi-Element Airfoil

Author:

Greenman Roxana M.1,Roth Karlin R.1

Affiliation:

1. NASA Ames Research Center, Moffett Field, CA 94035

Abstract

The high-lift performance of a multi-element airfoil was optimized by using neural-net predictions that were trained using a computational data set. The numerical data was generated using a two-dimensional, incompressible, Navier-Stokes algorithm with the Spalart-Allmaras turbulence model. Because it is difficult to predict maximum lift for high-lift systems, an empirically-based maximum lift criteria was used in this study to determine both the maximum lift and the angle of attack at which it occurs. Multiple input, single output networks were trained using the NASA Ames variation of the Levenberg-Marquardt algorithm for each of the aerodynamic coefficients (lift, drag, and moment). The artificial neural networks were integrated with a gradient-based optimizer. Using independent numerical simulations and experimental data for this high-lift configuration, it was shown that this design process successfully optimized flap deflection, gap, overlap, and angle of attack to maximize lift. Once the neural networks were trained and integrated with the optimizer, minimal additional computer resources were required to perform optimization runs with different initial conditions and parameters. Applying the neural networks within the high-lift rigging optimization process reduced the amount of computational time and resources by 83% compared with traditional gradient-based optimization procedures for multiple optimization runs.

Publisher

ASME International

Subject

Mechanical Engineering

Reference23 articles.

1. Chan, W. M., Chui, I. T., and Buning, P. G., 1993, “User’s Manual for the HYPGEN Hyperbolic Grid Generator and the HGUI Graphical User Interface,” NASA TM 108791.

2. Dominik, C., 1994, “Application of the Incompressible Navier-Stokes Equations to High-Lift Flows,” AIAA Paper 94-1872.

3. Faller W. E. , and SchreckS. J., 1995, “Real-Time Prediction of Unsteady Aerodynamics: Application for Aircraft Control and Maneuverability Enhancement,” IEEE Transactions on Neural Networks, Vol. 6, No. 6, pp. 1461–1468.

4. Gill, P. E., Murray, W., Saunders, M. A., and Wright, M. H., 1994, “User’s Guide for NPSOL 5.0: A Fortran Package for Nonlinear Programming,” Dept. of Operations Research, Stanford University, TR SOL 94, Stanford, CA.

5. Greenman, R. M., 1998, “Two-Dimensional High-Lift Aerodynamic Optimization Using Neural Networks,” Stanford University Ph.D. Dissertation (see also NASA TM 112233).

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