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Aircraft design optimization
Authors:JJ Alonso  P LeGresley  V Pereyra
Affiliation:1. Department of Aeronautics and Astronautics, Stanford University, Stanford, CA 94305, United States;2. Fundamental Aeronautics, NASA, Washington, DC, United States;3. Advanced Numerical Design, United States;4. Weidlinger Associates Inc., 399 El Camino Real, #200, Mountain View, CA 94040, United States
Abstract:In this paper we describe briefly a set of procedures for the optimal design of full mission aerospace systems. This involves multi-physics simulations at various fidelity levels, surrogates, distributed computing and multi-objective optimization. Low-fidelity analysis is used to populate a database of inputs and outputs of the system simulation and Neural Networks are then designed to generate inexpensive surrogates. Higher fidelity is used only where is warranted and also to do a local exploration after global optimization techniques have been used on the surrogates in order to provide plausible initial values. The ideas are exemplified on a generic supersonic aircraft configuration, where one of the main goals is to reduce the ground sonic boom.
Keywords:Optimal design  Surrogates  Aerospace systems  Multi-objective optimization  Neural Networks
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