4.5 Article

Multipoint High-Fidelity Aerostructural Optimization of a Transport Aircraft Configuration

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JOURNAL OF AIRCRAFT
卷 51, 期 1, 页码 144-160

出版社

AMER INST AERONAUTICS ASTRONAUTICS
DOI: 10.2514/1.C032150

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资金

  1. Natural Sciences and Engineering Research Council
  2. Canada Foundation for Innovation under the Compute Canada
  3. Government of Ontario
  4. Ontario Research Fund-Research Excellence
  5. University of Toronto

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This paper presents multipoint high-fidelity aerostructural optimizations of a long-range wide-body transonic transport aircraft configuration. The aerostructural analysis employs Euler computational fluid dynamics with a 2-million-cell mesh and a structural finite-element model with 300,000 degrees of freedom. The coupled adjoint sensitivity method is used to efficiently compute gradients, enabling the use of gradient-based optimization with respect to hundreds of aerodynamic shape and structural sizing variables. The NASA Common Research Model is used as the baseline configuration, together with a wing box structure that was designed for this study. Two design optimization problems are solved: one where takeoff gross weight is minimized, and another where fuel burn is minimized. Each optimization uses a multipoint formulation with five cruise conditions and two maneuver conditions. Each of the optimization problems have 476 design variables, including wing planform, airfoil shape, and structural thickness variables. Optimized results are obtained within 36 h of wall time using 435 processors. The resulting optimal configurations are discussed and analyzed for the aerostructural tradeoffs resulting from each objective. The takeoff gross weight minimization results in a 4.2% reduction in takeoff gross weight with a 6.6% fuel burn reduction, whereas the fuel-burn optimization resulted in an 11.2% fuel burn reduction with no significant change in the takeoff gross weight.

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