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Global Optimization of a Transonic Fan Blade Through AI-Enabled Active Subspaces

Diego I. Lopez, Tiziano Ghisu, Shahrokh Shahpar

2021Journal of Turbomachinery21 citationsDOIOpen Access PDF

Abstract

Abstract The increased need to design higher performing aerodynamic shapes has led to design optimization cycles requiring high-fidelity CFD models and high-dimensional parametrization schemes. The computational cost of employing global search algorithms on such scenarios has typically been prohibitive for most academic and industrial environments. In this paper, a novel strategy is presented that leverages the capabilities of artificial neural networks for regressing complex unstructured data, while coupling them with dimensionality reduction algorithms. This approach enables employing global-based optimization methods on high-dimensional applications through a reduced computational cost. This methodology is demonstrated on the efficiency optimization of a modern jet engine fan blade with constrained pressure ratio. The outcome is compared against a state-of-the-art adjoint-based approach. Results indicate that the strategy proposed achieves comparable improvements to its adjoint counterpart with a reduced computational cost and can scale better to multi-objective optimization applications.

Topics & Concepts

TransonicComputer scienceComputational fluid dynamicsAerodynamicsMathematical optimizationReduction (mathematics)Curse of dimensionalityDimensionality reductionArtificial intelligenceEngineeringAerospace engineeringMathematicsGeometryTurbomachinery Performance and OptimizationHeat Transfer MechanismsModel Reduction and Neural Networks