Enhanced data efficiency using deep neural networks and Gaussian processes for aerodynamic design optimization
S. Ashwin Renganathan, Romit Maulik and, Jai Ahuja

TL;DR
This paper introduces a machine learning surrogate framework using deep neural networks and Bayesian optimization to efficiently perform aerodynamic shape optimization, reducing reliance on costly adjoint solvers while maintaining high accuracy.
Contribution
It presents a novel surrogate-based approach that replaces adjoint solvers with DNNs and Bayesian optimization, enabling efficient and accurate aerodynamic design optimization.
Findings
DNN surrogate achieves high accuracy in predicting optimal shapes.
Bayesian optimization improves results over DNN-only methods at similar costs.
Multiple optimization problems can be solved with a single trained model.
Abstract
Adjoint-based optimization methods are attractive for aerodynamic shape design primarily due to their computational costs being independent of the dimensionality of the input space and their ability to generate high-fidelity gradients that can then be used in a gradient-based optimizer. This makes them very well suited for high-fidelity simulation based aerodynamic shape optimization of highly parametrized geometries such as aircraft wings. However, the development of adjoint-based solvers involve careful mathematical treatment and their implementation require detailed software development. Furthermore, they can become prohibitively expensive when multiple optimization problems are being solved, each requiring multiple restarts to circumvent local optima. In this work, we propose a machine learning enabled, surrogate-based framework that replaces the expensive adjoint solver, without…
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