<div class="csl-bib-body">
<div class="csl-entry">Sobieczky, F., Lopez, A., Dudkin, E., Hochsteger, M., Scheichl, B., & Sobieczky, H. E. (2025). Reinforcement Learning for Accelerated Aerodynamic Shape Optimization. In <i>Proceedings of the 1st international Symposium on AI and Fluid Mechanics</i>. 1st International Symposium on AI and Fluid Mechanics (AIFLUIDs 2025), Chania, Greece.</div>
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dc.identifier.uri
http://hdl.handle.net/20.500.12708/226473
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dc.description.abstract
Often the choice of the geometry parametrization in shape optimization for fluid-dynamical tasks is characterized by the need to on the one hand find a low dimensional, efficient description of the considered configurations for fast computation of the optimization results, and, on the other hand be able to work with physically interpretable features [1]. Using a simple 2D airfoil design problem, we illustrate this dichotomy for the case of a reinforcement learning approach and suggest a procedure to maximize interpretability under a given highest dimensionality of the parameter space. The parametrization is a subfamily of the PARSEC-airfoil family [2]. The advantages in terms of physical interpretability and high descriptive power in comparison to NACA profiles is illustrated.
[1] Marc G. Bellemare, Will Dabney, Robert Dadashi, Adrien Ali Taiga, Pablo Samuel Castro, Nicolas Le Roux, Dale Schuurmans, Tor Lattimore, and Clare Lyle. 2019. A geometric perspective on optimal representations for reinforcement learning. Proceedings of the 33rd International Conference on Neural Information Processing Systems. Curran Associates Inc., Red Hook, NY, USA, Article 392, 4358–4369.
[2] R.W. Derksen, Tim Rogalsky, Bezier-PARSEC: An optimized airfoil parameterization for design, Advances in Engineering Software, Vol. 41, Iss. 7–8, 2010, pp. 923-930, ISSN 0965-9978, https://doi.org/10.1016/j.advengsoft.2010.05.002