4.7 Article

Entropy-regularized Wasserstein distributionally robust shape and topology optimization

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SPRINGER
DOI: 10.1007/s00158-023-03500-4

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Robust optimization; Distributional robustness; Wassertstein distance; Entropic regularization; Shape optimization; Topology optimization; Linear elasticity

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This study introduces the recent paradigm of distributional robustness in shape and topology optimization. It considers the case where the probability law of uncertain physical data is approximated from observed samples, and optimizes the worst-case value of the expected cost of a design. The proximity between probability laws is quantified by the Wasserstein distance. The proposed formulation combines classical entropic regularization with convex duality theory, making the optimization problem tractable for computations. Two numerical examples demonstrate the relevance and applicability of the formulation in different design frameworks.
This brief note aims to introduce the recent paradigm of distributional robustness in the field of shape and topology optimization. Acknowledging that the probability law of uncertain physical data is rarely known beyond a rough approximation constructed from observed samples, we optimize the worst-case value of the expected cost of a design when the probability law of the uncertainty is close to the estimated one up to a prescribed threshold. The proximity between probability laws is quantified by the Wasserstein distance, a notion pertaining to optimal transport theory. The combination of the classical entropic regularization technique in this field with recent results from convex duality theory allows to reformulate the distributionally robust optimization problem in a way which is tractable for computations. Two numerical examples are presented, in the different settings of density-based topology optimization and geometric shape optimization. They exemplify the relevance and applicability of the proposed formulation regardless of the selected optimal design framework.

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