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.
翻译:本简短说明旨在介绍在形状和地形优化领域最近的分布稳健性范例。认识到不确定物理数据的概率法在从观察到的样本中构建粗略近似值之外鲜为人知,我们优化了不确定性概率法“接近”到估计值最高到规定的阈值时设计预期成本的最坏情况值。“接近”于概率法之间的“近似性”由瓦塞斯坦距离量化,这是一个与最佳运输理论有关的概念。这一领域的古典昆士兰正规化技术与近年的共性双重理论相结合,使得能够以可移植的方式重新确定分布稳健的优化问题。在基于密度的地形优化和几何形状优化的不同环境中,提出了两个数字例子。它们说明了拟议公式的相关性和适用性,而不论选定的最佳设计框架如何。