METASET: An Automated Data Selection Method for Scalable Data-Driven Design of Metamaterials

Yu-Chin Chan, Faez Ahmed, Liwei Wang, Wei Chen
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引用次数: 1

Abstract

Data-driven design of mechanical metamaterials is an increasingly popular method to combat costly physical simulations and immense, often intractable, geometrical design spaces. Using a precomputed dataset of unit cells, a multiscale structure can be quickly filled via combinatorial search algorithms, and machine learning models can be trained to accelerate the process. However, the dependence on data induces a unique challenge: An imbalanced dataset containing more of certain shapes or physical properties than others can be detrimental to the efficacy of the approaches and any models built on those sets. In answer, we posit that a smaller yet diverse set of unit cells leads to scalable search and unbiased learning. To select such subsets, we propose METASET, a methodology that 1) uses similarity metrics and positive semi-definite kernels to jointly measure the closeness of unit cells in both shape and property space, and 2) incorporates Determinantal Point Processes for efficient subset selection. Moreover, METASET allows the trade-off between shape and property diversity so that subsets can be tuned for various applications. Through the design of 2D metamaterials with target displacement profiles, we demonstrate that smaller, diverse subsets can indeed improve the search process as well as structural performance. We also apply METASET to eliminate inherent overlaps in a dataset of 3D unit cells created with symmetry rules, distilling it down to the most unique families. Our diverse subsets are provided publicly for use by any designer.
METASET:一种可扩展数据驱动超材料设计的自动数据选择方法
机械超材料的数据驱动设计是一种日益流行的方法,用于对抗昂贵的物理模拟和巨大的,通常难以处理的几何设计空间。使用预先计算的单位细胞数据集,可以通过组合搜索算法快速填充多尺度结构,并且可以训练机器学习模型来加速这一过程。然而,对数据的依赖带来了一个独特的挑战:一个不平衡的数据集包含了比其他数据集更多的特定形状或物理特性,这可能会损害方法的有效性以及建立在这些数据集上的任何模型。作为回答,我们假设一个更小但多样化的单元胞集导致可扩展的搜索和无偏学习。为了选择这样的子集,我们提出了METASET,一种方法,1)使用相似性度量和正半确定核来联合测量单元格在形状和属性空间中的紧密性,2)结合确定性点过程进行有效的子集选择。此外,METASET允许在形状和属性多样性之间进行权衡,以便子集可以针对各种应用程序进行调整。通过设计具有目标位移轮廓的二维超材料,我们证明了更小、更多样化的子集确实可以改善搜索过程和结构性能。我们还应用METASET来消除用对称规则创建的3D单元格数据集中固有的重叠,将其提炼为最独特的家族。我们公开提供各种子集供任何设计人员使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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