Machine-Learning-Based Characterization and Inverse Design of Metamaterials

Materials Pub Date : 2024-07-16 DOI:10.3390/ma17143512
Wei Liu, Guxin Xu, Wei Fan, Muyun Lyu, Zhaowang Xia
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Abstract

Metamaterials, characterized by unique structures, exhibit exceptional properties applicable across various domains. Traditional methods like experiments and finite-element methods (FEM) have been extensively utilized to characterize these properties. However, exploring an extensive range of structures using these methods for designing desired structures with excellent properties can be time-intensive. This paper formulates a machine-learning-based approach to expedite predicting effective metamaterial properties, leading to the discovery of microstructures with diverse and outstanding characteristics. The process involves constructing 2D and 3D microstructures, encompassing porous materials, solid–solid-based materials, and fluid–solid-based materials. Finite-element methods are then employed to determine the effective properties of metamaterials. Subsequently, the Random Forest (RF) algorithm is applied for training and predicting effective properties. Additionally, the Aquila Optimizer (AO) method is employed for a multiple optimization task in inverse design. The regression model generates accurate estimation with a coefficient of determination higher than 0.98, a mean absolute percentage error lower than 0.088, and a root mean square error lower than 0.03, indicating that the machine-learning-based method can accurately characterize the metamaterial properties. An optimized structure with a high Young’s modulus and low thermal conductivity is designed by AO within the first 30 iterations. This approach accelerates simulating the effective properties of metamaterials and can design microstructures with multiple excellent performances. The work offers guidance to design microstructures in various practical applications such as vibration energy absorbers.
基于机器学习的超材料特征描述和逆向设计
超材料以其独特的结构为特征,表现出适用于各个领域的优异特性。实验和有限元方法(FEM)等传统方法已被广泛用于表征这些特性。然而,使用这些方法探索广泛的结构,以设计出具有优异特性的理想结构,可能会耗费大量时间。本文提出了一种基于机器学习的方法,以加快预测超材料的有效特性,从而发现具有各种卓越特性的微结构。这一过程涉及构建二维和三维微结构,包括多孔材料、固固材料和流固材料。然后采用有限元方法确定超材料的有效特性。随后,随机森林(RF)算法被用于训练和预测有效特性。此外,Aquila 优化器 (AO) 方法还用于反向设计中的多重优化任务。回归模型产生了精确的估计,决定系数高于 0.98,平均绝对百分比误差低于 0.088,均方根误差低于 0.03,这表明基于机器学习的方法可以准确地描述超材料特性。在前 30 次迭代中,AO 设计出了具有高杨氏模量和低热导率的优化结构。这种方法加快了模拟超材料有效特性的速度,并能设计出具有多种优异性能的微结构。这项工作为设计振动能量吸收器等各种实际应用中的微结构提供了指导。
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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