论文标题

基于元模型的前进和逆设计,用于被动振动抑制

Metamodel Based Forward and Inverse Design for Passive Vibration Suppression

论文作者

Behjat, Amir, Oddiraju, Manaswin, Attarzadeh, Mohammad Ali, Nouh, Mostafa, Chowdhury, Souma

论文摘要

基质超材料代表由不同的构件(单元)组成的一类结构系统,而不是同一单位细胞的自我重复链。因此,优化大道细胞结构系统提出了高维问题,这些问题是使用纯粹的高保真结构优化方法来解决的具有挑战性的。专门的分析建模以及基于元模型的优化可以提供更可触及的替代溶液方法。为此,本文介绍了应用于1D超材料系统的设计自动化框架,即钻串,其中振动抑制至关重要。钻头包含一组连接到纵杆外表面的非均匀环。因此,现在可以将所得系统视为一个上的1D超材料,每个环/间隙代表一个单元。尽管是1D系统,但同时考虑多个DOF(即扭转,轴向和横向运动)会带来重大的计算挑战。因此,采用转移矩阵方法(TMM)来分析确定钻串的频率响应。对TMM样品(每次评估的当前尺度计算成本)训练了一组神经网络(ANN),以建模频率响应。然后,进行基于ANN的优化,以最大程度地减少质量,从而在一种情况下对连续共振峰之间的差距的约束,并在第二种情况下最大程度地减少这一差距,从而导致对基线的重要改善。进一步的新颖贡献是通过开发一种反向建模方法来实现的,该方法可以立即产生具有最小质量的1D超材料设计,以给定的所需的非共振频率范围。这是通过使用可逆神经网络来实现的,结果显示出与远期解决方案有希望的一致性。

Aperiodic metamaterials represent a class of structural systems that are composed of different building blocks (cells), instead of a self-repeating chain of the same unit cells. Optimizing aperiodic cellular structural systems thus presents high-dimensional problems that are challenging to solve using purely high-fidelity structural optimization approaches. Specialized analytical modeling along with metamodel based optimization can provide a more tractable alternative solution approach. To this end, this paper presents a design automation framework applied to a 1D metamaterial system, namely a drill string, where vibration suppression is of utmost importance. The drill string comprises a set of nonuniform rings attached to the outer surface of a longitudinal rod. As such, the resultant system can now be perceived as an aperiodic 1D metamaterial with each ring/gap representing a cell. Despite being a 1D system, the simultaneous consideration of multiple DoF (i.e., torsional, axial, and lateral motions) poses significant computational challenges. Therefore, a transfer matrix method (TMM) is employed to analytically determine the frequency response of the drill string. A suite of neural networks (ANN) is trained on TMM samples (which present minute-scale computing costs per evaluation), to model the frequency response. ANN-based optimization is then performed to minimize mass subject to constraints on the gap between consecutive resonance peaks in one case, and minimizing this gap in the second case, leading to crucial improvements over baselines. Further novel contribution occurs through the development of an inverse modeling approach that can instantaneously produce the 1D metamaterial design with minimum mass for a given desired non-resonant frequency range. This is accomplished by using invertible neural networks, and results show promising alignment with forward solutions.

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