论文标题
深度学习尺寸不合时宜的逆设计3D印刷机械超材料
Deep learning for size-agnostic inverse design of random-network 3D printed mechanical metamaterials
论文作者
论文摘要
机械超材料的实际应用通常涉及解决逆问题,目的是找到产生一组特性的(多个)微体系结构。添加剂制造技术的有限分辨率通常需要解决特定尺寸的这种反问题。因此,应该找到具有给定尺寸的标本所需特性的多个微构造设计。此外,候选微体系结构应抗疲劳和断裂,这意味着峰值应力也应最小化。这样的多目标逆设计问题很难解决,但其解决方案是机械超材料现实应用的关键。在这里,我们提出了一种标题为“ Deep-DRAM”的模块化方法,该方法结合了四个解耦模型,包括两个基于条件变异自动编码器(CVAE)和直接有限元(FE)模拟的深度学习模型(DLM),一个深生成模型(DGM)。 Deep-DRAM(用于随机网络的设计的深度学习)将这些模型集成到一个统一的框架中,能够找到许多解决方案,以解决此处提出的多目标逆设计问题。集成框架首先将所需的弹性属性引入DGM,DGM返回一组候选设计。然后,候选设计以及目标标本尺寸将传递给DLM,该尺寸预测了其实际弹性特性,考虑了样品大小。根据实际属性与所需属性的接近度进行过滤步骤之后,最后一步使用直接的FE模拟来识别具有最小峰值应力的设计。
Practical applications of mechanical metamaterials often involve solving inverse problems where the objective is to find the (multiple) microarchitectures that give rise to a given set of properties. The limited resolution of additive manufacturing techniques often requires solving such inverse problems for specific sizes. One should, therefore, find multiple microarchitectural designs that exhibit the desired properties for a specimen with given dimensions. Moreover, the candidate microarchitectures should be resistant to fatigue and fracture, meaning that peak stresses should be minimized as well. Such a multi-objective inverse design problem is formidably difficult to solve but its solution is the key to real-world applications of mechanical metamaterials. Here, we propose a modular approach titled 'Deep-DRAM' that combines four decoupled models, including two deep learning models (DLM), a deep generative model (DGM) based on conditional variational autoencoders (CVAE), and direct finite element (FE) simulations. Deep-DRAM (deep learning for the design of random-network metamaterials) integrates these models into a unified framework capable of finding many solutions to the multi-objective inverse design problem posed here. The integrated framework first introduces the desired elastic properties to the DGM, which returns a set of candidate designs. The candidate designs, together with the target specimen dimensions are then passed to the DLM which predicts their actual elastic properties considering the specimen size. After a filtering step based on the closeness of the actual properties to the desired ones, the last step uses direct FE simulations to identify the designs with the minimum peak stresses.