基于合成训练数据的生成对抗网络拓扑优化制造约束

M. Greminger
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引用次数: 10

摘要

拓扑优化是一种强大的工具,可以产生使用最小质量来实现其功能的机械设计。然而,使用拓扑优化获得的设计通常不能使用给定的制造工艺进行制造。对传统的拓扑优化算法进行了一些改进,使其能够对有限的制造方法施加制造约束。这些方法的缺点是它们通常基于启发式方法来获得可制造性约束,因此不能普遍应用于多种制造方法。为了创建一种将制造约束强加于拓扑优化的通用方法,使用了生成对抗网络(gan)。gan具有从训练数据定义的分布中产生样本的能力。在这项工作中,通过生成合成的3D体素训练数据来训练GAN,这些数据表示可以通过特定制造方法创建的设计分布。一旦训练,GAN形成从潜在向量空间到可制造设计空间的映射。然后在潜在向量空间上进行拓扑优化,确保获得的设计是可制造的。通过在3轴计算机数控(CNC)铣床上可制造的设计上训练GAN来证明这种方法的有效性。
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Generative Adversarial Networks With Synthetic Training Data for Enforcing Manufacturing Constraints on Topology Optimization
Topology optimization is a powerful tool to generate mechanical designs that use minimal mass to achieve their function. However, the designs obtained using topology optimization are often not manufacturable using a given manufacturing process. There exist some modifications to the traditional topology optimization algorithm that are able to impose manufacturing constraints for a limited set of manufacturing methods. These approaches have the drawback that they are often based on heuristics to obtain the manufacturability constraint and thus cannot be applied generally to multiple manufacturing methods. In order to create a general approach to imposing manufacturing constraints on topology optimization, generative adversarial networks (GANs) are used. GANs have the capability to produce samples from a distribution defined by training data. In this work, the GAN is trained by generating synthetic 3D voxel training data that represent the distribution of designs that can be created by a particular manufacturing method. Once trained, the GAN forms a mapping from a latent vector space to the space of manufacturable designs. The topology optimization is then performed on the latent vector space ensuring that the design obtained is manufacturable. The effectiveness of this approach is demonstrated by training a GAN on designs intended to be manufacturable on a 3-axis computer numerically controlled (CNC) milling machine.
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