Taming Connectedness in Machine-Learning-Based Topology Optimization with Connectivity Graphs

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Mohammad Mahdi Behzadi , Jiangce Chen , Horea T. Ilies
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Abstract

Despite the remarkable advancements in machine learning (ML) techniques for topology optimization, the predicted solutions often overlook the necessary structural connectivity required to meet the load-carrying demands of the resulting designs. Consequently, these predicted solutions exhibit subpar structural performance because disconnected components are unable to bear loads effectively and significantly compromise the manufacturability of the designs.

In this paper, we propose an approach to enhance the topological accuracy of ML-based topology optimization methods by employing a predicted dual connectivity graph. We show that the tangency graph of the Maximal Disjoint Ball Decomposition (MDBD), which accurately captures the topology of the optimal design, can be used in conjunction with a point transformer network to improve the connectivity of the design predicted by Generative Adversarial Networks and Convolutional Neural Networks. Our experiments show that the proposed method can significantly improve the connectivity of the final predicted structures. Specifically, in our experiments the error in the number of disconnected components was reduced by a factor of 4 or more without any loss of accuracy. We demonstrate the flexibility of our approach by presenting examples including various boundary conditions (both seen and unseen), domain resolutions, and initial design domains. Importantly, our method can seamlessly integrate with other existing deep learning-based optimization algorithms, utilize training datasets with models using any valid geometric representations, and naturally extend to three-dimensional applications.

基于连通性图的机器学习拓扑优化中的连通性
尽管机器学习(ML)技术在拓扑优化方面取得了显著进步,但预测的解决方案往往忽略了满足最终设计的承载需求所需的必要结构连通性。因此,这些预测的解决方案表现出低于标准的结构性能,因为断开的组件无法有效地承受载荷,并且严重损害了设计的可制造性。本文提出了一种利用预测双连通性图来提高基于机器学习的拓扑优化方法的拓扑精度的方法。我们证明了最大不相交球分解(MDBD)的切线图可以准确地捕获最优设计的拓扑结构,可以与点变压器网络结合使用,以提高生成对抗网络和卷积神经网络预测的设计的连通性。实验表明,该方法可以显著提高最终预测结构的连通性。具体来说,在我们的实验中,断开组件数量的误差减少了4倍或更多,而没有任何准确性损失。我们通过展示包括各种边界条件(可见和不可见)、域分辨率和初始设计域在内的示例来展示我们方法的灵活性。重要的是,我们的方法可以与其他现有的基于深度学习的优化算法无缝集成,利用使用任何有效几何表示的模型的训练数据集,并自然地扩展到三维应用。
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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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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