A Structural-Similarity Conditional GAN Method to Generate Real-Time Topology for Shell-Infill Structures

INTERNATIONAL JOURNAL OF COMPUTATIONAL METHODS(2023)

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摘要
Topology optimization (TO) can generate innovative conceptual configurations with shell-infill geometric features by distributing materials optimally within the design domain. However, physics-based topology optimization methods require repeated finite element analysis and variable updating, in which expensive computational cost limits their applications in wider industrial fields, especially for topology optimization for shell-infill structures. Fortunately, the arising of the data-based topology optimization method using deep learning has paved the way to realize real-time topology prediction for shell-infill structures. In this work, a novel and differentiable structural similarity (SSIM) loss function is introduced into the conditional generative adversarial network (cGAN) to construct the SSIM-cGAN model, and the single-channel coding strategy of initial condition is proposed to simplify the inputs of the deep learning model. SSIM-cGAN can generate shell-infill structures in real time after training with a small-scale dataset. The results generated by SSIM-cGAN and cGAN were put together for comparison, demonstrating that the shell-infill structure generated by SSIM-cGAN has lower error than cGAN, and the shell layer and porous infill structures are more integrated.
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关键词
Shell-infill structure, topology optimization, deep-learning, conditional generative adversarial network, structural similarity loss function
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