Intelligent Generative Design for Shear Wall Cross-Sectional Size Using Rule-Embedded Generative Adversarial Network

Yitian Feng, Yifan Fei, Yuanqing Lin, Wenjie Liao, Xinzheng Lu
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引用次数: 1

Abstract

Deep learning–driven intelligent generative design for building structures provides novel insights into intelligent construction. In a structural scheme design, the cross-sectional design of the shear wall components is critical. However, the current manual method is time-consuming and labor-intensive, and a statistical regression–based design is insufficiently accurate. Satisfying the requirements of a complex shear wall design in the real world is difficult for both methods. Generative adversarial networks (GANs) can extract implicit design laws by learning from design data and conduct end-to-end design effectively and rapidly. Although GANs have been adopted for intelligent structural design, some design rules established by competent engineers are difficult to capture. Hence, this study developed and subsequently adopted a rule-embedded GAN called StructGAN-Rule to address the demand for a rapid and accurate cross-sectional design of shear wall components. Specifically, a representation method that integrates design images and multiple design conditions was first established, which was followed by the construction of the training data set. Subsequently, based on the design rules, a differentiable tensor operator was built as a rule evaluator, which was embedded in the GAN to guide and constrain the training process. Finally, following the training of StructGAN-Rule, intelligent generative cross-sectional design based on the developed postprocessing method was effectively completed. Case studies on typical shear wall structures demonstrated that the StructGAN-Rule design satisfied the rule constraints well and was highly consistent with the design of engineers (approximately 1% difference). Moreover, the design efficiency was improved 6–10 times compared with that of the latter.
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基于规则嵌入生成对抗网络的剪力墙截面尺寸智能生成设计
建筑结构的深度学习驱动的智能生成设计为智能建筑提供了新的见解。在结构方案设计中,剪力墙构件的截面设计至关重要。然而,目前的手工方法耗时费力,基于统计回归的设计不够准确。两种方法都难以满足实际复杂剪力墙的设计要求。生成式对抗网络(GANs)可以从设计数据中提取隐式设计规律,有效、快速地进行端到端设计。虽然gan已被用于智能结构设计,但一些由有能力的工程师建立的设计规则难以捕捉。因此,本研究开发并随后采用了一种名为StructGAN-Rule的嵌入规则GAN,以满足对剪力墙构件快速准确截面设计的需求。具体而言,首先建立了一种将设计图像与多种设计条件相结合的表示方法,然后构建训练数据集。然后,基于设计规则,构建一个可微张量算子作为规则评估器,将其嵌入到GAN中,以指导和约束训练过程。最后,在StructGAN-Rule的训练下,有效地完成了基于所开发的后处理方法的智能生成截面设计。对典型剪力墙结构的实例研究表明,StructGAN-Rule设计很好地满足了规则约束,与工程师的设计高度一致(相差约1%)。设计效率比后者提高了6-10倍。
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