Synthesis and generation for 3D architecture volume with generative modeling

IF 1.6 0 ARCHITECTURE
Xinwei Zhuang, Yi Ju, Allen Yang, Luisa Caldas
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引用次数: 1

Abstract

Generative design in architecture has long been studied, yet most algorithms are parameter-based and require explicit rules, and the design solutions are heavily experience-based. In the absence of a real understanding of the generation process of designing architecture and consensus evaluation matrices, empirical knowledge may be difficult to apply to similar projects or deliver to the next generation. We propose a workflow in the early design phase to synthesize and generate building morphology with artificial neural networks. Using 3D building models from the financial district of New York City as a case study, this research shows that neural networks can capture the implicit features and styles of the input dataset and create a population of design solutions that are coherent with the styles. We constructed our database using two different data representation formats, voxel matrix and signed distance function, to investigate the effect of shape representations on the performance of the generation of building shapes. A generative adversarial neural network and an auto decoder were used to generate the volume. Our study establishes the use of implicit learning to inform the design solution. Results show that both networks can grasp the implicit building forms and generate them with a similar style to the input data, between which the auto decoder with signed distance function representation provides the highest resolution results.
基于生成建模的三维建筑体量的合成与生成
建筑中的生成设计已经研究了很长时间,但大多数算法都是基于参数的,需要明确的规则,并且设计解决方案在很大程度上是基于经验的。在缺乏对设计架构和共识评估矩阵的生成过程的真正理解的情况下,经验知识可能很难应用于类似项目或交付给下一代。我们在早期设计阶段提出了一个工作流程,用人工神经网络合成和生成建筑形态。本研究以纽约市金融区的3D建筑模型为例,表明神经网络可以捕捉输入数据集的隐含特征和风格,并创建与风格一致的设计解决方案。我们使用两种不同的数据表示格式(体素矩阵和有符号距离函数)构建了我们的数据库,以研究形状表示对建筑形状生成性能的影响。使用生成对抗性神经网络和自动解码器来生成体积。我们的研究建立了使用内隐学习来为设计解决方案提供信息。结果表明,两种网络都能掌握隐含的建筑形式,并以与输入数据相似的风格生成它们,其中具有符号距离函数表示的自动解码器提供了最高分辨率的结果。
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
3.20
自引率
17.60%
发文量
44
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