推测性混合:通过使用3D生成对抗性网络来研究概念建筑形式的生成

Panagiota Pouliou, Anca-Simona Horvath, G. Palamas
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引用次数: 0

摘要

建筑设计的过程旨在解决复杂的问题,这些问题的公式定义松散,没有明确的基础来终止解决问题的活动,并且无法实现理想的解决方案。这意味着设计问题,作为邪恶的问题,处于不完整和精确之间。将数字工具,特别是人工智能应用于设计问题,将在不完全性和精确性之间形成解决空间。在本文中,我们提出了一项研究,在该研究中,我们使用机器学习算法为特定地点的法规生成概念架构形式。我们创建了一个单户住宅的注释数据集,并使用它来训练3D生成对抗性网络,该网络生成符合站点约束的注释点云。然后,我们向23名架构从业者展示了该框架,试图了解该框架是否可以成为早期设计的有用工具。我们做出了三方面的贡献:首先,我们共享一个注释数据集,该数据集包含独栋住宅的建筑相关3D点云。接下来,我们展示并分享框架的代码以及训练3D生成神经网络的结果。最后,我们讨论了机器学习和创造性工作,包括从业者如何看待这些工具作为建筑设计中不完整性和精确性之间的媒介的出现。
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Speculative hybrids: Investigating the generation of conceptual architectural forms through the use of 3D generative adversarial networks
The process of architectural design aims at solving complex problems that have loosely defined formulations, no explicit basis for terminating the problem-solving activity, and where no ideal solution can be achieved. This means that design problems, as wicked problems, sit in a space between incompleteness and precision. Applying digital tools in general and artificial intelligence in particular to design problems will then mediate solution spaces between incompleteness and precision. In this paper, we present a study where we employed machine learning algorithms to generate conceptual architectural forms for site-specific regulations. We created an annotated dataset of single-family homes and used it to train a 3D Generative Adversarial Network that generated annotated point clouds complying with site constraints. Then, we presented the framework to 23 practitioners of architecture in an attempt to understand whether this framework could be a useful tool for early-stage design. We make a three-fold contribution: First, we share an annotated dataset of architecturally relevant 3D point clouds of single-family homes. Next, we present and share the code for a framework and the results from training the 3D generative neural network. Finally, we discuss machine learning and creative work, including how practitioners feel about the emergence of these tools as mediators between incompleteness and precision in architectural design.
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来源期刊
CiteScore
3.20
自引率
17.60%
发文量
44
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