将拓扑优化逻辑结构规则编码到建筑设计和机器人制造的多智能体系统中

D. Bao, Xin Yan, Y. Xie
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引用次数: 3

摘要

自然现象已经被探索作为建筑和结构设计灵感的来源,在建筑和工程中采用不同的方法。该研究提出了两个二分原则之间的联系:通过自然现象、拓扑优化和生成设计的混合,建筑的复杂性和结构效率。双向进化结构优化(BESO)和多智能体算法都是新兴技术,它们分别从拓扑优化和群体智能的逻辑转变为建筑和结构设计的新方法。本研究旨在通过将BESO逻辑结构规则编码到多智能体算法中,探索复杂功能形式设计中的结构行为反馈回路。本研究旨在通过一系列原型研究和评估拓扑优化和多智能体系统在寻形和后期机器人制造中的应用。它揭示了一种假设,即基于结构行为的设计方法匹配自然外观和结构的美和功能。因此,引入了建筑设计和制造策略的新探索,这有利于建筑师,工程师和制造商之间的合作。在产生建筑及其各种元素的复杂几何形状的过程中,有可能寻求建筑形式的装饰性复杂性和基于结构性能的材料的最有效利用。
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Encoding topological optimisation logical structure rules into multi-agent system for architectural design and robotic fabrication
Natural phenomena have been explored as a source of architectural and structural design inspiration with different approaches undertaken within architecture and engineering. The research proposes a connection between two dichotomous principles: architectural complexity and structural efficiency through a hybrid of natural phenomena, topology optimisation and generative design. Both Bi-directional Evolutionary Structural Optimisation (BESO) and multi-agent algorithms are emerging technologies developed into new approaches that transform architectural and structural design, respectively, from the logic of topology optimisation and swarm intelligence. This research aims to explore a structural behaviour feedback loop in designing intricate functional forms through encoding BESO logical structure rules into the multi-agent algorithm. This research intends to study and evaluate the application of topology optimisation and multi-agent system in form-finding and later robotic fabrication through a series of prototypes. It reveals a supposition that the structural behaviour-based design method matches the beauty and function of natural appearance and structure. Thus, a new exploration of architectural design and fabrication strategy is introduced, which benefits the collaboration among architects, engineers and manufacturers. There is the potential to seek the ornamental complexities in architectural forms and the most efficient use of material based on structural performance in the process of generating complex geometry of the building and its various elements.
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来源期刊
CiteScore
3.20
自引率
17.60%
发文量
44
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