TY - CHAP
T1 - Generative Design in Architecture
T2 - From Mathematical Optimization to Grammatical Customization
AU - Nourian, Pirouz
AU - Azadi, Shervin
AU - Oval, Robin
N1 - Publisher Copyright:
© The Author(s), under exclusive license to Springer Nature Switzerland AG 2023.
PY - 2023/1/1
Y1 - 2023/1/1
N2 - This chapter provides a methodological overview of generative design in architecture, especially highlighting the commonalities between three separate lineages of generative approaches in architectural design, namely the mathematical optimizationOptimization methods for topologyTopology optimization and shape optimizationShape optimization, generative grammars (shape grammars and graph grammars), and [agent-based] design games. A comprehensive definition of generative design is provided as an umbrella term referring to the mathematical, grammatical, or gamified methodologies for systematic synthesis, i.e. derivation, itemization, or exploration of configurations. Among other points, it is shown that generative design methods are not necessarily meant to automate design but rather provide structured mechanisms to facilitate participatory design or creative mass customizationCustomization. Effectively, the chapter provides the theoretical minimum for understanding generative design as a paradigm in computational designComputational design; demystifies the term generative design as a technological hype; shows a precis of the history of the generative approaches in architectural design; provides a minimalist methodological framework summarising lessons from the three lineages of generative design; and deepens the technological discourse on generative design methods by reflecting on the topological constructs and techniques required for devising generative systems or design machines, including those equipped with Artificial Intelligence. Moreover, the notions of discrete design and design for discrete assembly are discussed as precursors to the core concept of design as decision-making in generative design, thus hinting to avenues of future research in manufacturing-informed combinatorial mass customizationCustomization and discrete architecture in tandem with generative design methods.
AB - This chapter provides a methodological overview of generative design in architecture, especially highlighting the commonalities between three separate lineages of generative approaches in architectural design, namely the mathematical optimizationOptimization methods for topologyTopology optimization and shape optimizationShape optimization, generative grammars (shape grammars and graph grammars), and [agent-based] design games. A comprehensive definition of generative design is provided as an umbrella term referring to the mathematical, grammatical, or gamified methodologies for systematic synthesis, i.e. derivation, itemization, or exploration of configurations. Among other points, it is shown that generative design methods are not necessarily meant to automate design but rather provide structured mechanisms to facilitate participatory design or creative mass customizationCustomization. Effectively, the chapter provides the theoretical minimum for understanding generative design as a paradigm in computational designComputational design; demystifies the term generative design as a technological hype; shows a precis of the history of the generative approaches in architectural design; provides a minimalist methodological framework summarising lessons from the three lineages of generative design; and deepens the technological discourse on generative design methods by reflecting on the topological constructs and techniques required for devising generative systems or design machines, including those equipped with Artificial Intelligence. Moreover, the notions of discrete design and design for discrete assembly are discussed as precursors to the core concept of design as decision-making in generative design, thus hinting to avenues of future research in manufacturing-informed combinatorial mass customizationCustomization and discrete architecture in tandem with generative design methods.
UR - https://www.scopus.com/pages/publications/105036492051
U2 - 10.1007/978-3-031-21167-6_1
DO - 10.1007/978-3-031-21167-6_1
M3 - Chapter
AN - SCOPUS:105036492051
T3 - Management and Industrial Engineering
SP - 1
EP - 43
BT - Management and Industrial Engineering
PB - Springer International Publishing
ER -