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Hybrid Elevations using GAN Networks (2019)

article⁄Hybrid Elevations using GAN Networks (2019)
abstract⁄This project is an attempt to develop and test a method for generating onesided hybrid exterior building elevations using designer’s base criteria and design rule sets as inputs in an advanced artificial intelligence network. Architects are using computational design to expedite the iteration process in an efficient manner. Optimization techniques utilizing genetic solvers allow designers to explore broad sets of iterations within a predefined subset. However, with the application of artificial intelligence networks these fields of exploration can be expanded upon to develop ranges of exploration which can explore iterations outside of typical ranges. This paper explores the use of Generative Adversarial Networks GAN to explore and demonstrate their possible capabilities to typical design problems. In this instance we are exploring their application in the development of architectural elevations.
keywords⁄2019archive-note-no-tags
Year 2019
Authors Mohammad, Ali; Beorkrem, Christopher; Ellinger, Jefferson.
Issue ACADIA 19:UBIQUITY AND AUTONOMY
Pages 370-379
Library link N/A
Entry filename hybrid-elevations-using-gan-networks