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Application of Deep Learning in Generating Desired Design Options: Experiments Using Synthetic Training Dataset
[article]
2021
arXiv
pre-print
Most design methods contain a forward framework, asking for primary specifications of a building to generate an output or assess its performance. However, architects urge for specific objectives though uncertain of the proper design parameters. Deep Learning (DL) algorithms provide an intelligent workflow in which the system can learn from sequential training experiments. This study applies a method using DL algorithms towards generating demanded design options. In this study, an object
arXiv:2001.05849v2
fatcat:ilpag3bidnar3bu3grojyvn7fy