CumInCAD is a Cumulative Index about publications in Computer Aided Architectural Design
supported by the sibling associations ACADIA, CAADRIA, eCAADe, SIGraDi, ASCAAD and CAAD futures

PDF papers
References
id caadria2022_508
authors Yousif, Shermeen and Bolojan, Daniel
year 2022
title Deep Learning-Based Surrogate Modeling for Performance-Driven Generative Design Systems
doi https://doi.org/10.52842/conf.caadria.2022.1.363
source Jeroen van Ameijde, Nicole Gardner, Kyung Hoon Hyun, Dan Luo, Urvi Sheth (eds.), POST-CARBON - Proceedings of the 27th CAADRIA Conference, Sydney, 9-15 April 2022, pp. 363-372
summary Within the context of recent research to augment the design process with artificial intelligence (AI), this work contributes by introducing a new method. The proposed method automates the design environmental performance evaluation by developing a deep learning-based surrogate model to inform the early design stages. The project is aimed at automating performative design aspects, enabling designers to focus on creative design space exploration while retrieving real-time predictions of environmental metrics of evolving design options in generative systems. This shift from a simulation-based to a prediction-based approach liberates designers from having to conduct simulation and optimization procedures and allows for their native design abilities to be augmented. When introduced into design systems, AI strategies can improve existing protocols, and enable attaining environmentally conscious designs and achieve UN Sustainable Development Goal 11.
keywords Deep Learning, Artificial Intelligence, Surrogate Modeling, Automating Building Performance Simulation, Generative Design Systems, SDG11
series CAADRIA
email
full text file.pdf (2,245,638 bytes)
references Content-type: text/plain
Details Citation Select
100%; open Caldas, L. (2001) Find in CUMINCAD An evolution-based generative design system: using adaptation to shape architectural form , Massachusetts Institute of Technology

100%; open Chen, J. & Stouffs, R. (2021) Find in CUMINCAD From Exploration to Interpretation-Adopting Deep Representation Learning Models to Latent Space Interpretation of Architectural Design Alternatives , Proceedings of the 26th International Conference of the Association for Computer-Aided Architectural Design Research Asia (CAADRIA) 2021

100%; open Danhaive, R. & Mueller, C. T. (2021) Find in CUMINCAD Design subspace learning: Structural design space exploration using performance-conditioned generative modeling , Automation in Construction, 127, 103664. doi:https://doi.org/10.1016/j.autcon.2021.103664

100%; open Forrester, A., Sobester, A. & Keane, A. (2008) Find in CUMINCAD Engineering design via surrogate modelling: a practical guide , John Wiley & Sons

100%; open Goodfellow, I., Bengio, Y., Courville, A. & Bengio, Y. (2016) Find in CUMINCAD Deep learning (Vol 1) , MIT press Cambridge

100%; open Ioffe, S. & Szegedy, C. (2015) Find in CUMINCAD Batch normalization: Accelerating deep network training by reducing internal covariate shift , International Conference on Machine Learning

100%; open Isola, P., Zhu, J.-Y., Zhou, T. & Efros, A. A. (2017) Find in CUMINCAD Image-to-image translation with conditional adversarial networks , Proceedings of the IEEE conference on computer vision and pattern recognition

100%; open Kalervo, A., Ylioinas, J., Häikiö, M., Karhu, A. & Kannala, J. (2019) Find in CUMINCAD Cubicasa5k: A dataset and an improved multi-task model for floorplan image analysis , Paper presented at the Scandinavian Conference on Image Analysis

100%; open Kim, S. H. & Boukouvala, F. (2019) Find in CUMINCAD Machine learning-based surrogate modeling for data-driven optimization: a comparison of subset selection for regression techniques , Optimization Letters, 1-22

100%; open Leach, N. (2021) Find in CUMINCAD Architecture in the Age of Artificial Intelligence: An Introduction to AI for Architects , Bloomsbury Visual Arts

100%; open Ngarambe, J., Irakoze, A., Yun, G. Y. & Kim, G. (2020) Find in CUMINCAD Comparative performance of machine learning algorithms in the prediction of indoor daylight illuminances , Sustainability, 12(11), 4471

100%; open Reinhart, C. F. & Wienold, J. (2011) Find in CUMINCAD The daylighting dashboard–A simulation-based design analysis for daylit spaces , Building and environment, 46(2), 386-396

100%; open Roudsari, M. S., Pak, M. & Smith, A. (2013) Find in CUMINCAD Ladybug: a parametric environmental plugin for grasshopper to help designers create an environmentally-conscious design , Paper presented at the Proceedings of the 13th international IBPSA conference held in Lyon, France Aug

100%; open Shaghaghian, Z. & Yan, W. (2019) Find in CUMINCAD Application of Deep Learning in Generating Desired Design Options: Experiments Using Synthetic Training Dataset , arXiv preprint arXiv:2001.05849

100%; open Shrivastava, A., Pfister, T., Tuzel, O., Susskind, J., Wang, W. & Webb, R. (2017) Find in CUMINCAD Learning from simulated and unsupervised images through adversarial training , Paper presented at the Proceedings of the IEEE conference on computer vision and pattern recognition

100%; open Singaravel, S., Suykens, J. & Geyer, P. (2018) Find in CUMINCAD Deep-learning neural-network architectures and methods: Using component-based models in building-design energy prediction , Advanced Engineering Informatics, 38, 81-90

100%; open Spacemaker. (2020) Find in CUMINCAD Early stage planning , Re-imagined. Retrieved from https://www.spacemakerai.com/

100%; open Urban Davis, J., Anderson, F., Stroetzel, M., Grossman, T. & Fitzmaurice, G. (2021) Find in CUMINCAD Designing Co-Creative AI for Virtual Environments , Paper presented at the Creativity and Cognition

100%; open Wang, Z., Bovik, A. C., Sheikh, H. R. & Simoncelli, E. P. (2004) Find in CUMINCAD Image quality assessment: from error visibility to structural similarity , IEEE transactions on image processing, 13(4), 600-612

100%; open Yousif, S. & Bolojan, D. (2021) Find in CUMINCAD Deep-Performance: Incorporating Deep Learning for Automating Building Performance Simulation in Generative Systems , Projections, the 26th Conference of the Association for Computer-Aided Architectural Design Research in Asia (CAADRIA), Hong Kong, China. http://papers.cumincad.org/cgi-bin/works/paper/caadria2021_052

last changed 2022/07/22 07:34
pick and add to favorite papersHOMELOGIN (you are user _anon_303491 from group guest) CUMINCAD Papers Powered by SciX Open Publishing Services 1.002