Measuring sustainability and urban data operationalization. Elshani, D., Koenig, R., Duering, S., Schneider, S., & Chronis, A. In International Conference ofthe Association for Computer-Aided Architectural Design Research in Asia (CAADRIA), volume 2, pages 407-416, 2021. Association for Computer-Aided Architectural Design Research in Asia.
Paper
Website abstract bibtex With rapid urbanization, the necessity for sustainable development has skyrocketed, and sustainable urban development is a must. Recent advances in computing performance of urban layouts in real-time allow for new paradigms of performance-driven design. As beneficial as utilizing multiple layers of urban data may be, it can also create a challenge in interpreting and operationalizing data. This paper presents an integrated computational framework to measure sustainability, operationalize and interpret the urban form’s performance data using generative design methods, novel performance simulations, and machine learning predictions. The performance data is clustered into three pillars of sustainability: social, environmental, and economical, and it is followed with the performance space exploration, which assists in extracting knowledge and actionable rules of thumb. A significant advantage of the framework is that it can be used as a discussion table in participatory planning processes since it could be easily adapted to interactive environments.
@inproceedings{
title = {Measuring sustainability and urban data operationalization},
type = {inproceedings},
year = {2021},
keywords = {Generative design,data interpretation,machine learning,performance simulation,urban sustainability},
pages = {407-416},
volume = {2},
websites = {http://cumincad.scix.net/data/works/att/caadria2021_391.pdf},
publisher = {Association for Computer-Aided Architectural Design Research in Asia},
city = {Hong Kong},
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created = {2021-05-20T12:33:24.166Z},
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abstract = {With rapid urbanization, the necessity for sustainable development has skyrocketed, and sustainable urban development is a must. Recent advances in computing performance of urban layouts in real-time allow for new paradigms of performance-driven design. As beneficial as utilizing multiple layers of urban data may be, it can also create a challenge in interpreting and operationalizing data. This paper presents an integrated computational framework to measure sustainability, operationalize and interpret the urban form’s performance data using generative design methods, novel performance simulations, and machine learning predictions. The performance data is clustered into three pillars of sustainability: social, environmental, and economical, and it is followed with the performance space exploration, which assists in extracting knowledge and actionable rules of thumb. A significant advantage of the framework is that it can be used as a discussion table in participatory planning processes since it could be easily adapted to interactive environments.},
bibtype = {inproceedings},
author = {Elshani, Diellza and Koenig, Reinhard and Duering, Serjoscha and Schneider, Sven and Chronis, Angelos},
booktitle = {International Conference ofthe Association for Computer-Aided Architectural Design Research in Asia (CAADRIA)}
}
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