2022
DOI: 10.52842/conf.ecaade.2022.2.601
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LearnCarbon - A tool for machine learning prediction of global warming potential from abstract designs

Abstract: The new construction that is projected to take place between 2020 and 2040 plays a critical role in embodied carbon emissions. The change in material selection is inversely proportional to the budget as the project progresses. Given the fact that early-stage design processes often do not include environmental performance metrics, there is an opportunity to investigate a toolset that enables early-stage design processes to integrate this type of analysis into the preferred workflow of concept designers. The val… Show more

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Cited by 1 publication
(2 citation statements)
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“…This fact may be due to perceived and existing limitations of computational design tools (they encode architectural qualities into quantitative metrics), because of their inaccessibility (computational design requires skills that not all of us have), or due to the cost of their implementation (using technology is sometimes more complicated than doing the [initial] design by yourself). The ones that use computational design tools utilize them to simulate how a building will perform and try to fit environmental sustainability metrics using, for example, Ladybug (Roudsari et al, 2013) 77 or LearnCarbon (Kharbanda et al, 2022). 78 Most participants noted that using computational design tools involves forcing oneself to think in ways that are too rigid or limiting and that computational tools involve no socio-spatial considerations.…”
Section: Discussionmentioning
confidence: 99%
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“…This fact may be due to perceived and existing limitations of computational design tools (they encode architectural qualities into quantitative metrics), because of their inaccessibility (computational design requires skills that not all of us have), or due to the cost of their implementation (using technology is sometimes more complicated than doing the [initial] design by yourself). The ones that use computational design tools utilize them to simulate how a building will perform and try to fit environmental sustainability metrics using, for example, Ladybug (Roudsari et al, 2013) 77 or LearnCarbon (Kharbanda et al, 2022). 78 Most participants noted that using computational design tools involves forcing oneself to think in ways that are too rigid or limiting and that computational tools involve no socio-spatial considerations.…”
Section: Discussionmentioning
confidence: 99%
“…The ones that use computational design tools utilize them to simulate how a building will perform and try to fit environmental sustainability metrics using, for example, Ladybug (Roudsari et al, 2013) 77 or LearnCarbon (Kharbanda et al, 2022). 78 Most participants noted that using computational design tools involves forcing oneself to think in ways that are too rigid or limiting and that computational tools involve no socio-spatial considerations. These early stages of architectural design include decisions that, as one of our participants mentioned need to be taken out of the algorithm.…”
Section: Discussionmentioning
confidence: 99%