4.7 Article

Machine-learned kinetic Façade: Construction and artificial intelligence enabled predictive control for visual comfort

期刊

AUTOMATION IN CONSTRUCTION
卷 156, 期 -, 页码 -

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ELSEVIER
DOI: 10.1016/j.autcon.2023.105093

关键词

Kinetic facade; Artificial intelligence; Adaptive architecture; Daylight glare; XGBoost

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This study presents the first on-site investigation of an artificial intelligence-integrated three-dimensionally movable kinetic facade. The results show that the adaptive facade controlled by AI models can improve indoor daylight probability in real time.
The authors present the first on-site investigation of artificial intelligence (AI)-integrated three-dimensionally movable kinetic facade (KF). Despite continued architectural interest on the KF to improve indoor visual comfort, its in-situ operational strategy has been little addressed. To examine our primary hypothesis that the adaptive KF controlled by AI models improves indoor daylight probability (DGP) in real time, we developed an electromagnetic hexagonal KF mechanism, and three machine-learning (ML) regressors (eXtreme Gradient Boosting (XGB), Random Forest (RFR), Decision Tree) were implemented on a Raspberry Pi board to control the KF (width = 1.73 m, height = 1.1 m). 20,000 data from Radiance were used for model construction, and illuminance sensors were installed for on-site validation in a private office mockup. The facade shape was optimally morphed every 90s, using differential evolution. In the verification, XGB showed the greatest accuracy (R2 = 91.2%) with decent prediction time efficiency (mu = 0.58 s), but the RFR accuracy (R2 = 79.8%) slightly outperformed XGB in the field.

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