Vision-based detection and prediction of equipment heat gains in commercial office buildings using a deep learning method
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John Kaiser Calautit | Rabah Boukhanouf | Shuangyu Wei | Paige Wenbin Tien | Yupeng Wu | Yupeng Wu | R. Boukhanouf | J. Calautit | P. Tien | S. Wei
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