Data-driven thermal preference prediction model with embodied air-conditioning sensors and historical usage behaviors
Maohui Luo(University of California, Berkeley), Xiang Zhou(Tongji University), Wei Feng(Ministry of Education of the People's Republic of China), Xudong Shi(UW Health University Hospital), Kunyu Jiang(Chongqing University of Technology), Jilong Wang(Hebei University of Technology), Lie Ma(Midea Group (China))
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