PUBLICATIONS

PAPER

HOME > Publications > Paper
A proactive energy-efficient optimal ventilation system using deep learning and AI-iterative dynamic programming under outdoor air quality conditions
  • 관리자
  • |
  • 172
  • |
  • 2022-07-08

Ki Jeon Nam, SungKu Heo, Qian Li, Jorge Loy-Benitez, MinJeong Kim, DukShin Park, ChangKyoo Yoo*, A proactive energy-efficient optimal ventilation system using deep learning and AI-iterative dynamic programming under outdoor air quality conditions, Applied Energy (ISSN: 0306-2619, SCI, IF=8.5, Top 3% journal – Engineering, Chemical), Elsevier, 266(4), pp.114893 (2020.3) (Ack: 2017R1E1A1A03070713 & Subway Fine Dust: 19QPPW-B152306-01)

이전글 Energy-efficient time-delay compensated ventilation control system for sustainable subway air quality management under various outdoor conditions
다음글 Feasibility study and performance assessment of a new tri-generation integrated system for power, cooling, and freshwater production