Acknowledgement
This research was supported by the Korean Agency for Infrastructure Technology Advancement (KAIA) grant funded by the Ministry of Land, Infrastructure, and Transport (Grant 21TLRP-B148676-04), by the Basic Science Research Programs through the National Research Foundation of Korea (NRF) funded by the Korea government (MSIT) (2020R1F1A104826411), by the Ministry of Trade, Industry and Energy (MOTIE) and the Korea Institute for Advancement of Technology (KIAT), under Grants P0014268 Smart HVAC demonstration support, and by the 2021 Hongik University Research Fund.
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