Continuous-time Bayesian calibration of energy models using BIM and energy data

Energy and Buildings - Tập 194 - Trang 177-190 - 2019
Adrian Chong1, Weili Xu2, Song Chao1, Ngoc-Tri Ngo1,3
1Department of Building, School of Design and Environment, National University of Singapore, 4 Architecture Drive, Singapore 117566, Singapore
2BuildSimHub Inc, 322 North Shore Dr. Suite 200, PA 15212, USA
3The University of Danang - University of Science and Technology, 54 Nguyen Luong Bang Street, Danang city, Vietnam

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