| Keyword search (4,164 papers available) | ![]() |
"Hou D" Authored Publications:
| Title | Authors | PubMed ID | |
|---|---|---|---|
| 1 | Global antibiotic hotspots and risks: A One Health assessment | Yan B; Huang F; Ying J; Zhou D; Norouzi S; Zhang X; Wang B; Liu F; | 40469481 CHEMBIOCHEM |
| 2 | Frontoparietal functional connectivity moderates the link between time spent on social media and subsequent negative affect in daily life | Kang Y; Ahn J; Cosme D; Mwilambwe-Tshilobo L; McGowan A; Zhou D; Boyd ZM; Jovanova M; Stanoi O; Mucha PJ; Ochsner KN; Bassett DS; Lydon-Staley D; Falk EB; | 37993522 PSYCHOLOGY |
| 3 | Development and performance assessment of a new opensource Bayesian inference R platform for building energy model calibration | Hou D; Zhan D; Wang L; Hassan IG; Sezer N; | 37936825 ENCS |
| 4 | Development of a Bayesian inference model for assessing ventilation condition based on CO2 meters in primary schools | Hou D; Wang LL; Katal A; Yan S; Zhou LG; Wang V; Vuotari M; Li E; Xie Z; | 36035815 ENCS |
| Title: | Development and performance assessment of a new opensource Bayesian inference R platform for building energy model calibration | ||||
| Authors: | Hou D, Zhan D, Wang L, Hassan IG, Sezer N | ||||
| Link: | https://pubmed.ncbi.nlm.nih.gov/37936825/ | ||||
| DOI: | 10.1007/s44245-023-00027-2 | ||||
| Publication: | Discover mechanical engineering | ||||
| Keywords: | Bayesian inference; Building energy model; Calibration; Markov Chain Monte Carlo (MCMC); Sensitivity analysis; Uncertainty; | ||||
| PMID: | 37936825 | Category: | Date Added: | 2023-11-08 | |
| Dept Affiliation: |
ENCS
1 Centre for Zero Energy Building Studies, Department of Building, Civil and Environmental Engineering, Concordia University, 1455 de Maisonneuve Blvd. West, Montreal, QC H3G 1M8 Canada. 2 Mechanical Engineering Program, Texas A&M University at Qatar, Engineering Building, Education City Al Rayyan, P.O. Box 23874, Doha, Qatar. |
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Description: |
Many factors contribute to the inherent uncertainty of energy consumption modeling in buildings. It is essential to perform a calibration and sensitivity analysis in order to manage these uncertainties. Despite the availability of several calibration methods, they are often deterministic and lack quantified uncertainties. Moreover, the selection of parameters in building energy modeling for calibration depends on the user's experience. Therefore, a more rigorous selection process is required. This study developed a new automated Bayesian Inference calibration platform running as an R package. A sensitivity analysis module and a Bayesian inference module determine the calibration parameters and uncertainties, respectively. The Meta-model module is developed to replace the building energy model for the Markov Chain Monte Carlo process to save computing time. The proposed platform is successfully demonstrated on a synthetic high-rise office building and a real high-rise residential building in a hot and arid climate. The relationship between the number of calibration parameters, calibration performance, and the accuracy of the Meta-model is further discussed. The developed calibration platform in this study proved to have clear advantages over the existing platforms, with the ability to reasonably estimate building energy performance in a short computing time. |



