| Keyword search (4,164 papers available) | ![]() |
"Ng V" Authored Publications:
| Title | Authors | PubMed ID | |
|---|---|---|---|
| 1 | Phenogenomics reveals the ecology and evolution of Trichoderma fungi for sustainable agriculture | Steindorff AS; Cai FM; Ding M; Jiang S; Atanasova L; Baker SE; Barbosa-Filho JR; Bayram Akcapinar G; Brown DW; Chaverri P; Chen P; Chenthamara K; Daum C; Drula E; Dubey M; Brandström Durling M; Flatschacher D; Ebner T; Emri T; Gao R; Georg RC; Henrissat B; Hermosa R; Herrera-Estrella A; Hinterdobler W; Kainz P; Karlsson M; Kredics L; Kubicek CP; Kuo A; LaButti K; Lipzen A; Lorito M; Mach RL; Manganiello G; Marik T; Martinez-Reyes N; Mayrhofer-Reinhartshuber M; Miskei M; Moisan MC; Mondo S; Monte E; Ng V; Pa | 41775999 GENOMICS |
| 2 | Exploring a case for education about sexual and gender minorities in postgraduate emergency medicine training: forming recommendations for change | Burcheri A; Coutin A; Bigham BL; Kruse MI; Lien K; Lim R; MacCormick H; Morris J; Ng V; Primiani N; Odorizzi S; Poirier V; Upadhye S; Primavesi R; | 37310186 PSYCHOLOGY |
| 3 | The Sugar Metabolic Model of Aspergillus niger Can Only Be Reliably Transferred to Fungi of Its Phylum | Li J; Chroumpi T; Garrigues S; Kun RS; Meng J; Salazar-Cerezo S; Aguilar-Pontes MV; Zhang Y; Tejomurthula S; Lipzen A; Ng V; Clendinen CS; Tolic N; Grigoriev IV; Tsang A; Mäkelä MR; Snel B; Peng M; de Vries RP; | 36547648 BIOLOGY |
| 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 |
| 5 | Education about sexual and gender minorities within Canadian emergency medicine residency programs | Primavesi R; Burcheri A; Bigham BL; Coutin A; Lien K; Koh J; Kruse M; MacCormick H; Odorizzi S; Ng V; Poirier V; Primiani N; Smith S; Upadhye S; Wallner C; Morris J; Lim R; | 34985648 CONCORDIA |
| 6 | Experimental Setup for Investigating the Efficient Load Balancing Algorithms on Virtual Cloud | Alankar B; Sharma G; Kaur H; Valverde R; Chang V; | 33371361 JMSB |
| 7 | Glucose-mediated repression of plant biomass utilization in the white-rot fungus Dichomitus squalens. | Daly P, Peng M, Di Falco M, Lipzen A, Wang M, Ng V, Grigoriev IV, Tsang A, Mäkelä MR, de Vries RP | 31585998 CSFG |
| Title: | Development of a Bayesian inference model for assessing ventilation condition based on CO2 meters in primary schools | ||||
| Authors: | Hou D, Wang LL, Katal A, Yan S, Zhou LG, Wang V, Vuotari M, Li E, Xie Z | ||||
| Link: | https://pubmed.ncbi.nlm.nih.gov/36035815/ | ||||
| DOI: | 10.1007/s12273-022-0926-8 | ||||
| Publication: | Building simulation | ||||
| Keywords: | Bayesian calibration; CO2; COVID-19; Markov Chain Monte Carlo; school; ventilation rate; | ||||
| PMID: | 36035815 | Category: | Date Added: | 2022-08-29 | |
| 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, Quebec H3G 1M8 Canada. 2 Construction Research Centre, Engineering Division, National Research Council of Canada, M-24, 1200 Montreal Road, Ottawa, Ontario K1A 0R6 Canada. |
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Description: |
Outdoor fresh air ventilation plays a significant role in reducing airborne transmission of diseases in indoor spaces. School classrooms are considerably challenged during the COVID-19 pandemic because of the increasing need for in-person education, untimely and incompleted vaccinations, high occupancy density, and uncertain ventilation conditions. Many schools started to use CO2 meters to indicate air quality, but how to interpret the data remains unclear. Many uncertainties are also involved, including manual readings, student numbers and schedules, uncertain CO2 generation rates, and variable indoor and ambient conditions. This study proposed a Bayesian inference approach with sensitivity analysis to understand CO2 readings in four primary schools by identifying uncertainties and calibrating key parameters. The outdoor ventilation rate, CO2 generation rate, and occupancy level were identified as the top sensitive parameters for indoor CO2 levels. The occupancy schedule becomes critical when the CO2 data are limited, whereas a 15-min measurement interval could capture dynamic CO2 profiles well even without the occupancy information. Hourly CO2 recording should be avoided because it failed to capture peak values and overestimated the ventilation rates. For the four primary school rooms, the calibrated ventilation rate with a 95% confidence level for fall condition is 1.96±0.31 ACH for Room #1 (165 m3 and 20 occupancies) with mechanical ventilation, and for the rest of the naturally ventilated rooms, it is 0.40±0.08 ACH for Room #2 (236 m3 and 21 occupancies), 0.30±0.04 or 0.79±0.06 ACH depending on occupancy schedules for Room #3 (236 m3 and 19 occupancies), 0.40±0.32,0.48±0.37,0.72±0.39 ACH for Room #4 (231 m3 and 8-9 occupancies) for three consecutive days. |



