- Home
- Publications
- Publication Search
- Publication Details
Title
Fast prediction for indoor environment: Models assessment
Authors
Keywords
-
Journal
INDOOR AND BUILT ENVIRONMENT
Volume 28, Issue 6, Pages 727-730
Publisher
SAGE Publications
Online
2019-06-21
DOI
10.1177/1420326x19852450
References
Ask authors/readers for more resources
Related references
Note: Only part of the references are listed.- Energy efficiency of industrial buildings
- (2019) Yi Wang et al. INDOOR AND BUILT ENVIRONMENT
- Incorporating online monitoring data into fast prediction models towards the development of artificial intelligent ventilation systems
- (2019) Jie Ren et al. Sustainable Cities and Society
- Rapid prediction of the transient effect of the initial contaminant condition using a limited number of sensors
- (2018) Xiaoliang Shao et al. INDOOR AND BUILT ENVIRONMENT
- Ventilation control strategy using low-dimensional linear ventilation models and artificial neural network
- (2018) Shi-Jie Cao et al. BUILDING AND ENVIRONMENT
- Challenges of using CFD simulation for the design and online control of ventilation systems
- (2018) Shi-Jie Cao INDOOR AND BUILT ENVIRONMENT
- Validation of a transient zonal model to predict the detailed indoor thermal environment: Case of electric radiators and wood stoves
- (2018) L. Georges et al. BUILDING AND ENVIRONMENT
- Inverse design of aircraft cabin environment using computational fluid dynamics-based proper orthogonal decomposition method
- (2017) Jihong Wang et al. INDOOR AND BUILT ENVIRONMENT
- Industrial building environment: Old problem and new challenge
- (2017) Yi Wang et al. INDOOR AND BUILT ENVIRONMENT
- Human-walking-induced wake flow – PIV experiments and CFD simulations
- (2017) Na Luo et al. INDOOR AND BUILT ENVIRONMENT
- The use of genetic algorithm and self-updating artificial neural network for the inverse design of cabin environment
- (2016) Tian-hu Zhang et al. INDOOR AND BUILT ENVIRONMENT
- Performance comparison of conventional and local computer room air-conditioning systems in data centres by CFD analysis
- (2016) Jinya Takeuchi et al. INDOOR AND BUILT ENVIRONMENT
- Fast prediction of indoor pollutant dispersion based on reduced-order ventilation models
- (2015) Shi-Jie Cao et al. Building Simulation
- Prediction of the thermal comfort indices using improved support vector machine classifiers and nonlinear kernel functions
- (2014) Ahmed Cherif Megri et al. INDOOR AND BUILT ENVIRONMENT
- A modified tracer-gas decay model for ventilation rate measurements in long and narrow spaces
- (2013) Jiangyue Chao et al. INDOOR AND BUILT ENVIRONMENT
- Experimental study on one-side confined jets from a parallel-flow outlet in a push–pull ventilation system
- (2013) Yi Wang et al. INDOOR AND BUILT ENVIRONMENT
- On the construction and use of linear low-dimensional ventilation models
- (2012) S.-J. Cao et al. INDOOR AIR
- Analyzing grid independency and numerical viscosity of computational fluid dynamics for indoor environment applications
- (2011) Haidong Wang et al. BUILDING AND ENVIRONMENT
- Improving the prediction of zonal modeling for forced convection airflows in rooms
- (2011) M.O. Abadie et al. BUILDING AND ENVIRONMENT
- Applications of a Coupled Multizone-CFD Model to Calculate Airflow and Contaminant Dispersion in Built Environments for Emergency Management
- (2011) Liangzhu Wang et al. HVAC&R RESEARCH
- Simulations of Air Distributions in Buildings by FFD on GPU
- (2011) Wangda Zuo et al. HVAC&R RESEARCH
- Ventilation performance prediction for buildings: Model assessment
- (2009) Qingyan Chen et al. BUILDING AND ENVIRONMENT
- Real-time or faster-than-real-time simulation of airflow in buildings
- (2008) W. Zuo et al. INDOOR AIR
- Evaluation of some assumptions used in multizone airflow network models
- (2007) Liangzhu (Leon) Wang et al. BUILDING AND ENVIRONMENT
Find the ideal target journal for your manuscript
Explore over 38,000 international journals covering a vast array of academic fields.
SearchAdd your recorded webinar
Do you already have a recorded webinar? Grow your audience and get more views by easily listing your recording on Peeref.
Upload Now