Vision-based estimation of clothing insulation for building control: A case study of residential buildings
Published 2021 View Full Article
- Home
- Publications
- Publication Search
- Publication Details
Title
Vision-based estimation of clothing insulation for building control: A case study of residential buildings
Authors
Keywords
Clothing insulation, Thermal comfort, Computer vision, Convolutional neural network, Deep learning, Occupant-centric control
Journal
BUILDING AND ENVIRONMENT
Volume 202, Issue -, Pages 108036
Publisher
Elsevier BV
Online
2021-06-09
DOI
10.1016/j.buildenv.2021.108036
References
Ask authors/readers for more resources
Related references
Note: Only part of the references are listed.- Assessment of a Real-Time Prediction Method for High Clothing Thermal Insulation Using a Thermoregulation Model and an Infrared Camera
- (2020) Kyungsoo Lee et al. Atmosphere
- Real-time space occupancy sensing and human motion analysis using deep learning for indoor air quality control
- (2020) Ivan Mutis et al. AUTOMATION IN CONSTRUCTION
- Review on occupant-centric thermal comfort sensing, predicting, and controlling
- (2020) Jiaqing Xie et al. ENERGY AND BUILDINGS
- Nationwide HVAC energy-saving potential quantification for office buildings with occupant-centric controls in various climates
- (2020) Zhihong Pang et al. APPLIED ENERGY
- Performance assessment of low-cost environmental monitors and single sensors under variable indoor air quality and thermal conditions
- (2020) Ingrid Demanega et al. BUILDING AND ENVIRONMENT
- Human-in-the-loop HVAC operations: A quantitative review on occupancy, comfort, and energy-efficiency dimensions
- (2019) Wooyoung Jung et al. APPLIED ENERGY
- Using the contrast within a single face heat map to assess personal thermal comfort
- (2019) Andrei Claudiu Cosma et al. BUILDING AND ENVIRONMENT
- Real-time and contactless measurements of thermal discomfort based on human poses for energy efficient control of buildings
- (2019) Bin Yang et al. BUILDING AND ENVIRONMENT
- Development of a human metabolic rate prediction model based on the use of Kinect-camera generated visual data-driven approaches
- (2019) HooSeung Na et al. BUILDING AND ENVIRONMENT
- A critical review of field implementations of occupant-centric building controls
- (2019) June Young Park et al. BUILDING AND ENVIRONMENT
- Appliance classification using VI trajectories and convolutional neural networks
- (2018) Leen De Baets et al. ENERGY AND BUILDINGS
- Deep learning for automatic usability evaluations based on images: A case study of the usability heuristics of thermostats
- (2018) Pedro Ponce et al. ENERGY AND BUILDINGS
- Experimental testing of a system for the energy-efficient sub-zonal heating management in indoor environments based on PMV
- (2018) L. Zampetti et al. ENERGY AND BUILDINGS
- Preliminary study of learning individual thermal complaint behavior using one-class classifier for indoor environment control
- (2013) Qianchuan Zhao et al. BUILDING AND ENVIRONMENT
- HVAC systems testing and check: A simplified model to predict thermal comfort conditions in moderate environments
- (2012) C. Buratti et al. APPLIED ENERGY
- Dynamic predictive clothing insulation models based on outdoor air and indoor operative temperatures
- (2012) Stefano Schiavon et al. BUILDING AND ENVIRONMENT
- Neural networks based predictive control for thermal comfort and energy savings in public buildings
- (2012) P.M. Ferreira et al. ENERGY AND BUILDINGS
- Building envelope regulations on thermal comfort in glass facade buildings and energy-saving potential for PMV-based comfort control
- (2010) Ruey-Lung Hwang et al. BUILDING AND ENVIRONMENT
- A systematic analysis of performance measures for classification tasks
- (2009) Marina Sokolova et al. INFORMATION PROCESSING & MANAGEMENT
- Comparison of thermal comfort algorithms in naturally ventilated office buildings
- (2008) Bassam Moujalled et al. ENERGY AND BUILDINGS
Find Funding. Review Successful Grants.
Explore over 25,000 new funding opportunities and over 6,000,000 successful grants.
ExploreBecome a Peeref-certified reviewer
The Peeref Institute provides free reviewer training that teaches the core competencies of the academic peer review process.
Get Started