Interpretability analysis for thermal sensation machine learning models: An exploration based on the SHAP approach
出版年份 2022 全文链接
标题
Interpretability analysis for thermal sensation machine learning models: An exploration based on the SHAP approach
作者
关键词
-
出版物
INDOOR AIR
Volume -, Issue -, Pages -
出版商
Wiley
发表日期
2022-01-20
DOI
10.1111/ina.12984
参考文献
相关参考文献
注意:仅列出部分参考文献,下载原文获取全部文献信息。- Extended predicted mean vote of thermal adaptations reinforced around thermal neutrality
- (2021) Sheng Zhang et al. INDOOR AIR
- Test rooms to study human comfort in buildings: A review of controlled experiments and facilities
- (2021) A.L. Pisello et al. RENEWABLE & SUSTAINABLE ENERGY REVIEWS
- The use of artificial intelligence (AI) methods in the prediction of thermal comfort in buildings: energy implications of AI-based thermal comfort controls
- (2020) Jack Ngarambe et al. ENERGY AND BUILDINGS
- Comparing machine learning algorithms in predicting thermal sensation using ASHRAE Comfort Database II
- (2020) Maohui Luo et al. ENERGY AND BUILDINGS
- Modification of sweat evaporative heat loss in the PMV/PPD model to improve thermal comfort prediction in warm climates
- (2020) Amir Omidvar et al. BUILDING AND ENVIRONMENT
- The coupled effect of temperature, humidity, and air movement on human thermal response in hot–humid and hot–arid climates in summer in China
- (2020) Haiyan Yan et al. BUILDING AND ENVIRONMENT
- Using machine learning algorithms to predict occupants’ thermal comfort in naturally ventilated residential buildings
- (2020) Qian Chai et al. ENERGY AND BUILDINGS
- Revisiting individual and group differences in thermal comfort based on ASHRAE database
- (2020) Zhe Wang et al. ENERGY AND BUILDINGS
- Review on occupant-centric thermal comfort sensing, predicting, and controlling
- (2020) Jiaqing Xie et al. ENERGY AND BUILDINGS
- Failure mode and effects analysis of RC members based on machine-learning-based SHapley Additive exPlanations (SHAP) approach
- (2020) Sujith Mangalathu et al. ENGINEERING STRUCTURES
- Thermal sensitivity mapping - warmth and cold detection thresholds of the human torso
- (2020) Daniel Schmidt et al. JOURNAL OF THERMAL BIOLOGY
- Evaluation of individual thermal sensation at raised indoor temperatures based on skin temperature
- (2020) Weiwei Liu et al. BUILDING AND ENVIRONMENT
- Effects of indoor humidity on building occupants’ thermal comfort and evidence in terms of climate adaptation
- (2019) Deyu Kong et al. BUILDING AND ENVIRONMENT
- Data-driven simulation of a thermal comfort-based temperature set-point control with ASHRAE RP884
- (2019) Siliang Lu et al. BUILDING AND ENVIRONMENT
- Analysis of the accuracy on PMV – PPD model using the ASHRAE Global Thermal Comfort Database II
- (2019) Toby Cheung et al. BUILDING AND ENVIRONMENT
- Impacts of demographic, contextual and interaction effects on thermal sensation—Evidence from a global database
- (2019) Fan Zhang et al. BUILDING AND ENVIRONMENT
- Predicting older people's thermal sensation in building environment through a machine learning approach: Modelling, interpretation, and application
- (2019) Zi Wang et al. BUILDING AND ENVIRONMENT
- Study on thermal sensation and thermal comfort in environment with moderate temperature ramps
- (2019) Qingqing Wu et al. BUILDING AND ENVIRONMENT
- Dimension analysis of subjective thermal comfort metrics based on ASHRAE Global Thermal Comfort Database using machine learning
- (2019) Zhe Wang et al. Journal of Building Engineering
- Development of the ASHRAE Global Thermal Comfort Database II
- (2018) Veronika Földváry Ličina et al. BUILDING AND ENVIRONMENT
- Individual difference in thermal comfort: A literature review
- (2018) Zhe Wang et al. BUILDING AND ENVIRONMENT
- A modified method of evaluating the impact of air humidity on human acceptable air temperatures in hot-humid environments
- (2018) Baizhan Li et al. ENERGY AND BUILDINGS
- Random forest based thermal comfort prediction from gender-specific physiological parameters using wearable sensing technology
- (2018) Tanaya Chaudhuri et al. ENERGY AND BUILDINGS
- Machine learning method for real-time non-invasive prediction of individual thermal preference in transient conditions
- (2018) Andrei Claudiu Cosma et al. BUILDING AND ENVIRONMENT
- Thermal sensation models: a systematic comparison
- (2016) B. Koelblen et al. INDOOR AIR
- Sex differences in age-related changes on peripheral warm and cold innocuous thermal sensitivity
- (2016) Yoshimitsu Inoue et al. PHYSIOLOGY & BEHAVIOR
- Development of the adaptive PMV model for improving prediction performances
- (2015) Jeong Tai Kim et al. ENERGY AND BUILDINGS
- Thermal comfort of people in the hot and humid area of China-impacts of season, climate, and thermal history
- (2015) Y. Zhang et al. INDOOR AIR
- Dynamic thermal environment and thermal comfort
- (2015) Y. Zhu et al. INDOOR AIR
- On the interpretation of weight vectors of linear models in multivariate neuroimaging
- (2013) Stefan Haufe et al. NEUROIMAGE
- A study about the demand for air movement in warm environment
- (2012) Li Huang et al. BUILDING AND ENVIRONMENT
- Influence of relative humidity on prolonged exercise capacity in a warm environment
- (2011) Ronald J. Maughan et al. EUROPEAN JOURNAL OF APPLIED PHYSIOLOGY
- Thermal sensation: a mathematical model based on neurophysiology
- (2011) B. R. M. Kingma et al. INDOOR AIR
- Thermal comfort and gender: a literature review
- (2011) S. Karjalainen INDOOR AIR
- Thermal sensation of Hong Kong people with increased air speed, temperature and humidity in air-conditioned environment
- (2010) T.T. Chow et al. BUILDING AND ENVIRONMENT
- Evaluation of calculation methods of mean skin temperature for use in thermal comfort study
- (2010) Weiwei Liu et al. BUILDING AND ENVIRONMENT
Publish scientific posters with Peeref
Peeref publishes scientific posters from all research disciplines. Our Diamond Open Access policy means free access to content and no publication fees for authors.
Learn MoreBecome a Peeref-certified reviewer
The Peeref Institute provides free reviewer training that teaches the core competencies of the academic peer review process.
Get Started