Heat Flux Sensing for Machine-Learning-Based Personal Thermal Comfort Modeling
Abstract
:1. Introduction
1.1. Emergence of a Personalized Operational Paradigm in HVAC Systems
1.2. Ubiquitous Thermophysiological Sensing
- (1)
- How could heat flux sensors be used for improved personal comfort inference and comfort-driven HVAC operation?
- (2)
- What is the relationship between skin temperature and heat exchange rate?
- (3)
- Which feature between skin temperature and heat flux could perform better in personalized comfort inference?
2. Physiological Attributes in the Thermal Comfort Modeling
- Blood flow to skin: The most widely used physiological feature which causes skin temperature variation (i.e., vasodilation and vasoconstriction),
- Sweating: A defense mechanism that cools the skin and increases heat loss from the core,
- Respiration: A way of losing sensible and latent heat, and
- Heart rate: Moderate metabolism indicator.
3. Methodology
3.1. Distributed Sensing and Control Framework
3.2. Heat Flux Sensing
3.3. Experimental Procedure
- (1)
- Each participant waited for 10 to 15 min outside the thermal chamber in the building to ensure that their thermoregulation has reached a stabilized state. This acclimation time was considered prior to the experiment to ensure that potential activities prior to the experiment (e.g., walking from outside) do not bias the outcome of the experiment. Prior activities could affect the participant’s metabolic rate and therefore, his/her thermal sensation might be affected by other factors.
- (2)
- The participant entered the conditioned thermal chamber (with an ambient temperature at around 20 °C) and the heat flux gauge was attached to the skin.
- (3)
- All sensors (a heat flux, a thermocouple, and a temperature/humidity sensor) were activated and data collection was started.
- (4)
- At the beginning of the experiment, the participant reported his/her thermal preference from a five-point thermal preference scale −5 (preference to be cooler or uncomfortably warm) to 5 (preference to be warmer or uncomfortably cool).
- (5)
- Then, the ambient temperature varied at a pace of around 1 °C per 5 min. For the first experiment, the temperature raised until around 30 °C and for the second experiment, it increased until 30 °C and then decreased back to about 20 °C as described in Table 1.
- (6)
- The participants were instructed to report their thermal preference every time that they feel a change in their thermal preference.
3.4. Data Post-Processing Analysis
3.5. Correlation Coefficient Analysis and Thermal Comfort Inference
4. Results
4.1. Analysis of Physiological Responses
4.2. Personalized Thermal Comfort Inference
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A
References
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First Experimental Scenario | Second Experimental Scenario | |
---|---|---|
Objective | Investigating the correlation between ambient environment, skin temperature, and heat exchange rate | (1) Investigating the correlation between ambient environment, skin temperature, and heat exchange rate and (2) modeling for thermal comfort inference |
Measurement area | Cheek | Wrist |
Number of human subjects | 14 (Male: 7, Female: 7) | 18 (Male: 12, Female: 6) |
Temperature setup | A transient temperature variation from 20 to 30 °C | Transient temperature conditions (1) from 20 to 30 °C and (2) from 30 to 20 °C |
Duration | 50–60 min | 100–120 min |
Scenario | Training Dataset | Test Dataset |
---|---|---|
1 | First half of the experiment (increasing temperature) | Second half of the experiment (decreasing temperature) |
2 | Second half of the experiment (decreasing temperature) | First half of the experiment (increasing temperature) |
3 | All data (Cross Validation) | All data (Cross Validation) |
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Jung, W.; Jazizadeh, F.; Diller, T.E. Heat Flux Sensing for Machine-Learning-Based Personal Thermal Comfort Modeling. Sensors 2019, 19, 3691. https://doi.org/10.3390/s19173691
Jung W, Jazizadeh F, Diller TE. Heat Flux Sensing for Machine-Learning-Based Personal Thermal Comfort Modeling. Sensors. 2019; 19(17):3691. https://doi.org/10.3390/s19173691
Chicago/Turabian StyleJung, Wooyoung, Farrokh Jazizadeh, and Thomas E. Diller. 2019. "Heat Flux Sensing for Machine-Learning-Based Personal Thermal Comfort Modeling" Sensors 19, no. 17: 3691. https://doi.org/10.3390/s19173691