Thermal Comfort of Older People: Validation of the MPMV Model
Abstract
:1. Introduction
2. Method
2.1. Description of the MPMV Index for Older People
2.2. Climate Chamber Studies
2.3. Field Studies
2.4. Model Simulation
3. Results
3.1. Climate Chamber Studies
3.2. Field Studies
3.3. Comfort Requirements for Older People
4. Discussion
- Transient effects. Field comfort data are reported for average indoor conditions (time or space or both) and activity level of residents during survey periods. However, field environmental conditions are not controlled and may vary throughout the day or across different spaces in a building. Similarly, residents may undertake different activity levels and move between spaces before surveys, depending on building type. Physiological and psychological responses to these transient effects may never reach (or need longer times to reach) the steady state conditions, particularly under cold exposure, thus resulting in body heat storage, which in turn will alter thermal sensation.
- Misestimation of subject data. Subject data include ensemble clothing insulation and metabolic rate of activity. In field studies, clothing information is collected during survey periods, and their overall insulation values are estimated using various existing correlations. For single-layer clothing, such as that used in summers (Icl < 1 clo), insulation value is easier to estimate, but multilayer clothing, such as that used in cold winters (Icl > 1 clo), poses challenges. For example, Wang et al. [62] used a formula that can result in a 25% lower insulation value than the ISO 9920:2007 [75] formula for winter clothing. Recently, Tang et al. (2022) [76] showed that the mean absolute error (MAE) in estimating the ensemble clothing insulation using the ISO 9920:2007 [75] formula may reach 0.31 clo for multilayer clothing with Icl > 1.5 clo.
- Similarly, metabolic rate of subjects during survey periods is challenging to determine due to many uncontrolled factors. First, metabolic rate is affected by prior changes in subject activity levels whose effects would require up to ten minutes to vanish [79]. Second, food intake prior to survey periods can increase metabolic rate (diet-induced thermogenesis) by 10 to 15% [80]). Third, drinking more than 0.5 L of cold water could increase metabolic rate (water-induced thermogenesis) by up to 25 to 30% [81,82].
- Effects of the mean radiant temperature (Tr). Most of the field studies (Table 2) did not provide detailed inputs of Tr in parallel with the air temperature, and therefore, Tr had to be assumed to be equal to the air temperature. This assumption may, however, result in significant differences in the computed thermal sensation votes. For example, increasing or decreasing Tr by more than 3 °C from the air temperature would result in more than ±0.45 units of difference in thermal sensation votes.
- Effect of Qex. Heat removal from or addition to the body core affects the physiological response and therefore thermal sensation. Heat removal or addition by ingesting cold or hot drinks was reported as one of the effective adaptations means to reduce heat stress and thermal discomfort [22,44,56,83]. Figure 7 shows how thermal sensation of urban older residents is affected by ingesting cold water (750 mL/h at 5 °C, energy equivalent to −15 W/m2) and ice slurries (500 mL/h with ice packing factor of 70%, energy equivalent to −21 W/m2). Drinking cold water or ice slurries may increase the neutral comfort temperature by 2.1 to 2.9 °C and reduce thermal sensation by 0.5 to 1.1 units under indoor temperatures up to 32 °C. Similar results were observed in the experimental study by Wang et al. [84].
- Body dehydration. Body dehydration (or hypohydration) occurs from prolonged exposure to hot conditions with inadequate replacement of body water loss by sweating. Dehydration reduces sweating rate [85] and therefore increases thermal discomfort. Figure 7 shows how body dehydration up to 8% of body weight, combined with a rehydration rate of 60%, reduces the neutral temperature by 0.3 °C but increases thermal sensation by 0.1. Although these changes seem minor, combination of body dehydration with other factors affecting sweating rates can significantly alter psychological responses.
- Seasonal heat and cold acclimatization. Repeated or intermittent exposure to hot (summer) or cold (winter) indoor or outdoor temperatures over several days increases acclimatization, enabling subjects to tolerate warmer or cooler conditions [86,87]. However, it is difficult to report such information for every subject during the survey periods, which extend over a long period of time (weeks or months). Furthermore, it remains unclear whether individuals spending most of their time indoors can fully acclimatize to heat in summer.
- Psychological factors. The design of thermal comfort questionnaires usually does not include factors related to subject psychology, such as mood state, stress, depression, etc., despite their potential impact on thermal perception [88].
Limitations
- The MPMV model was developed using a limited experimental dataset of high quality with known inputs, focusing on older people with average ages from 65 to 72 years (mean value 70 years) [66]. The model requires further improvement to address very old people (age > 70 years), who could have lower thermal sensitivity compared to younger older adults.
- The MPMV model predictions are based on the assumed metabolic rate for a large population of older individuals (FE in Equation (5)), where the effect of age is noticeable. Caution should therefore be exercised in applying the results to individuals or smaller samples of older subjects.
- Most of the collected field studies were carried out in different building types and climate zones in Asia, where comfort scale semantics were translated from English to local languages. Therefore, differences in climate, cultural background, and the interpretations of the translated comfort scale semantics could have affected thermal sensation data [89].
5. Conclusions
Suggested Future Research
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Nomenclature
Symbol | Meaning |
aPMV | Adaptive predicted mean vote from [12] |
CSH | Adjustment constant for non-shivering thermogenesis |
CSW | Adjustment constant for regulatory sweating |
FbE | Ratio of basal metabolic rate of older to young adults |
FE | Ratio of metabolic rate of older to young adults |
ICl | Intrinsic insulation value of clothing (clo) |
MPMV | Metabolic-based predicted mean vote from [63] |
Ma | Metabolic rate of activity of young adult (W/m2 or met) |
MbE | Basal metabolic rate of an older adult (W/m2 or met) |
Mb,r | Basal metabolic rate of a reference young adult (W/m2 or met) |
MC | Metabolic rate required to maintain a neutral comfort state (W/m2 or met) |
ME | Metabolic rate of an older adult (W/m2 or met) |
MN | Metabolic rate required to maintain a neutral comfort state at rest with no thermoregulatory controls (W/m2 or met) |
PMV | Predictive mean vote |
PTSV | Physiologically based thermal sensation vote |
Qex | Heat flux extracted from or added to the body core section (W/m2) |
QexC | Heat flux extracted from or added to the body core section at the neutral comfort state (W/m2) |
RH | Relative humidity (%) |
RMSE | Root mean square error |
TSV | Thermal sensation vote |
Ta | Air temperature (°C) |
TcN | Neutral core temperature at rest (°C) |
Tr | Mean radiant temperature (°C) |
TskN | Neutral mean skin temperature at rest (°C) |
Va | Absolute air velocity around body (m/s) |
WE | Mechanical work performed by older adults (W/m2) |
ηC | Mechanical work efficiency related to Mc |
ηN | Mechanical work efficiency related to MN |
β | Sensitivity factor for MPMV (Equation (2)) |
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Study | Number of Subjects | Mean Age (y) | Ta (°C) | Tr (°C) | RH (%) | Va (m/s) | Icl (clo) | Ma (met) | ME (met) |
---|---|---|---|---|---|---|---|---|---|
[17] | 109 | 72.4 | 23–31 | Ta | 60 | 0.2 | 0.63 | 1 | 0.7 |
[37] | 8 | 70 | 21.5–24 | NA *** | 40 | 0.2 | 1 | 1.2 | NA ** |
[38] | 33 * | 65.85 | 21–29 | 18.5-31.5 | 45, 60, 74 | 0.1, 0.51, 1.51 | 0.51 | 1.15 | NA |
[39] | 16 | 70 | 21–31 | Ta | 49–69 | 0.1 | 0.55 | 1 | NA |
[34] | 22 | 69.74 | 20, 25 | Ta | 40 | 0.1 | 0.72, 1.06 | 1.2 | NA |
[36] | 18 | 67.4 | 21–32 | NA | 58 | 0.15 | 0.5 | 1 | NA |
[41] | 26 | 70.8 | 26–33 | NA | 38–62 | 0.1 | 0.5 | 1 | NA |
[35] | 24 | 66.6 | 25–34 | NA | 50, 60 | 0.1 | 0.34 | 1 | NA |
[40] | 12 | 65 | 36.5 | NA | 20, 60 | 0.25 | 0.1 | 1 | 0.95 |
[20] | 8 | 65 | 18, 34 | NA | 50 | 0.1 | 0.5 | 1 | NA |
Study | Building | Number of Subjects | Season | Age (y) | Ta (°C) | Tr (°C) | RH (%) | Va (m/s) | Icl (clo) | Ma (met) |
---|---|---|---|---|---|---|---|---|---|---|
[56] | Rural residences | 11 | Winter, spring, summer, fall | 71 | 6–34 | NA * | 60–71 | 0.2 | 0.23–2.25 | 1.2 |
[72] | Urban care homes | 11 | Spring | 77 | 20–28 | NA | 31–35 | 0.05 | 0.9, 1.6 | 1.2 |
[45] | Urban residences | 87 | Winter, summer | 71 | 13.3–32.5 | NA | 67.5 | 0.1 | 0.3–1.4 | 1 |
[62] | Urban care homes | 342, 330, 368 | Winter, summer, mid-season | 84 | 6–33 | NA | 50–65 | 0–0.2 | 0.42–1.53 | 1.2 |
[16] | Urban care homes | 294 | Winter, and fall | 75 | 20–28 | NA | 63.3 | 0.1 | 0.7 | 1.2 |
[64] | Urban care homes | 81, 76, 56 | Winter, summer, and mid-season | 70–74 | 10–36 | NA | 39–56 | 0–0.2 | 0.33–1.56 | 1.2 |
[57] | Urban care homes | 213, 181 | Winter, summer | 79 | 21–27 | NA | 60, 65 | 0.1–0.4 | 0.7, 1 | 1.2 |
[19] | Urban care homes | 49 | Winter | 75 | 22–26 | NA | 20–46 | 0.1 | 0.8–1.4 | 1.2 |
[44] | Urban residences | 740 | Summer * | 69 | 28–34 | NA | 60 | 1.5 | 0.44, 0.82 | 1.1 |
[73] | Urban residences | 394 | Summer | 73 | 24.7–33.6 | 25-33.7 | 56.6 | 0.1–0.7 | 0.2–0.44 | 1.2 |
[63] | Urban care homes | 728 | Winter | 78 | 16.6–25 | NA | 28 | 0.1 | 1–1.46 | 1.2 |
[55] | Rural residences | 97 | Summer ** | 70 *** | 27–34 | NA | 60 | 0.3 | 0.39 | 1.2 |
[48] | Urban residences | 30 | Summer | 67 | 29–35 | NA | 50 | 0.2 | 0.33 | 1.2 |
[51] | Rural residences | 161 | Winter | 69 | 5–16 | NA | 53.4 | 0–0.45 | 1.4–1.6 | 1.2 |
[47] | Urban residences | 29 | Summer | 67, 81, 92 | 21–40 | NA | 62.8 | 0.1 | 0.46 | 1.2 |
[46] | Urban residences | 15 | Summer | 72 | 23–32 | NA | 74.2 | 0.02 | 0.52 | 1.2 |
[61] | Urban care homes | 737 | Winter | 87 | 21–25 | NA | 47.2 | 0.22 | 0.92 | 1.15 |
[60] | Urban care homes | 476 | Summer | 85 | 23–28 | NA | 61.8 | 0.06 | 0.57–0.62 | 1.18 |
[54] | Rural residences | 230 | Summer | 69 | 23–37 | NA | 27–84 | 0.2 | 0.4–0.54 | 1.29 |
[20] | Urban care homes and residences | 119, 333 | Summer | 77 | 22–36 | NA | 66.2 | 0.13 | 0.3–0.36 | 1.2 |
[53] | Rural residences | 187 | Winter | 65, 70, 87 | 15–24 | NA | 39.82 | 0.02 | 1.24–1.5 | 1.2 |
Building Type → | Urban Care Homes | Urban Residences | Rural Residences | |||
---|---|---|---|---|---|---|
Season | Summer | Winter | Summer | Winter | Summer | Winter |
Tr = Ta RH = 60% Va ≤ 0.2 m/s Icl = 0.6 (0.5) clo Ma = 1.2 (1.5) met | Tr = Ta RH = 40% Va ≤ 0.2 m/s Icl = 1 clo Ma = 1.2 (1.5) met | Tr = Ta RH = 60% Va ≤ 0.2 m/s Icl = 0.5 clo Ma = 1.2 met | Tr = Ta RH = 40% Va ≤ 0.2 m/s Icl = 1 clo Ma = 1.2 met | Tr = Ta RH = 60% Va = 0.3 m/s Icl = 0.4 clo Ma = 1.2 met | Tr = Ta RH = 40% Va = 0.2 m/s Icl = 1.5 clo Ma = 1.2 met | |
This study (Tn and range) | 25.6 (23) | 24 (19.5) | 26.2 (24.8) | 24 (22) | 27.2 (26) | 21.5 (19) |
23.8–27.4 (21–25) | 21.6–26.3 (16.8–22.2) | 24.5–27.9 (23–26.6) | 21.6–26.3 (19.6–24.5) | 25.7–28.7 (24.5–27.6) | 18.6–24.5 (16–22.2) | |
Field studies | 25.4 [62] 24.1 [64] 25.7 [57] 25.3 (23.9) [60] 25.0 [20] | 16.6 [62] 24.1 [16] 19.3 [64] 23.7 [57] 26.7 [19] 22.0 (20.7) [63] 21.6 (21.9) [61] | 25.2 [45] 26.5 [73] 29.6 [44] 29.0 [48] 26.8 [47] 25.5 [46] 22.2 [20] 25.8, 26.9, 27.9 [8] | 23.2 [45] | 28.1 [56] 27.4 (27.2) [55] 24.0 [54] | 14.8 [56] 11.2 [51] 20.2 [53] |
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Laouadi, A.; Sirati, M.; Jandaghian, Z. Thermal Comfort of Older People: Validation of the MPMV Model. Energies 2025, 18, 1484. https://doi.org/10.3390/en18061484
Laouadi A, Sirati M, Jandaghian Z. Thermal Comfort of Older People: Validation of the MPMV Model. Energies. 2025; 18(6):1484. https://doi.org/10.3390/en18061484
Chicago/Turabian StyleLaouadi, Abdelaziz, Melina Sirati, and Zahra Jandaghian. 2025. "Thermal Comfort of Older People: Validation of the MPMV Model" Energies 18, no. 6: 1484. https://doi.org/10.3390/en18061484
APA StyleLaouadi, A., Sirati, M., & Jandaghian, Z. (2025). Thermal Comfort of Older People: Validation of the MPMV Model. Energies, 18(6), 1484. https://doi.org/10.3390/en18061484