The Interaction Effect of Occupant Behavior-Related Factors in Office Buildings Based on the DNAS Theory
Abstract
:1. Introduction
2. Literature Review
2.1. Definition of the Occupant Behaviors in Buildings
2.2. The Impacts of Occupant Behaviors on Building Energy Consumption
3. Methodology
3.1. The DNAS Theory
3.2. The Orthogonal Design of Experiments
3.2.1. The Orthogonal Design of Experiments (DOE) Method
3.2.2. Operation of the Orthogonal DOE Method
4. Case Study
4.1. Survey Design and Data Collection
4.2. Survey Design and Data Collection
4.2.1. Factors from “Drivers” and “Needs”
4.2.2. Factors from “Actions” and “Systems”
4.3. Implementation of the Orthogonal DOE Method
5. Results and Discussion
6. Conclusions
- (1)
- By extracting the factors from “drivers” and “needs” based on cross-analysis of the related items in the questionnaires, differences among these factors were discovered. The results showed that the orientation, building daylight and the occupant distance to windows had the significant differences. These factors were used for establishing the set of occupant behavior-related factors.
- (2)
- The sensitivity of common electrical appliances used in office buildings, such as air conditioning, lighting, computers and other technology was calculated. The control behaviors of air conditioning, lighting and computers were found to be the most sensitive. Therefore, the final factors from “actions” and “systems” were selected, and their corresponding factor levels were divided by sensitivity levels or survey results.
- (3)
- This study analyzed the interaction effects of occupant behavior-related factors. This study proposed the interaction table of the seven factors and quantified the interaction effects between every pairing of two factors. The two factor combinations with strong interaction effects included: (1) lighting control and lighting fixtures type and (2) computer control and tolerance temperature range. The four factor combinations with slight interaction effects included: (1) illumination and air conditioning control, (2) illumination and lighting fixtures type, (3) illumination and tolerance temperature range and (4) lighting control and tolerance temperature range. In order to better achieve building energy saving optimization, these factor combinations should both be paid more attention during the building design and operation periods.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
- Male.
- Female.
- North China.
- North-east China.
- East China.
- South China.
- Central China.
- North-west China.
- South-west China.
- Other.
- Southward.
- Northward.
- Eastward.
- Westward.
- Shady.
- Sunny.
- Administration office building (administrative office buildings of Party and government organs, people’s organizations, institutions, and industrial and mining enterprises at all levels).
- Professional office building (scientific research office building, design agency office building, commercial, investment, trust, and other industrial office buildings).
- Business office building (leasing office composed of one or more unit office planes based on business).
- Others.
- Yes.
- No.
- Before 1970.
- 1970–1980.
- 1980–1990.
- 1990–2000.
- 2000–2010.
- After 2010.
- Masonry structure.
- Steel structure.
- Reinforced concrete structure.
- Other.
- Within 10 m3.
- 11–20 m3.
- 21–30 m3.
- 31–40 m3.
- 41–50 m3.
- More than 51 m3.
- Yes (Please skip to question 17).
- No (Please skip to question 19).
- Less than an hour earlier than usual.
- As usual.
- Less than an hour later than usual.
- One to two hours later than usual.
- More than two hours later than usual.
- Other
- More than an hours earlier than usual.
- Less than an hour earlier than usual.
- As usual.
- Less than an hour later than usual.
- One to two hours later than usual.
- More than two hours later than usual.
- Other
- 21 °C and lower in colder environment.
- 22–23 °C in cold environment.
- 24–26 °C in moderate cold and hot environment.
- 27–28 °C in hot environment.
- 29 °C and higher in hotter environment.
- Yes, I have exterior windows which can be opened.
- No, I have exterior windows which cannot be opened.
- No, I don’t have exterior windows.
- Yes.
- No.
- Not sure.
- Open windows as soon as I get into the office.
- Open windows when I feel hot.
- Open windows when there is a smell in the office.
- Open windows when the air conditioner is turned off.
- Open windows regularly, and the time is(e.g., if you open the windows at 8:00 a.m. every day, fill in 0800.)
- Open windows when I get off work.
- Never open windows.
- Other
- Close windows as soon as I get into the office.
- Close windows when I feel cold.
- Close windows when the air conditioner is turned on.
- Close windows when there is noise outside.
- Close windows when the outside environment is bad (rainy, windy, dusty, etc.).
- Close windows regularly, and the time is(e.g., if you close the windows at 8:00 p.m. every day, fill in 2000.)
- Close windows when I get off work.
- Never close windows.
- Other
- I like to bask in the sun and leave the curtains open.
- I like the appropriate sunshine.
- I do not like the sun.
- Yes.
- No.
- Not sure.
- When feeling dazzling.
- When feeling hot.
- Other
- When lighting is needed.
- When ventilation is needed.
- Other
- Fluorescent lamp.
- Grille lamp.
- LED lamp.
- Other
- One switch controls all lamps with nonadjustable illuminance.
- One switch controls all lamps with adjustable illuminance.
- One switch controls partial lamps with nonadjustable illuminance.
- One switch controls partial lamps with adjustable illuminance.
- Other
- Yes.
- No.
- Not sure.
- Turn on the lights regularly, and the time is.(e.g., if you turn on the lights at 8:00 a.m. every day, fill in 0800.)
- When feeling dark.
- Other
- 100%
- 75%
- 50%
- 25%
- 0%
- Turn off the lights regularly, and the time is.(e.g., if you turn off the lights at 8:00 p.m. every day, fill in 2000.)
- When feeling bright enough.
- Other
- By taking off clothes.
- By opening window for ventilation.
- By turning on the air conditioner and set the temperature to °C.
- By pulling down the curtains.
- By turning on the fan or other electrical equipment.
- Other
- By central heating.
- By turning on the air conditioner and set the temperature to °C.
- By electrical equipment except for the air conditioner.
- Yes.
- No.
- Not sure.
- Split air conditioner.
- Central air conditioner.
- Other
- Laptop.
- Desktop.
- Miniature printer.
- Large printer.
- Water dispenser.
- Shredder.
- Kettle.
- Other
- Yes (Please skip to question 45).
- No.
- Before 8:00.
- 8:00–10:00.
- 10:00–12:00.
- 12:00–14:00.
- 14:00–16:00.
- 16:00–18:00
- After 18:00.
- Turn on it all day.
- Turn on it at work.
- Turn on it when needed.
- Others
- Less than once a day.
- 1–5 times a day.
- 6–10 times a day.
- More than 10 times a day.
- 1–5 times a day.
- 6–10 times a day.
- More than 10 times a day.
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Classification | Formulation | |
---|---|---|
Drivers | Item | Content |
Occupant information | Age | |
Gender | ||
Weekday working time | ||
Weekend working time | ||
Whether near window | ||
Building properties | Location | |
Orientation | ||
Building type | ||
Construction time | ||
Structure type | ||
Area | ||
Number of occupants | ||
Needs | Temperature preferences | |
Shading | ||
Building daylight The occupant distance to window | ||
Actions | Window control | |
Curtain control | ||
Lighting control | ||
Air conditioner control | ||
Printer control | ||
Water dispenser control | ||
Other electrical equipment | ||
Systems | Lighting fixtures type | |
Air conditioning type | ||
Office equipment type |
Factors from “ Actions ” | Category | Orientation | Total | p Value | |||
---|---|---|---|---|---|---|---|
South | North | East | West | ||||
Turn on the light | Turn on at a fixed time | 5 a (4.81 b) | 5 (10.00) | 6 (28.57) | 1 (4.76) | 17 (8.67) | 0.009 |
Turn on when dark | 96 (92.31) | 40 (80.00) | 14 (66.67) | 18 (85.71) | 168 (85.71) | ||
Others | 3 (2.88) | 5 (10.00) | 1 (4.76) | 2 (9.52) | 11 (5.61) | ||
Total | 104 | 50 | 21 | 21 | 196 | ||
Turn off the light | Turn off at a fixed time | 5 (4.81) | 7 (14.00) | 7 (33.33) | 2 (9.52) | 21 (10.71) | 0.005 |
Turn off when natural light is enough | 92 (88.46) | 36 (72.00) | 13 (61.90) | 17 (80.95) | 158 (80.61) | ||
Others | 7 (6.73) | 7 (14.00) | 1 (4.76) | 2 (9.52) | 17 (8.67) | ||
Total | 104 | 50 | 21 | 21 | 196 | ||
Ventilation by opening window | Never | 35 (33.65) | 17 (34.00) | 11 (52.38) | 13 (61.90) | 76 (38.78) | 0.046 |
Always | 69 (66.35) | 33 (66.00) | 10 (47.62) | 8 (38.10) | 120 (61.22) | ||
Total | 104 | 50 | 21 | 21 | 196 |
Factors from “Actions” | Category | Facing Sun | Facing Shade | Total | p Value |
---|---|---|---|---|---|
Open window after entering office | Never | 35 (54.69) | 49 (37.12) | 84 (422.86) | 0.020 |
Always | 29 (45.31) | 83 (62.88) | 112 (57.14) | ||
Never turn off the light | Never | 60 (93.75) | 131 (99.24) | 191 (97.45) | 0.022 |
Always | 4 (6.25) | 1 (0.76) | 5 (2.55) | ||
Control temperature by AC | Never | 30 (46.88) | 85 (64.39) | 115 (58.67) | 0.020 |
Always | 34 (54.13) | 47 (35.61) | 81 (41.33) | ||
Use curtain | Never | 62 (96.88) | 111 (84.09) | 173 (88.27) | 0.009 |
Always | 2 (3.13) | 21 (15.91) | 23 (11.73) |
Factors from “Actions” | Category | Near Window | Not Near Window | Total | p Value |
---|---|---|---|---|---|
Close window after work | Never | 57 (43.51) | 41 (63.08) | 98 (50.00) | 0.010 |
Always | 74 (56.49) | 24 (36.92) | 98 (50.00) | ||
Lower the temperature by AC | Never | 84 (64.12) | 31 (47.69) | 115 (58.67) | 0.028 |
Always | 47 (35.88) | 34 (52.31) | 81 (41.33) | ||
Ventilation by opening the window when occupant feels hot | Never | 44 (33.59) | 32 (49.23) | 76 (38.78) | 0.034 |
Always | 87 (66.41) | 33 (50.77) | 120 (61.22) |
Category | Description | Sensitivity Degree (%) | Sensitivity Level | |
---|---|---|---|---|
AC use behavior | Always on | 13.06 | A a | |
On when reach, off when leave | 1.85 | B b | ||
On when reach and hot, off when leave | The range length of tolerance temperature (°C) d | |||
5 | −0.41 | C c | ||
4 | 0 | / | ||
3 | 0.2 | C | ||
2 | 0.54 | C | ||
1 | 0.85 | C | ||
Lighting use behavior | Always on | 16.79 | A | |
On when reach, off when leave | 3.94 | B | ||
On when reach and dark, off when leave and the natural light is enough | The range length of tolerance illumination (lx) e | |||
200 | 0 | / | ||
190 | −0.03 | C | ||
180 | −0.06 | C | ||
170 | −0.1 | C | ||
160 | −0.07 | C | ||
Computer use behavior | On when reach, off when leave | 0 | / | |
Always on besides weekend | 14.21 | A | ||
Always on | 24.13 | A |
Category | Factor | Name | Low Level (−1) | High Level (+1) |
---|---|---|---|---|
Drivers | A | Orientation | Facing south | Facing north |
Needs | B | Illumination | 300lx | 500lx |
Actions | C | Lighting control | On when reach, off when leave | Always on |
D | AC control | On when reach, off when leave | Always on | |
E | Computer control | On when reach, off when leave | Always on | |
Systems | F | Lighting fixtures type | 12 W | 18 W |
G | Tolerance temperature range | 23–28 °C | 25–26 °C |
Run Order | A | B | C | D | E | F | G | Energy Use Intensity (kWh/a.m2) |
---|---|---|---|---|---|---|---|---|
1 | −1 | −1 | 1 | 1 | −1 | 1 | −1 | 187.19 |
2 | 1 | 1 | 1 | −1 | −1 | 1 | 1 | 165.43 |
3 | 1 | 1 | 1 | −1 | 1 | −1 | 1 | 115.25 |
4 | 1 | 1 | 1 | 1 | 1 | 1 | 1 | 93.99 |
5 | −1 | 1 | −1 | −1 | −1 | 1 | 1 | 212.95 |
6 | −1 | −1 | −1 | −1 | 1 | −1 | −1 | 243.13 |
7 | −1 | −1 | 1 | 1 | 1 | −1 | −1 | 112.03 |
8 | 1 | −1 | 1 | −1 | −1 | 1 | −1 | 180.01 |
9 | 1 | −1 | 1 | 1 | −1 | −1 | −1 | 171.59 |
10 | 1 | −1 | 1 | 1 | −1 | 1 | 1 | 160.43 |
11 | −1 | 1 | −1 | −1 | 1 | −1 | 1 | 182.97 |
12 | −1 | 1 | −1 | 1 | −1 | 1 | −1 | 210.23 |
13 | −1 | −1 | −1 | −1 | −1 | −1 | 1 | 257.01 |
14 | −1 | 1 | −1 | −1 | −1 | −1 | −1 | 242.48 |
15 | 1 | 1 | −1 | −1 | 1 | 1 | 1 | 115.25 |
16 | −1 | 1 | 1 | −1 | −1 | 1 | −1 | 165.68 |
17 | −1 | 1 | −1 | −1 | 1 | 1 | −1 | 153.45 |
18 | −1 | −1 | −1 | 1 | 1 | 1 | −1 | 183.99 |
19 | 1 | −1 | 1 | 1 | 1 | −1 | 1 | 135.66 |
20 | 1 | −1 | 1 | −1 | 1 | −1 | −1 | 132.09 |
21 | 1 | 1 | −1 | 1 | 1 | 1 | −1 | 162.03 |
22 | 1 | 1 | −1 | −1 | −1 | −1 | 1 | 285.59 |
23 | −1 | 1 | 1 | −1 | 1 | −1 | −1 | 112.06 |
24 | 1 | 1 | −1 | 1 | −1 | 1 | 1 | 190.03 |
25 | −1 | −1 | −1 | 1 | −1 | 1 | 1 | 211.05 |
26 | 1 | 1 | −1 | −1 | 1 | −1 | −1 | 192.89 |
27 | 1 | −1 | −1 | 1 | −1 | 1 | −1 | 254.01 |
28 | 1 | −1 | 1 | 1 | 1 | 1 | −1 | 122.50 |
29 | −1 | 1 | 1 | −1 | 1 | 1 | 1 | 165.68 |
30 | −1 | −1 | 1 | 1 | 1 | 1 | 1 | 123.15 |
31 | 1 | −1 | −1 | 1 | 1 | 1 | 1 | 167.15 |
32 | −1 | 1 | −1 | 1 | 1 | 1 | 1 | 153.45 |
33 | 1 | −1 | −1 | 1 | −1 | −1 | 1 | 196.16 |
34 | −1 | −1 | 1 | −1 | 1 | −1 | 1 | 122.03 |
35 | −1 | 1 | −1 | 1 | −1 | −1 | 1 | 242.48 |
36 | 1 | −1 | −1 | −1 | 1 | −1 | 1 | 198.36 |
37 | −1 | 1 | 1 | 1 | 1 | 1 | −1 | 106.17 |
38 | 1 | 1 | −1 | 1 | −1 | −1 | −1 | 252.39 |
39 | −1 | −1 | −1 | −1 | −1 | 1 | −1 | 257.01 |
40 | 1 | −1 | −1 | −1 | −1 | 1 | 1 | 190.98 |
41 | 1 | 1 | −1 | −1 | −1 | 1 | −1 | 212.89 |
42 | −1 | 1 | 1 | 1 | −1 | −1 | −1 | 242.48 |
43 | 1 | 1 | 1 | 1 | 1 | −1 | −1 | 112.04 |
44 | −1 | −1 | 1 | −1 | −1 | 1 | 1 | 182.66 |
45 | 1 | −1 | 1 | −1 | −1 | −1 | 1 | 197.16 |
46 | 1 | 1 | −1 | 1 | 1 | −1 | 1 | 226.09 |
47 | −1 | −1 | −1 | −1 | 1 | 1 | 1 | 193.99 |
48 | 1 | 1 | 1 | −1 | −1 | −1 | −1 | 171.54 |
49 | −1 | 1 | 1 | 1 | 1 | −1 | 1 | 171.56 |
50 | −1 | −1 | 1 | −1 | −1 | −1 | −1 | 218.41 |
51 | −1 | −1 | 1 | 1 | −1 | −1 | 1 | 196.39 |
52 | 1 | −1 | −1 | −1 | −1 | −1 | −1 | 257.87 |
53 | −1 | 1 | 1 | −1 | −1 | −1 | 1 | 171.56 |
54 | −1 | 1 | −1 | 1 | 1 | −1 | −1 | 182.97 |
55 | −1 | −1 | 1 | −1 | 1 | 1 | −1 | 163.14 |
56 | 1 | −1 | −1 | −1 | 1 | 1 | −1 | 163.47 |
57 | −1 | −1 | −1 | 1 | −1 | −1 | −1 | 292.37 |
58 | 1 | 1 | 1 | −1 | 1 | 1 | −1 | 105.92 |
59 | −1 | −1 | −1 | 1 | 1 | −1 | 1 | 197.51 |
60 | 1 | −1 | −1 | 1 | 1 | −1 | −1 | 198.36 |
61 | −1 | 1 | 1 | 1 | −1 | 1 | 1 | 155.68 |
62 | 1 | 1 | 1 | 1 | −1 | −1 | 1 | 159.61 |
63 | 1 | 1 | 1 | 1 | −1 | 1 | −1 | 165.43 |
64 | 1 | −1 | 1 | −1 | 1 | 1 | 1 | 172.36 |
Name | Orientation | Illumination | Lighting Control | AC Control | Computer Control | Lighting Fixtures Type |
---|---|---|---|---|---|---|
Illumination | ||||||
Lighting control | ||||||
AC control | ||||||
Computer control | ||||||
Lighting fixtures type | ||||||
Tolerance temperature range |
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Yang, L.; Liu, S.; Liu, J. The Interaction Effect of Occupant Behavior-Related Factors in Office Buildings Based on the DNAS Theory. Sustainability 2021, 13, 3227. https://doi.org/10.3390/su13063227
Yang L, Liu S, Liu J. The Interaction Effect of Occupant Behavior-Related Factors in Office Buildings Based on the DNAS Theory. Sustainability. 2021; 13(6):3227. https://doi.org/10.3390/su13063227
Chicago/Turabian StyleYang, Lin, Sha Liu, and Jiaqi Liu. 2021. "The Interaction Effect of Occupant Behavior-Related Factors in Office Buildings Based on the DNAS Theory" Sustainability 13, no. 6: 3227. https://doi.org/10.3390/su13063227
APA StyleYang, L., Liu, S., & Liu, J. (2021). The Interaction Effect of Occupant Behavior-Related Factors in Office Buildings Based on the DNAS Theory. Sustainability, 13(6), 3227. https://doi.org/10.3390/su13063227