Design and Application of a Smart Lighting System Based on Distributed Wireless Sensor Networks
Abstract
:1. Introduction
- (1)
- A smart lighting system for real-application is developed. The system is based on a distributed WSN consisting of sensing modules colocated with luminaries. Combined with the neighbor-aided dimming method, decentralized control provides sufficient illumination in a timely manner.
- (2)
- The performance of the proposed system is verified by experiments in practical environments. The proposed system is evaluated in two different scenarios, a metro station and an office room. The factors influencing energy savings are analyzed, and the results show that the energy saving in a metro station is inversely proportional to the people flow density and the energy saving in an office room was influenced by weather, desired illuminance level, location of worktables, and the number of staff in the room. Based on the results, the proposed system can facilitate the smart lighting system design.
2. Related Works
2.1. Occupancy Sensors for Smart Lighting Control
2.2. Lighting Control
3. Materials and Methods
3.1. System Overview
3.2. Occupancy Sensing and Daylight Sensing
3.3. Lighting Control Based on Rules
3.3.1. Lighting Control Rules for Office Environment
3.3.2. Lighting Control Rules for subway environment
4. Results
4.1. Scenario 1: Metro Station
4.2. Scenario 2: Company Office
5. Discussion
Author Contributions
Funding
Conflicts of Interest
References
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Sensor | Specification |
---|---|
PIR sensor (RE46BN-P) | Maximum sensing angle: 132° Operating wavelength: 5–14 μm Operating temperature range: −30 to 70 °C |
Microwave doppler sensor (MS-220) | Maximum sensing angle: 360° Sensing distance: adjustable Operating temperature range: −35 to 75 °C |
Illuminance sensor (BH1750FVI) | Detection range: 0–65 525 lx Operating temperature range: 40–85 °C |
Zone | Sensor Type |
---|---|
A | PIR sensors |
B | Light sensors (nearest to the windows) PIR sensors and microwave sensors |
C | PIR sensors and microwave sensors |
Stage | Time | Rule |
---|---|---|
1: Off-duty | 10 p.m. the day before to 6 a.m. next day |
|
2: Before work | 6 a.m. to 9 a.m. |
|
3: On-duty | 9 a.m. to noon |
|
4: Lunch break | noon to 1 p.m. |
|
5: On-duty | 1:30 p.m. to 6:30 p.m. |
|
6: Work overtime | 6:30 p.m. to 10 p.m. |
|
Subzone | Type | Power (W) | Number of Luminaires |
---|---|---|---|
1 | Grille light | 16× | 10 |
2 | Grille light | 16× | 13 |
Zone | Time | Energy Consumption (KWh) | Energy Savings (%) | |
---|---|---|---|---|
Normal CONTROL | Smart Control | |||
Subzone 1 | 5 h | 1.25 | 0.97 | 22.4% |
3 days | 14.72 | 7.87 | 46.54% | |
23 days | 103.14 | 87.28 | 15.38% | |
Subzone 2 | 5 h | 1.72 | 0.91 | 47.09% |
3 days | 19.34 | 6.43 | 66.75% | |
23 days | 199.07 | 56.72 | 71.51% |
Type | Power (W) | Number of Luminaires |
---|---|---|
Line light | 40 | 92 |
Downlight | 12 | 85 |
Binocular downlight | 12× | 24 |
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Cheng, Y.; Fang, C.; Yuan, J.; Zhu, L. Design and Application of a Smart Lighting System Based on Distributed Wireless Sensor Networks. Appl. Sci. 2020, 10, 8545. https://doi.org/10.3390/app10238545
Cheng Y, Fang C, Yuan J, Zhu L. Design and Application of a Smart Lighting System Based on Distributed Wireless Sensor Networks. Applied Sciences. 2020; 10(23):8545. https://doi.org/10.3390/app10238545
Chicago/Turabian StyleCheng, Yusi, Chen Fang, Jingfeng Yuan, and Lei Zhu. 2020. "Design and Application of a Smart Lighting System Based on Distributed Wireless Sensor Networks" Applied Sciences 10, no. 23: 8545. https://doi.org/10.3390/app10238545
APA StyleCheng, Y., Fang, C., Yuan, J., & Zhu, L. (2020). Design and Application of a Smart Lighting System Based on Distributed Wireless Sensor Networks. Applied Sciences, 10(23), 8545. https://doi.org/10.3390/app10238545