Transmission Power Control in Wireless Sensor Networks Using Fuzzy Adaptive Data Rate
Abstract
:1. Introduction
2. System Implementation
2.1. System Architecture
2.2. Implementation of TDMA
3. Adaptive Fuzzy Control Algorithm and Analysis of Power Consumption
3.1. Power Consumption in Different Data Rate and Transmission Power
3.2. Relationship between PER and SNR
3.3. Fuzzy Control Algorithm Design
4. Experimental Results and Discussions
4.1. Allocation of Bridge and Sensor Nodes
4.2. Experimental Results
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Data Rate | Deviation | RX BW | Data Rate | Deviation | RX BW |
---|---|---|---|---|---|
12.5 kbps | 5 kHz | 49 kHz | 300 kbps | 105 kHz | 622 kHz |
50 kbps | 25 kHz | 98 kHz | 400 kbps | 140 kHz | 622 kHz |
100 kbps | 45 kHz | 196 kHz | 450 kbps | 155 kHz | 784 kHz |
200 kbps | 70 kHz | 311 kHz | 500 kbps | 175 kHz | 1243 kHz |
Transmission Power | Average Current | Transmission Power | Average Current | Transmission Power | Average Current |
---|---|---|---|---|---|
14 dBm | 24.138 mA | 9 dBm | 18.181 mA | 4 dBm | 13.992 mA |
13 dBm | 23.894 mA | 8 dBm | 17.460 mA | 3 dBm | 13.009 mA |
12 dBm | 21.575 mA | 7 dBm | 16.569 mA | 2 dBm | 12.447 mA |
11 dBm | 20.749 mA | 6 dBm | 15.496 mA | 1 dBm | 12.064 mA |
Data Rate (kbps) | 12.5 | 50 | 100 | 200 | 300 | 400 | 450 | 500 |
---|---|---|---|---|---|---|---|---|
Offset | 9.73 | 7.27 | 5.39 | 4.89 | 1.99 | 1.04 | −0.44 | −3.64 |
Data Rate (kbps) | 12.5 | 50 | 100 | 200 | 300 | 400 | 450 | 500 |
---|---|---|---|---|---|---|---|---|
(dB) | 2.75 | 5.22 | 7.10 | 7.60 | 10.50 | 11.45 | 12.93 | 16.13 |
Data Rate 50 kbps | Data RATE 100 kbps | Data Rate 200 kbps | |
---|---|---|---|
PER | ~1% | ~1% | ~1% |
SNR | 5.22 dB | 7.09 dB | 7.59 dB |
Transmission Power | 10 dBm | 12 dBm | 13 dBm |
Power Consumption | 35.64 uC | 15.93 uC | 7.72 uC |
Saving Rate | ╳ | 55.30% | 78.34% |
Error Count | VL | L | M | H | VH | |
---|---|---|---|---|---|---|
Error Interval | ||||||
VL | M | H | VH | VH | VH | |
L | L | M | H | VH | VH | |
M | L | M | M | H | VH | |
H | VL | L | M | H | H | |
VH | VL | VL | L | M | H |
Node No. | Data Rate | Transmission Power |
---|---|---|
1, 3, 5, 7, 9 | Adjust according to the algorithm | |
2 | 8 dBm | 200 kbps |
4 | 9 dBm | 100 kbps |
6 | 8 dBm | 400 kbps |
8 | 5 dBm | 450 kbps |
10 | 10 dBm | 400 kbps |
Node No. | PER | Average Transmission Current (µA) | Overall Average Current (µA) | Briefly Describe the Effects of Interference |
---|---|---|---|---|
1 | 1.04% | 0.71 | 19.49 | It is at the entrance of the first floor and farthest from the bridge. It is more obviously affected by people walking around. |
2 | 0.07% | 1.12 | 20.57 | |
3 | 0.77% | 1.02 | 20.09 | It is in the stairwell and people walk around. The elevator also starts and stops, causing interference. |
4 | 1.51% | 2.33 | 23.30 | |
5 | 1.03% | 0.66 | 19.46 | It is outside the office and is more obviously affected by people walking around during the day. |
6 | 0.40% | 0.56 | 19.25 | |
7 | 0.42% | 0.30 | 18.86 | It is on the same floor as the bridge and few people will pass by. |
8 | 1.52% | 0.42 | 19.02 | |
9 | 1.22% | 0.59 | 19.24 | It is outside the classroom and there are some people who walk around occasionally. |
10 | 0.46% | 0.63 | 19.31 |
Node Number | Battery Life |
---|---|
1 | 7.03 years |
3 | 6.82 years |
5 | 7.04 years |
7 | 7.26 years |
9 | 7.12 years |
Parameters which consume the most power | 2.04 years |
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Hung, C.-W.; Zhuang, Y.-D.; Lee, C.-H.; Wang, C.-C.; Yang, H.-H. Transmission Power Control in Wireless Sensor Networks Using Fuzzy Adaptive Data Rate. Sensors 2022, 22, 9963. https://doi.org/10.3390/s22249963
Hung C-W, Zhuang Y-D, Lee C-H, Wang C-C, Yang H-H. Transmission Power Control in Wireless Sensor Networks Using Fuzzy Adaptive Data Rate. Sensors. 2022; 22(24):9963. https://doi.org/10.3390/s22249963
Chicago/Turabian StyleHung, Chung-Wen, Yi-Da Zhuang, Ching-Hung Lee, Chun-Chieh Wang, and Hsi-Hsun Yang. 2022. "Transmission Power Control in Wireless Sensor Networks Using Fuzzy Adaptive Data Rate" Sensors 22, no. 24: 9963. https://doi.org/10.3390/s22249963
APA StyleHung, C. -W., Zhuang, Y. -D., Lee, C. -H., Wang, C. -C., & Yang, H. -H. (2022). Transmission Power Control in Wireless Sensor Networks Using Fuzzy Adaptive Data Rate. Sensors, 22(24), 9963. https://doi.org/10.3390/s22249963