Analysis of AMI Communication Methods in Various Field Environments
Abstract
:1. Introduction
2. Power Line Communication for AMI
2.1. Power Line Communication
2.2. Measurement Methods for Power Line Communication
2.3. Linear Regression Analysis for the Received Power
3. Wireless Communications for AMI
3.1. Wireless Communication Methods
- Transmitter and receiver frequency band: 920.5–923.5 MHz
- Channels and their spacing: 14 channels of 200 kHz
- Receiver bandwidth: 100 kHz (can be changed)
- Data transmission rate and packet size: 50 kbps at 128 bytes
- Receiver sensitivity: <−107 dBm at PER < 10% without external LNA
- Transmitter power: 25–200 mW (14–23 dBm)
3.2. Measurements for the Wireless Communication
- Package error rate (PER): 1000 MAC ping test with the package length of 128 bytes
- Received power in dBm from Receiver Signal Strength Indication (RSSI)
3.3. Regression Analysis for RSSI
4. Area Types of Field Environments
- Overhead Residential Area
- Overhead Commercial Area
- Overhead Rural Area
- Overhead Factory Area
- Underground Area
5. Experimental Results
5.1. Measurement Results of PLC and Regression Analyses
5.2. Measurement Results of the Wireless Communications and Regression Analyses
6. Discussions
6.1. Discussions on the Power Line Communication
6.2. Discussions on the Wireless Communication
6.3. Comparison of the AMI Communication Methods
7. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Nomenclature
AMI | Advanced metering infrastructure |
AR | Attenuation rate: α, α |
DCU | Data concentration unit |
EPD | Equal-power distance: d0 |
MP | Measurement point |
NDIS | New distribution information system |
RBW | Resolution bandwidth |
RSSI | Received signal strength indication |
SNR | Signal-to-noise ratio |
PER | Packet error rate |
PLC | Power line communication |
PSD | Power spectral density |
Wi-SUN | Wireless smart utility network |
BR | Resolution bandwidth |
GA | Antenna gain in dBi |
|H1(·)|, |H2(·)| | Magnitude responses of couplers at the transmitter and receiver |
|Hp(·)| | Magnitude response of the power line |
|H(·)| | Magnitude response of power line combined with couplers at the transmitter and receiver |
|Hc(·)| | Magnitude response of the power line combined with a coupler at the receiver |
NMAX, NAVG | Baseline noise powers with the maximum and average functions |
PN, PS | Noise and signal power in dBm |
PTX | Transmitter power in dBm |
PR(d) | Received power with respect to the distance d in dBm |
β, p10 | Received powers at 0 m and d = 10 m in dBm |
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Population | Distances | |||
---|---|---|---|---|
Site | Density | MPs | (Meters) | Characteristics |
1-1 | Middle | 5 | 32, 76, 118, 99, 60 | Small houses from 1 to 3 stories |
1-2 | Middle | 4 | 11, 30, 57, 101 | Small 1-story houses |
1-3 | 3 | 17, 31, 35 | ||
1-4 | Low | 3 | 35, 32, 84 | |
1-5 | Middle | 3 | 52, 60, 96 | |
2-1 | High | 2 | 6, 61 | Medium-sized commercial buildings below 10 stories |
Noise from neon signs for PLC | ||||
2-2 | High | 3 | 16, 55, 72 | Medium-sized business hotels below 10 stories |
2-3 | High | 2 | 5, 44 | Small-sized commercial buildings less than 3 stories |
2-4 | Middle | 3 | 3, 44, 45 | |
3-1 | Low | 3 | 64, 98, 147 | Small 1-story houses |
PV panels around the low-voltage distribution lines | ||||
Switching noise for PLC during solar power generation | ||||
3-2 | Low | 2 | 140, 179 | Few houses |
Long distances from the transformers | ||||
3-3 | Low | 3 | 6, 55, 90 | Small and medium-sized houses |
Roof-type solar power plants with PV panels of kW | ||||
4-1 | Low | 2 | 10, 22 | Small factories below 2 stories |
4-2 | 1 | 49 | Short distances between customers and transformers | |
4-3 | 2 | 10, 10 | High-frequency noise for PLC from motors | |
5-1 | Middle | 1 | 21 | Multi-family houses with 3 to 4 stories |
From the transformer to the 1st pole; overhead lines | ||||
From the 1st pole to customers; underground lines | ||||
5-2 | High | 3 | 72, 138, 214 | 5-story multi-family houses and commercial buildings |
Long-range underground low-voltage distribution lines | ||||
5-3 | High | 3 | 1st, 8th, 17th floors | Apartment complex of 8 buildings below 20 stories |
from the 1st floor | Measured in the 18-story building (144 households) |
Residental | Commercial | Rural | Factory | Underground | |
---|---|---|---|---|---|
(dBm/m) | −0.212 | −0.135 | −0.074 | −0.145 | −0.127 |
(dBm) | −28.8 | −31.6 | −31.2 | −28.3 | −38.1 |
Average noise power (dBm) | −47.2 | −43.2 | −40.0 | −43.4 | −49.6 |
Maximum noise power (dBm) | −39.5 | −33.0 | −34.0 | −35.1 | −38.6 |
Wi-SUN | ZigBee | |||||
---|---|---|---|---|---|---|
Environment Area | EPD (14 dBm) | EPD (23 dBm) | AR | EPD | AR | |
(Meters) | a (dB/) | (Meters) | a (dB/) | |||
Overhead | Residential | 118 | 188 | −44.4 | 94.8 | −44.1 |
Commercial | 463 | 978 | −27.7 | 371 | −25.9 | |
Rural | 322 | 621 | −31.5 | 139 | −38.9 | |
Factory | 349 | 685 | −30.7 | 217 | −30.8 | |
Underground | 31.8 | 39.6 | −93.9 | 37.0 | −79.4 |
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Kim, D.S.; Chung, B.J.; Chung, Y.M. Analysis of AMI Communication Methods in Various Field Environments. Energies 2020, 13, 5185. https://doi.org/10.3390/en13195185
Kim DS, Chung BJ, Chung YM. Analysis of AMI Communication Methods in Various Field Environments. Energies. 2020; 13(19):5185. https://doi.org/10.3390/en13195185
Chicago/Turabian StyleKim, Dong Sik, Beom Jin Chung, and Young Mo Chung. 2020. "Analysis of AMI Communication Methods in Various Field Environments" Energies 13, no. 19: 5185. https://doi.org/10.3390/en13195185