Low-Impact Current-Based Distributed Monitoring System for Medium Voltage Networks
Abstract
:1. Introduction
2. Motivation and Algorithm
2.1. Motivation
2.2. The Algorithm
- Current monitoring and load profile generation.
- Phase estimation of the voltage at the load nodes.
3. Distributed Monitoring System
3.1. Four-Nodes Network
3.1.1. Description
3.1.2. DMS Positioning and Comments
3.2. IEEE 13-Bus Test Feeder
3.2.1. Description
3.2.2. DMS and Comments
4. Validation
4.1. Four-Nodes Network
4.1.1. Simulation Details
4.1.2. Simulation Tests
4.1.3. Simulation Results
4.2. IEEE 13-Bus Test Feeder
4.2.1. Simulation Details
4.2.2. Simulation Tests
- Node 680 is just a terminal; no load is connected.
- Nodes 652 and 611 are loads connected with a very short wire to Node 684. Therefore, combining the two burdens the information on Node 684 can be found.
- Between Node 633 and 634 there is a transformer; therefore, considering negligible the phase distortion that it introduces, the phase of the voltage at node 633 can be obtained.
- There are no loads between Node 692 and Node 675. Therefore, the voltage phase of the two nodes differs by the amount introduced by the line impedance. Such contribution can be easily removed for the sake of algorithm validation (or corrected if a SO knows its line impedances).
4.2.3. Simulation Results
4.3. Uncertainty Propagation
4.3.1. Introduction
- The sensors used to measure the currents used by the PMUs;
- The PMUs;
- The sensors used to measure the voltages and currents needed for the power computation (inside the RGDM or whatever energy meter).
- The energy/power meters.
4.3.2. Monte Carlo Method
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Node A | Node B | Length [m] |
---|---|---|
632 | 645 | 152.40 |
632 | 633 | 152.40 |
633 | 634 | 0 |
645 | 646 | 91.44 |
650 | 632 | 609.60 |
684 | 652 | 243.84 |
632 | 671 | 609.60 |
671 | 684 | 91.44 |
671 | 680 | 304.80 |
671 | 692 | 0 |
684 | 611 | 91.44 |
692 | 675 | 152.40 |
Node | Ph-1 | Ph-1 | Ph-2 | Ph-2 | Ph-3 | Ph-3 |
---|---|---|---|---|---|---|
[kW] | [kVAr] | [kW] | [kVAr] | [kW] | [kVAr] | |
634 | 160 | 110 | 120 | 90 | 120 | 90 |
645 | 0 | 0 | 170 | 125 | 0 | 0 |
646 | 0 | 0 | 230 | 132 | 0 | 0 |
652 | 128 | 86 | 0 | 0 | 0 | 0 |
671 | 385 | 220 | 385 | 220 | 385 | 220 |
675 | 485 | 190 | 68 | 60 | 290 | 212 |
692 | 0 | 0 | 0 | 0 | 170 | 151 |
611 | 0 | 0 | 0 | 0 | 170 | 80 |
Node A | Node B | Ph-1 | Ph-1 | Ph-2 | Ph-2 | Ph-3 | Ph-3 |
---|---|---|---|---|---|---|---|
[kW] | [kVAr] | [kW] | [kVAr] | [kW] | [kVAr] | ||
632 | 671 | 17 | 10 | 66 | 38 | 117 | 68 |
System Frequency | Voltage Supply | Line Resistance |
50 Hz | 20/√3 kV | 0.254 Ω/km |
Simulation Step | Simulation Duration | Line Inductance |
10 μs | 10 s | 0.126 H/km |
Node | Phase | |||
---|---|---|---|---|
634 | Ph-1 | −0.056484 | −0.056001 | −0.483 |
Ph-2 | −2.133224 | 2.132830 | −0.394 | |
Ph-3 | 2.048198 | 2.047500 | 0.628 | |
645 | Ph-2 | −2.124545 | −2.124414 | 0.131 |
Ph-3 | 2.057026 | 2.056521 | 0.504 | |
684 | Ph-1 | −0.092590 | −0.092203 | −0.387 |
Ph-3 | 2.021923 | 2.024673 | −0.749 | |
692 | Ph-1 | −0.092375 | −0.092200 | −0.174 |
Ph-2 | −2.136525 | −2.135578 | −0.947 | |
Ph-3 | 2.025248 | 2.024673 | 0.574 |
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Mingotti, A.; Peretto, L.; Tinarelli, R. Low-Impact Current-Based Distributed Monitoring System for Medium Voltage Networks. Energies 2021, 14, 5308. https://doi.org/10.3390/en14175308
Mingotti A, Peretto L, Tinarelli R. Low-Impact Current-Based Distributed Monitoring System for Medium Voltage Networks. Energies. 2021; 14(17):5308. https://doi.org/10.3390/en14175308
Chicago/Turabian StyleMingotti, Alessandro, Lorenzo Peretto, and Roberto Tinarelli. 2021. "Low-Impact Current-Based Distributed Monitoring System for Medium Voltage Networks" Energies 14, no. 17: 5308. https://doi.org/10.3390/en14175308
APA StyleMingotti, A., Peretto, L., & Tinarelli, R. (2021). Low-Impact Current-Based Distributed Monitoring System for Medium Voltage Networks. Energies, 14(17), 5308. https://doi.org/10.3390/en14175308