Faulty Feeder Identification Based on Data Analysis and Similarity Comparison for Flexible Grounding System in Electric Distribution Networks
Abstract
:1. Introduction
2. Wavelet Packet Transformation for FGS
2.1. Principle of Wavelet Packet Transform
2.2. Extraction of Zero-Sequence Current Transient Characteristic
- (1)
- Determine the actual fault time—the system continuously collects the bus zero-sequence voltage and feeder zero-sequence current during normal operation and saves at least two cycles of data. In order to distinguish between ground fault and voltage unbalance, the zero-sequence voltage threshold Uset is set to 15% of the maximum phase voltage, thus as to identify 0–2 kΩ ground fault. When the instantaneous value of the zero-sequence voltage exceeds the threshold, it is judged that a fault has occurred. However, sometimes it is affected by the grounding resistance or other conditions, and the instantaneous value of the zero-sequence voltage does not immediately cross the boundary. That is to say, the fault time t1 obtained according to the above method often lags the actual fault time t0. In this article, the Coiflet5 wavelet is used to transform the zero-sequence voltage using the wavelet packet singularity principle to determine the maximum point. At this point, the signal mutation is the most obvious, corresponding to the actual fault time t0.
- (2)
- Transient characteristic waveform extraction—under typical conditions, such as the broken wire-to-ground fault, the ground medium is the cement floor, weeds and so on. The transition resistance is usually hundreds to thousands of ohms. Therefore, when this kind of fault occurs, the fault current is mainly composed of the fundamental current. In addition, due to the existence of nonlinear load, the fault current will also contain some low-frequency harmonic current components. Thus, in the fault current, 1st, 3rd, and 5th signal amplitude are the largest, and their characteristics are most obvious when the fault occurs. Using this as the reference waveform for line selection can reduce the interference of high frequencies and other uncontrollable factors. Select the sampling frequency as 10 kHz, consider the boundary effect, and take the feeder zero-sequence current signals of 1/4 and 3/4 cycles before and after the fault time to perform four-layer wavelet packet decomposition, and the schematic diagram of the four-layer wavelet packet tree is shown in Figure 5. According to Shannon’s sampling theorem, the effective frequency bandwidth represented by each node on the fourth layer = 10,000/2/16 = 312.5 Hz. Therefore, the reconstructed signal at node (4, 0) can accurately extract the signal of 0–312.5 Hz through only one period of sampling signal. The principle of this method is equivalent to low-pass filtering without time delay.
3. Feeder Identification Method Based on Grey T-Type Correlation Degree
3.1. Characteristic Analysis of Transient Zero-Sequence Current
3.2. Principle of Faulty Feeder Identification Using Grey T-Type Correlation Degree
3.3. Identification Criterion Based on Grey T-Type Correlation Degree
4. Verification Results and Discussion
4.1. Characteristics of Transient Zero-Sequence Current
4.2. Faulty Feeder Identification under Typical Situations
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Types | Phase Sequence | R0 (Ω/km) | L0 (mH/km) | C0 (nF/km) |
---|---|---|---|---|
Overhead Lines | Positive sequence | 0.132 | 1.258 | 9.780 |
Zero sequence | 0.389 | 4.126 | 7.758 | |
Cable | Positive sequence | 0.270 | 0.255 | 339 |
Zero sequence | 2.700 | 1.019 | 280 |
Fault Line | Fault Location/km | [μ1, μ2, μ3, μ4, μ5] | Min[μ1, μ2, μ3, μ4, μ5] | Line Selection Result |
---|---|---|---|---|
L1 | 10 | [−0.5644, 0.5122, 0.4800, 0.4486, 0.5095] | −0.5644 | L1 |
25 | [−0.5193, 0.4256, 0.4584, 0.4149, 0.4736] | −0.5193 | L1 | |
L2 | 5 | [0.4241, −0.6755, 0.4115, 0.4367, 0.4846] | −0.6755 | L2 |
10 | [0.5238, −0.5423, 0.5134, 0.4282, 0.5119] | −0.5423 | L2 | |
L3 | 5 | [0.5963, 0.5845, −0.4122, 0.4638, 0.5735] | −0.4122 | L3 |
15 | [0.6203, 0.6316, −0.2158, 0.5369, 0.6135] | −0.2158 | L3 | |
L4 | 10 | [0.4839, 0.3656, 0.5552, 0.1218, 0.5569] | 0.1218 | L4 |
20 | [0.5763, 0.5554, 0.6210, −0.0796, 0.6216] | −0.0796 | L4 | |
L5 | 4 | [0.5087, 0.4212, 0.5307, 0.4979, −0.0084] | −0.0084 | L5 |
8 | [0.4731, 0.5204, 0.5399, 0.5347, −0.0585] | −0.0585 | L5 | |
Bus | 0 | [0.6351, 0.5808, 0.7460, 0.7594, 0.7642] | 0.5808 | Bus |
Fault Line | Fault Location/km | [μ1, μ2, μ3, μ4, μ5] | Min[μ1, μ2, μ3, μ4, μ5] | Line Selection Result |
---|---|---|---|---|
L1 | 10 | [−0.2235, 0.6375, 0.6312, 0.6296, 0.6438] | −0.2235 | L1 |
25 | [−0.0702, 0.6839, 0.6558, 0.6459, 0.6381] | −0.0702 | L1 | |
L2 | 5 | [0.6328, −0.0473, 0.6381, 0.6258, 0.6479] | −0.0473 | L2 |
10 | [0.6996, −0.0059, 0.6036, 0.6184, 0.6328] | −0.0059 | L2 | |
L3 | 5 | [0.6287, 0.6661, −0.0399, 0.5736, 0.6509] | −0.0399 | L3 |
15 | [0.6689, 0.6586, −0.0403, 0.6254, 0.6564] | −0.0403 | L3 | |
L4 | 10 | [0.6167, 0.5677, 0.6366, 0.0679, 0.6477] | 0.0679 | L4 |
20 | [0.5834, 0.5537, 0.6446, 0.0116, 0.6469] | 0.0116 | L4 | |
L5 | 4 | [0.5618, 0.5766, 0.5865, 0.6022, 0.0343] | 0.0343 | L5 |
8 | [0.5031, 0.5198, 0.5856, 0.5614, −0.0017] | −0.0017 | L5 | |
Bus | 0 | [0.7468, 0.7651, 0.8005, 0.8204, 0.8322] | 0.7468 | Bus |
Fault Line | Fault Location/km | [μ1, μ2, μ3, μ4, μ5] | Min[μ1, μ2, μ3, μ4, μ5] | Line Selection Result |
---|---|---|---|---|
L1 | 10 | [−0.6703, 0.4789, 0.4503, 0.4188, 0.4996] | −0.6703 | L1 |
25 | [−0.7266, 0.4576, 0.4569, 0.4250, 0.4563] | −0.7266 | L1 | |
L2 | 5 | [0.4239, −0.6702, 0.4241, 0.4264, 0.4461] | −0.6702 | L2 |
10 | [0.2697, −0.6931, 0.3334, 0.3589, 0.3202] | −0.6931 | L2 | |
L3 | 5 | [0.4817, 0.4935, −0.6572, 0.4517, 0.5066] | −0.6572 | L3 |
15 | [0.5092, 0.4963, −0.6208, 0.4759, 0.5183] | −0.6208 | L3 | |
L4 | 10 | [0.5100, 0.4516, 0.5161, −0.6454, 0.5204] | −0.6454 | L4 |
20 | [0.5347, 0.5119, 0.5245, −0.6338, 0.5429] | −0.6338 | L4 | |
L5 | 4 | [0.4646, 0.4326, 0.4692, 0.4588, −0.6833] | −0.6833 | L5 |
8 | [0.4890, 0.4209, 0.4931, 0.4783, −0.6873] | −0.6873 | L5 | |
Bus | 0 | [0.7385, 0.8162, 0.7997, 0.7989, 0.7197] | 0.7197 | Bus |
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Liu, K.; Zhang, S.; Li, B.; Zhang, C.; Liu, B.; Jin, H.; Zhao, J. Faulty Feeder Identification Based on Data Analysis and Similarity Comparison for Flexible Grounding System in Electric Distribution Networks. Sensors 2021, 21, 154. https://doi.org/10.3390/s21010154
Liu K, Zhang S, Li B, Zhang C, Liu B, Jin H, Zhao J. Faulty Feeder Identification Based on Data Analysis and Similarity Comparison for Flexible Grounding System in Electric Distribution Networks. Sensors. 2021; 21(1):154. https://doi.org/10.3390/s21010154
Chicago/Turabian StyleLiu, Kangli, Sen Zhang, Baorun Li, Chi Zhang, Biyang Liu, Hao Jin, and Jianfeng Zhao. 2021. "Faulty Feeder Identification Based on Data Analysis and Similarity Comparison for Flexible Grounding System in Electric Distribution Networks" Sensors 21, no. 1: 154. https://doi.org/10.3390/s21010154
APA StyleLiu, K., Zhang, S., Li, B., Zhang, C., Liu, B., Jin, H., & Zhao, J. (2021). Faulty Feeder Identification Based on Data Analysis and Similarity Comparison for Flexible Grounding System in Electric Distribution Networks. Sensors, 21(1), 154. https://doi.org/10.3390/s21010154