Data-Driven Fault Localization in Distribution Systems with Distributed Energy Resources
Abstract
:1. Introduction
- (1)
- To conduct fault localization based upon fault detection in different subregions, one needs to regionalize the system in an appropriate manner. This paper provides a general criterion for system regionalization based upon the division of the network tree to facilitate the hierarchical search of the fault location.
- (2)
- Rather than hard decisions, we soften them by properly combining SVDD and kernel density estimator (KDE) to obtain quantified confidence levels of decisions, i.e., the p-values. The confidence level will guide one to localize the faulty node with desirable resolution.
- (3)
- Experimental simulations conducted under the IEEE-123 node test feeder show that the data-driven fault localization strategy proposed in this paper significantly outperforms the conventional fault localization methods based upon relay operations.
2. Methodology
2.1. Problem Formulation
2.2. Support Vector Data Description
2.3. Kernel Density Estimation
3. The Data-Driven Fault Localization Strategy
3.1. Criterion for Distribution Systems Partition
- (1)
- Represent a distribution system in terms of a tree graph, denoted as , with L denoting the collection of user nodes , and E representing the set of directed edges in the rooted tree . Identify and classify the branches into three categories: three-phase branches, two-phase branches and single-phase branches.
- (2)
- In general, for a typical radial distribution system, there is usually a clear three-phase trunk wiring. Starting from the root node R in rooted tree G, select one of the paths consisting of three-phase nodes as the trunk of the entire system and go to step (3); If there is no trunk in the rooted tree G, go to step (5).
- (3)
- Along the selected trunk of the system, if an internal node in the trunk, , has at least two children nodes, set the internal node as root node of the subtree , and its subordinate nodes belong to subregion , where k is the index of the subtree/subregion.
- (4)
- In each subtree/subregion, continue to repeat step (2) and find following subtrees/subregions at the lower level of the hierarchy.
- (5)
- In subtree without a trunk, if all subordinate nodes have a degree (except leaf node), partition all nodes into two halves; If not, starting from the root node , continue to repeat the partitioning procedure in the descendant node of until the number of descendant nodes in the lower level subregion is smaller than a predefined lower bound which is set according to the minimum protection area for this system.
3.2. The Details of the Proposed Data-Driven Strategy
4. Simulations
4.1. Simulation Setup and Data Organization
4.2. Fault Localization via Traditional Relay Operations
4.3. Fault Localization via the Proposed Data-Driven Strategy
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Fault Line | 5–6 | 42–44 | 42–43 | 53–54 | 67–68 | 81–82 | 105–106 |
---|---|---|---|---|---|---|---|
Tripped Line | 1–3 3–5 5–6 21–23 23–25 26–27 80–81 91–93 101–105 105–108 | 21–23 23–25 26–27 35–40 40–42 42–44 80–81 91–93 101–105 105–108 135–35 | 13–18 21–23 23–25 26–27 35–40 40–42 42–43 80–81 91–93 101–105 105–108 135–35 | 21–23 23–25 26–27 80–81 87–89 91–93 101–105 105–108 | 21–23 23–25 26–27 80–81 87–89 91–93 101–105 105–108 | 21–23 23–25 26–27 72–76 76–77 76–86 77–78 80–81 87–89 91–93 101–105 105–108 | 21–23 23–25 26–27 67–97 80–81 91–93 101–105 105–106 105–108 197–101 |
p-Value | Fault Line | 5–6 (sr:2) | 42–44 (sr:1) | 42–43 (sr:1) | 53–54 (Trunk) | 67–68 (Trunk) | 81–82 (sr:3) | 105–106 (sr:4) |
---|---|---|---|---|---|---|---|---|
Subregion | ||||||||
subregion 1 | 8.96 × | 6.97 × | 3.35 × | 1.19 × | 7.13 × | 1.83 × | 3.15 × | |
subregion 2 | 3.98 × | 8.90 × | 5.95 × | 6.16 × | 3.24 | 1.36 | 5.91 | |
subregion 3 | 5.32 | 6.04 | 4.04 | 3.16 | 1.45 | 3.11 | 9.19 | |
subregion 4 | 3.54 | 5.94 | 6.58 | 1.70 | 4.44 | 3.41 | 4.58 | |
trunk | 2.42 | 3.35 | 7.38 | 4.82 | 4.82 | 4.82 | 1.84 |
p-Value | Subregion | Subregion 1.1 | Subregion 1.2 | Trunk Subregion |
---|---|---|---|---|
Fault Line | ||||
42–43 (subregion 1) | 0.4849 | 4.29 | 3.77 |
p-Value | Subregion | Subregion 1.2.1 | Subregion 1.2.2 |
---|---|---|---|
Fault Line | |||
42–43 (subregion 1) | 6.98 | 0.5196 |
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Lin, Z.; Duan, D.; Yang, Q.; Hong, X.; Cheng, X.; Yang, L.; Cui, S. Data-Driven Fault Localization in Distribution Systems with Distributed Energy Resources. Energies 2020, 13, 275. https://doi.org/10.3390/en13010275
Lin Z, Duan D, Yang Q, Hong X, Cheng X, Yang L, Cui S. Data-Driven Fault Localization in Distribution Systems with Distributed Energy Resources. Energies. 2020; 13(1):275. https://doi.org/10.3390/en13010275
Chicago/Turabian StyleLin, Zhidi, Dongliang Duan, Qi Yang, Xuemin Hong, Xiang Cheng, Liuqing Yang, and Shuguang Cui. 2020. "Data-Driven Fault Localization in Distribution Systems with Distributed Energy Resources" Energies 13, no. 1: 275. https://doi.org/10.3390/en13010275
APA StyleLin, Z., Duan, D., Yang, Q., Hong, X., Cheng, X., Yang, L., & Cui, S. (2020). Data-Driven Fault Localization in Distribution Systems with Distributed Energy Resources. Energies, 13(1), 275. https://doi.org/10.3390/en13010275