Two-Stage Transformer–Customer Relationship Identification Strategy for Low-Voltage Distribution Grid Using Physics-Guided Graph Attention Network
Abstract
1. Introduction
- (1)
- A novel two-stage identification strategy integrating PGAT for transformer–customer relationships in LVDG. Initial identification is achieved through clustering algorithms, followed by graph-learning-based refinement of transformer–customer mappings. This method provides a cost-effective, noise-resistant, and highly implementable solution for relationship identification.
- (2)
- A voltage fluctuation-based MPAA algorithm is developed for data compression and denoising of raw measurements. Time-series weighted aggregation using voltage fluctuation intensity metrics (considering both transient and steady-state fluctuations) preserves crucial voltage correlation features. This method resolves the “feature submergence” issue in conventional methods while improving computational efficiency.
- (3)
- A PGAT training paradigm is proposed. The loss function design incorporates customer power source uniqueness, transformer capacity constraints, and real-time power balance between customers and transformers. This ensures the learning paradigm adheres to grid topology and electrical characteristic constraints. Efficient learning of transformer–customer electrical information and connection patterns is achieved, significantly improving identification accuracy.
2. Transformer–Customer Relationship Identification Architecture for LVDG
3. Preliminary Identification of Transformer–Customer Relationships Using MPAA-K-Means
3.1. MPAA Algorithm Based on Voltage Fluctuation
3.2. Preliminary Identification of Transformer–Customer Relationships Using Mpaa-K-Means
4. Refined Identification Using PGAT
4.1. Graph Structured Representation of the Transformer–Customer Relationships Based on Preliminary Identification Results
4.2. Transformer–Customer Feature Extraction and Connection Refinement Using Modified GAT
- (1)
- Feature fusion based on GAT
- (2)
- Proposed physics-guided loss function design paradigm
- (a)
- Single power supply operation for customers
- (b)
- Transformer capacity constraint
- (c)
- Real-time power balance between transformers and customers
5. Two-Stage Transformer–Customer Relationship Identification Process for LVDG Using PGAT
6. Case Studies
6.1. Case Configuration
6.2. Analysis of the Model Training Process
6.3. Results of Transformer–Customer Relationship Identification
6.4. Comparison of Different Methods
6.5. Analysis of Model Sensitivity
7. Conclusions
- (1)
- The proposed two-stage transformer–customer relationship identification strategy achieves preliminary identification through the MPAA-K-means algorithm. The PGAT model further learns the electrical coupling relationships between transformers and customers, incorporating grid physical constraints for refined identification. The strategy achieves a final identification accuracy of 99.49%, demonstrating efficient learning and precise identification of transformer–customer association patterns.
- (2)
- Comparative experiments validate that the MPAA algorithm effectively compresses and denoises measurement data while preserving voltage correlation features, significantly improving K-means clustering stability. The proposed PGAT model embeds the electrical constraints of LVDG into the training paradigm. The proposed model achieves 5.37% higher identification accuracy compared to conventional GAT models.
- (3)
- The proposed two-stage strategy demonstrates superior noise resistance performance. The attention mechanism dynamically adjusts node weights to effectively address challenges posed by AMI measurement noise. For every 4% increase in noise, the identification accuracy reduces by only 2.09% on average. This provides an effective solution for accurate and reliable transformer–customer relationship identification in practical grid operations.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Transformer ID | Number of Customers |
---|---|
1 | 83 |
2 | 79 |
3 | 47 |
4 | 61 |
5 | 34 |
6 | 31 |
7 | 56 |
Correctly Identified Household Count | Incorrectly Identified Household Count | Accuracy/% | |
---|---|---|---|
Method 1 | 316 | 75 | 80.82 |
Method 2 | 331 | 60 | 84.65 |
Method 3 | 368 | 23 | 94.12 |
Method 4 | 389 | 2 | 99.49 |
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Lei, Y.; Yang, F.; Feng, Y.; Hu, W.; Cheng, Y. Two-Stage Transformer–Customer Relationship Identification Strategy for Low-Voltage Distribution Grid Using Physics-Guided Graph Attention Network. Energies 2025, 18, 4380. https://doi.org/10.3390/en18164380
Lei Y, Yang F, Feng Y, Hu W, Cheng Y. Two-Stage Transformer–Customer Relationship Identification Strategy for Low-Voltage Distribution Grid Using Physics-Guided Graph Attention Network. Energies. 2025; 18(16):4380. https://doi.org/10.3390/en18164380
Chicago/Turabian StyleLei, Yang, Fan Yang, Yanjun Feng, Wei Hu, and Yinzhang Cheng. 2025. "Two-Stage Transformer–Customer Relationship Identification Strategy for Low-Voltage Distribution Grid Using Physics-Guided Graph Attention Network" Energies 18, no. 16: 4380. https://doi.org/10.3390/en18164380
APA StyleLei, Y., Yang, F., Feng, Y., Hu, W., & Cheng, Y. (2025). Two-Stage Transformer–Customer Relationship Identification Strategy for Low-Voltage Distribution Grid Using Physics-Guided Graph Attention Network. Energies, 18(16), 4380. https://doi.org/10.3390/en18164380