Abstract
The integration of advanced metering infrastructure (AMI) into power distribution networks generates valuable data for tasks such as phase identification; however, the limited and unreliable availability of labeled data in the form of customer phase connectivity presents challenges. To address this issue, we propose a semi-supervised learning (SSL) framework that effectively leverages labeled and unlabeled data. Our approach incorporates self-training, label spreading, and Bayesian neural networks (BNNs) to enhance phase identification with AMI data. Our method uses an ensemble of multilayer perceptron classifiers in a self-training setup, iteratively adding high-confidence pseudo-labels to improve robustness. We also apply label spread to propagate labels based on data similarity, which enhances generalization across diverse distributions. In addition, we employ a BNNs with uncertainty estimation, boosting confidence in predictions and reducing phase identification errors. In our case study, we achieved approximately 98% +- 0.08 accuracy with uncertainty using minimal and unreliable labeled data from a real U.S. utility, Duquesne Light Company. Our SSL approach, combined with uncertainty estimation, provides an efficient solution for phase identification in AMI data, ultimately improving the reliability of smart grid applications.
| Original language | American English |
|---|---|
| Number of pages | 5 |
| DOIs | |
| State | Published - 2025 |
| Event | IEEE PES GM - Austin, TX Duration: 27 Jul 2025 → 31 Jul 2025 |
Conference
| Conference | IEEE PES GM |
|---|---|
| City | Austin, TX |
| Period | 27/07/25 → 31/07/25 |
NLR Publication Number
- NREL/CP-5D00-92204
Keywords
- advanced metering infrastructure (AMI)
- bayesian neural networks (BNNs)
- phase identification
- semi-supervised learning (SSL)
- uncertainty estimation