A siamese neural network model for phase identification in distribution networks

Journal Article (2025)
Author(s)

D. Liu (TU Delft - DC systems, Energy conversion & Storage)

Juan S. Giraldo (TNO)

P. Palensky (TU Delft - Electrical Sustainable Energy)

Pedro Pablo Vergara (TU Delft - Intelligent Electrical Power Grids)

Department
Electrical Sustainable Energy
DOI related publication
https://doi.org/10.1016/j.ijepes.2025.110718
More Info
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Publication Year
2025
Language
English
Department
Electrical Sustainable Energy
Volume number
169
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Abstract

Distribution system operators (DSOs) often lack high-quality data on low-voltage distribution networks (LVDNs), including the topology and the phase connection of residential customers. The phase connection is essential for phase balancing assessment and distributed energy resources (DERs) integration. The existing load profiles-based approaches rely on stepwise subtraction of the identified customers in a step-by-step identification procedure, while the accuracy of each step is not guaranteed. This paper introduces a siamese neural network model to identify single-phase connections without requiring stepwise subtraction. It comprises self-taught learning (STT) and a phase-label identification strategy. The introduced self-taught learning enables DSOs to train a recurrent neural network-based Siamese network (RSN) only relying on an unlabelled dataset. Besides, the siamese network (SN) is robust to noise and fluctuations in the data to a certain extent, making the proposed method robust to measurement errors. A Kendall correlation-based phase modification strategy is introduced to modified phase labels with lower confidence, aiming to mitigate the accuracy loss induced by the limited generalization of SN. The proposed approach is tested on the IEEE European low voltage test feeder and a residential network in the Netherlands Simulation results illustrate the feasibility and robustness of the proposed approach on incomplete datasets. The accuracy exceeded 83% and 90%, respectively, when using datasets of less than 20 days with and without measurement errors.