Topology Detection in Power Distribution Networks: A PMU Based Deep Learning Approach

This paper proposes a novel data driven framework for detecting topology transitions in a distribution network. The framework analyzes data from phasor measurement units (PMUs) and relies on the fact that changes in network topology results in changes in the structure and admittance of the network....

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Veröffentlicht in:IEEE transactions on power systems 2022-07, Vol.37 (4), p.2771-2782
Hauptverfasser: Amoateng, David Ofosu, Yan, Ruifeng, Mosadeghy, Mehdi, Saha, Tapan Kumar
Format: Artikel
Sprache:eng
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Zusammenfassung:This paper proposes a novel data driven framework for detecting topology transitions in a distribution network. The framework analyzes data from phasor measurement units (PMUs) and relies on the fact that changes in network topology results in changes in the structure and admittance of the network. Using voltage and current phasors recorded by PMUs, the proposed method approximates network parameters using an ensemble-based deep learning model and thus, it does not require any knowledge of network parameters and load models. Using the prediction error of the proposed model, a connectivity matrix which shows the status of switches is constructed. In contrast to other methods, this proposed framework does not require a library of voltage and current transients associated with possible network transitions. It can also detect simultaneous switching actions and is robust to noise and load variations. The model yields a lower error detection rate, and its performance is validated using a modified version of the IEEE 33 bus network and a real feeder located in Queensland, Australia, under full and partial observability conditions. The proposed model has also been compared with another data driven method in terms of inference time and error detection rates.
ISSN:0885-8950
1558-0679
DOI:10.1109/TPWRS.2021.3128428