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Power Systems Computation Conference 2024

Proceedings of the 23rd Power Systems Computation Conference - PSCC 2024 »

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Graph-Learning-Assisted State Estimation Using Sparse Heterogeneous Measurements

Unlike transmission systems, distribution systems historically lack enough measurements, making their real-time monitoring almost impossible. Recent deployment of diverse types of devices such as phasor measurement units (PMUs), smart meters, solar inverters and weather information sensors opens up new ways of monitoring these systems, with the assistance of customized machine learning (ML) applications. The paper describes a grid-model-informed machine learning (ML) tool which integrates heterogeneous data streams and creates synchronous measurement snapshots to be used by a hybrid robust state estimator (SE) which provides not only accurate state estimates but also real-time feedback for ML model refinement. Improved monitoring performance due to the use of developed computational framework is experimentally observed by simulated scenarios on an electric utility’s distribution system.

Ali Abur
Northeastern University
United States

Han Yue
Brandeis University
United States

Wentao Zhang
University of Massachusetts-Lowell
United States

Ugur Yilmaz
Northeastern University
United States

Tuna Yildiz
Northeastern University
United States

Heqing Huang
New York University

Hongfu Liu
Brandeis University
United States

Yuzhang Lin
University of Massachusetts-Lowell
United States

 


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