PaToPa: A Data-Driven Parameter and Topology Joint Estimation Framework in Distribution Grids
The increasing integration of distributed energy resources (DERs) calls for new planning and operational tools. However, such tools depend on system topology and line parameters, which may be missing or inaccurate in distribution grids. With abundant data, one idea is to use linear regression to fin...
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Zusammenfassung: | The increasing integration of distributed energy resources (DERs) calls for
new planning and operational tools. However, such tools depend on system
topology and line parameters, which may be missing or inaccurate in
distribution grids. With abundant data, one idea is to use linear regression to
find line parameters, based on which topology can be identified. Unfortunately,
the linear regression method is accurate only if there is no noise in both the
input measurements (e.g., voltage magnitude and phase angle) and output
measurements (e.g., active and reactive power). For topology estimation, even
with a small error in measurements, the regression-based method is incapable of
finding the topology using non-zero line parameters with a proper metric. To
model input and output measurement errors simultaneously, we propose the
error-in-variables (EIV) model in a maximum likelihood estimation (MLE)
framework for joint line parameter and topology estimation. While directly
solving the problem is NP-hard, we successfully adapt the problem into a
generalized low-rank approximation problem via variable transformation and
noise decorrelation. For accurate topology estimation, we let it interact with
parameter estimation in a fashion that is similar to expectation-maximization
fashion in machine learning. The proposed PaToPa approach does not require a
radial network setting and works for mesh networks. We demonstrate the superior
performance in accuracy for our method on IEEE test cases with actual feeder
data from South California Edison. |
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DOI: | 10.48550/arxiv.1705.08870 |