SYLGMLNov 14, 2018

Fast Distribution Grid Line Outage Identification with $μ$PMU

arXiv:1811.05646v12 citations
Originality Incremental advance
AI Analysis

This addresses reliability issues in urban distribution grids for grid operators, but it is incremental as it builds on existing change-point detection methods with a new parameter estimation technique.

The paper tackles the problem of identifying line outages in distribution grids with high DER penetration by proposing a data-driven approach using μPMU data and change-point detection, achieving highly accurate identification across multiple grid configurations.

The growing integration of distributed energy resources (DERs) in urban distribution grids raises various reliability issues due to DER's uncertain and complex behaviors. With a large-scale DER penetration, traditional outage detection methods, which rely on customers making phone calls and smart meters' "last gasp" signals, will have limited performance, because the renewable generators can supply powers after line outages and many urban grids are mesh so line outages do not affect power supply. To address these drawbacks, we propose a data-driven outage monitoring approach based on the stochastic time series analysis from micro phasor measurement unit ($μ$PMU). Specifically, we prove via power flow analysis that the dependency of time-series voltage measurements exhibits significant statistical changes after line outages. This makes the theory on optimal change-point detection suitable to identify line outages via $μ$PMUs with fast and accurate sampling. However, existing change point detection methods require post-outage voltage distribution unknown in distribution systems. Therefore, we design a maximum likelihood-based method to directly learn the distribution parameters from $μ$PMU data. We prove that the estimated parameters-based detection still achieves the optimal performance, making it extremely useful for distribution grid outage identifications. Simulation results show highly accurate outage identification in eight distribution grids with 14 configurations with and without DERs using $μ$PMU data.

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