Using Neural Networks to Detect Line Outages from PMU Data
Ching-pei Lee, Stephen J. Wright

TL;DR
This paper introduces a neural network-based method to quickly and accurately detect single- and double-line outages in power grids using PMU data, bypassing complex physical model inversion.
Contribution
It presents a novel approach combining AC power flow simulations with neural network training for real-time outage detection from limited sensor data.
Findings
High accuracy in classifying outages across various demand conditions
Rapid real-time inference using simple matrix-vector operations
Effective sensor placement strategies for outage detection
Abstract
We propose an approach based on neural networks and the AC power flow equations to identify single- and double-line outages in a power grid using the information from phasor measurement unit sensors (PMUs) placed on only a subset of the buses. Rather than inferring the outage from the sensor data by inverting the physical model, our approach uses the AC model to simulate sensor responses to all outages of interest under multiple demand and seasonal conditions, and uses the resulting data to train a neural network classifier to recognize and discriminate between different outage events directly from sensor data. After training, real-time deployment of the classifier requires just a few matrix-vector products and simple vector operations. These operations can be executed much more rapidly than inversion of a model based on AC power flow, which consists of nonlinear equations and possibly…
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Taxonomy
TopicsPower System Optimization and Stability · Power System Reliability and Maintenance · Energy Load and Power Forecasting
