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Proceedings ArticleDOI

Power Grid Online Surveillance through PMU-Embedded Convolutional Neural Networks

TLDR
A PMU-embedded framework that can ensure real-time grid surveillance and potentially enables adaptive selection of SEA for more accurate synchrophasor estimation is proposed and achieves state-of-the-art classification accuracy on multiple types of prevailing events in power grids.
Abstract
Power grid operation continuously experiences state transitions caused by the internal and external uncertainties, e.g., equipment failures and weather-driven faults. This prompts an observation of different types of waveforms at the measurement points (substations) in power systems captured by the phasor measurement units (PMUs) and intelligent electronic devices (IEDs) embedded with PMU functionality, e.g., digital relays and fault recorders. The PMU should be, hence, equipped with either one synchrophasor estimation algorithm (SEA) that is accurate and robust to many different types of signals any time across the network, or should adaptively select the promising SEA, among an embedded suite of algorithms. This paper proposes a PMU-embedded framework that can ensure real-time grid surveillance and potentially enables adaptive selection of SEA for more accurate synchrophasor estimation. Our proposed framework is consisted of two components: (i) a pseudo continuous quadrature wavelet transform (PCQ-WT) algorithm using a modified Gabor wavelet transform, which generates the featured-scalograms; and (ii) a convolutional neural network (CNN), that classifies the events based on the extracted features in the scalograms. Our experiments demonstrate that the proposed framework achieves state-of-the-art classification accuracy on multiple types of prevailing events in power grids, through which an enhanced grid-scale situational awareness in real-time can be realized.

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Citations
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Journal ArticleDOI

Electric Power Grid Resilience to Cyber Adversaries: State of the Art

TL;DR: This survey discusses such major directions and recent advancements from a lens of different detection techniques, equipment protection plans, and mitigation strategies to enhance the energy delivery infrastructure resilience and operational endurance against cyber attacks.
Journal ArticleDOI

Seismic-Resilient Electric Power Distribution Systems: Harnessing the Mobility of Power Sources

TL;DR: A two-stage restoration scheme to facilitate the DS restoration following the high-impact low-probability (HILP) seismic disasters is proposed and a significant reduction in the load outages and an improved power system resilience to HILP earthquakes is verified.
Journal ArticleDOI

Power Grid Online Surveillance Through PMU-Embedded Convolutional Neural Networks

TL;DR: A PMU-embedded framework that ensures real-time grid surveillance and potentially enables adaptive selection of preinstalled SEAs in the PMU is proposed and achieves high classification accuracy on multiple types of prevailing events in power grids.
Journal ArticleDOI

On the Use of Artificial Intelligence for High Impedance Fault Detection and Electrical Safety

TL;DR: An online monitoring system embedded with machine learning analytics is proposed that ensures a fast and accurate detection of HIFs in power systems and its efficacy and superiority over the state-of-the-art advancements is demonstrated.
Proceedings ArticleDOI

A Machine Learning Approach to Detection of Geomagnetically Induced Currents in Power Grids

TL;DR: Simulated results verify that the proposed approach can promisingly estimate GICs in power systems during a variety of grid operating conditions.
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