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Journal ArticleDOI

A Power System Disturbance Classification Method Robust to PMU Data Quality Issues

TLDR
Extensive results obtained on the IEEE 39-bus system as well as a large-scale power system in China with field PMU measurements show that the proposed method achieves the highest classification accuracy and computational efficiency as compared to other deep learning algorithms.
Abstract
Data quality issues exist in practical phasor measurement units (PMUs) due to communication errors or signal interferences. As a result, the performances of existing data-driven disturbance classification methods can be significantly affected. In this article, a fast disturbance classification method that is robust to PMU data quality issues is proposed. The impacts of bad PMU measurements on disturbance classification are investigated by analyzing the feature distributions of deep learning methods. A new feature extraction scheme that uses the univariate temporal convolutional denoising autoencoder (UTCN-DAE) is proposed. It allows encoding and decoding univariate disturbance data through a temporal convolutional network to capture the temporal feature representation and is robust to bad data. Based on the features of the frequency and voltage measurements encoded by the UTCN-DAE, a two-stream enhanced network, i.e., the multivariable temporal convolutional denoising network is proposed to achieve optimal feature extraction of multivariate time series by feature fusion. The classification is performed using a multilayered deep neural network and Softmax classifier. Extensive results obtained on the IEEE 39-bus system as well as a large-scale power system in China with field PMU measurements show that the proposed method achieves the highest classification accuracy and computational efficiency as compared to other deep learning algorithms.

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Citations
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Journal ArticleDOI

Deep Learning Based a New Approach for Power Quality Disturbances Classification in Power Transmission System

TL;DR: In this paper , the authors developed a new approach to convolutional neural network (CNN) based which classifies a particular power signal into its respective power quality condition, based on the idea that the best solution will be taken from the newly produced data pool obtained by rescaling the available data according to the total number of pixels before the average data pool is created and then deep CNN processes will continue.
Journal ArticleDOI

WAMS-based two-level robust detection methodology of power system events

TL;DR: In this paper , the authors proposed a two-level robust event detection methodology aiming to reduce false disturbance detection (false positives/alarms) and validate true events, which is divided into two-levels: signal processing analysis and deep neural network (DNN) classification.
Proceedings ArticleDOI

PQD's Detection and Classification Under Normal and Noisy Conditions Based on RADWT & SVM Based Technique

TL;DR: In this paper , the formulation and simulation of power quality disturbances are discussed using MATLAB and support vector machine learning (SVM) classifier, which is used as the programming environment for the mathematical representation of PQD that have been formulated.
Journal ArticleDOI

A Deep-Learning-Based Solution for Securing the Power Grid Against Load Altering Threats by IoT-Enabled Devices

TL;DR: In this paper , a multi-output network (2-D convolutional neural networks classifier and reconstruction decoder) is proposed to detect and localize D-LAAs with high resolution.
References
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TL;DR: A systematic evaluation of generic convolutional and recurrent architectures for sequence modeling concludes that the common association between sequence modeling and recurrent networks should be reconsidered, and convolutionals should be regarded as a natural starting point for sequence modeled tasks.
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TL;DR: In this article, the authors proposed two models to characterize the temporal and channel correlations in PMU erasures and provide theoretical guarantees of a matrix completion method in recovering correlated erasures in both models.
Journal ArticleDOI

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TL;DR: The proposed scheme employs a fast variant of S-Transform (ST) algorithm for the extraction of relevant features, which are used to distinguish among different PQ events by a fuzzy decision tree (FDT)-based classifier.
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