Real-Time Detection of Power System Disturbances Based on $k$ -Nearest Neighbor Analysis

Efficient disturbance detection is important for power system security and stability. In this paper, a new detection method is proposed based on a time series analysis technique known as k-nearest neighbor (kNN) analysis. Advantages of this method are that it can deal with the electrical measurement...

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Main Authors: Lianfang Cai, Nina F. Thornhill, Stefanie Kuenzel, Bikash C. Pal
Format: Article
Language:English
Published: IEEE 2017-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/7885064/
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spelling doaj-59ba362ac9a14fc3a8cca1105f2ae4ec2021-03-29T20:08:35ZengIEEEIEEE Access2169-35362017-01-0155631563910.1109/ACCESS.2017.26790067885064Real-Time Detection of Power System Disturbances Based on $k$ -Nearest Neighbor AnalysisLianfang Cai0https://orcid.org/0000-0003-1054-5445Nina F. Thornhill1Stefanie Kuenzel2Bikash C. Pal3Department of Chemical Engineering, Centre for Process Systems Engineering, Imperial College London, London, U.K.Department of Chemical Engineering, Centre for Process Systems Engineering, Imperial College London, London, U.K.Department of Electronic Engineering, Royal Holloway, University of London, London, U.K.Department of Electrical and Electronic Engineering, Imperial College London, London, U.K.Efficient disturbance detection is important for power system security and stability. In this paper, a new detection method is proposed based on a time series analysis technique known as k-nearest neighbor (kNN) analysis. Advantages of this method are that it can deal with the electrical measurements with oscillatory trends and can be implemented in real time. The method consists of two stages, which are the off-line modeling and the on-line detection. The off-line stage calculates a sequence of anomaly index values using kNN on the historical ambient data and then determines the detection threshold. Afterward, the online stage calculates the anomaly index value of presently measured data by readopting kNN and compares it with the established threshold for detecting disturbances. To meet the real-time requirement, strategies for recursively calculating the distance metrics of kNN and for rapidly picking out the kth smallest metric are built. Case studies conducted on simulation data from the reduced equivalent model of the Great Britain power system and measurements from an actual power system in Europe demonstrate the effectiveness of the proposed method.https://ieeexplore.ieee.org/document/7885064/Disturbance detectionpower systemsecuritystabilityk-nearest neighbor (kNN)anomaly index
collection DOAJ
language English
format Article
sources DOAJ
author Lianfang Cai
Nina F. Thornhill
Stefanie Kuenzel
Bikash C. Pal
spellingShingle Lianfang Cai
Nina F. Thornhill
Stefanie Kuenzel
Bikash C. Pal
Real-Time Detection of Power System Disturbances Based on $k$ -Nearest Neighbor Analysis
IEEE Access
Disturbance detection
power system
security
stability
k-nearest neighbor (kNN)
anomaly index
author_facet Lianfang Cai
Nina F. Thornhill
Stefanie Kuenzel
Bikash C. Pal
author_sort Lianfang Cai
title Real-Time Detection of Power System Disturbances Based on $k$ -Nearest Neighbor Analysis
title_short Real-Time Detection of Power System Disturbances Based on $k$ -Nearest Neighbor Analysis
title_full Real-Time Detection of Power System Disturbances Based on $k$ -Nearest Neighbor Analysis
title_fullStr Real-Time Detection of Power System Disturbances Based on $k$ -Nearest Neighbor Analysis
title_full_unstemmed Real-Time Detection of Power System Disturbances Based on $k$ -Nearest Neighbor Analysis
title_sort real-time detection of power system disturbances based on $k$ -nearest neighbor analysis
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2017-01-01
description Efficient disturbance detection is important for power system security and stability. In this paper, a new detection method is proposed based on a time series analysis technique known as k-nearest neighbor (kNN) analysis. Advantages of this method are that it can deal with the electrical measurements with oscillatory trends and can be implemented in real time. The method consists of two stages, which are the off-line modeling and the on-line detection. The off-line stage calculates a sequence of anomaly index values using kNN on the historical ambient data and then determines the detection threshold. Afterward, the online stage calculates the anomaly index value of presently measured data by readopting kNN and compares it with the established threshold for detecting disturbances. To meet the real-time requirement, strategies for recursively calculating the distance metrics of kNN and for rapidly picking out the kth smallest metric are built. Case studies conducted on simulation data from the reduced equivalent model of the Great Britain power system and measurements from an actual power system in Europe demonstrate the effectiveness of the proposed method.
topic Disturbance detection
power system
security
stability
k-nearest neighbor (kNN)
anomaly index
url https://ieeexplore.ieee.org/document/7885064/
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