Fast Prediction of Angle Stability Using Support Vector Machine and Fault Duration Data

This paper deals with the prediction of the transient stability of power systems using only pre-fault and fault duration data measured by Wide Area Measurement System (WAMS). In the proposed method, the time-synchronized values of voltage and current generated by synchronous generators (SGs) are mea...

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Main Authors: Shahriyari, M., Khoshkhoo, H., Pouryekta, A., Ramachandaramurthy, V.K.
Format: Conference Paper
Language:English
Published: 2020
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Institution: Universiti Tenaga Nasional
Language: English
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spelling my.uniten.dspace-130152020-07-06T08:51:20Z Fast Prediction of Angle Stability Using Support Vector Machine and Fault Duration Data Shahriyari, M. Khoshkhoo, H. Pouryekta, A. Ramachandaramurthy, V.K. This paper deals with the prediction of the transient stability of power systems using only pre-fault and fault duration data measured by Wide Area Measurement System (WAMS). In the proposed method, the time-synchronized values of voltage and current generated by synchronous generators (SGs) are measured by Phasor Measurement Units (PMUs) installed at generator buses, and given as input to the proposed algorithm in order to extract a proper feature set. Then, the proposed feature set is applied to Support Vector Machine (SVM) classifier to predict the transient stability status after fault occurrence and before fault clearance. The robustness and accuracy of the proposed method has been extensively examined under both unbalanced and balanced fault conditions as well as under different operating conditions. The results of simulation performed on an IEEE 14-bus test system using DIgSILENT PowerFactory software show that the proposed method can accurately predict the transient stability status against different contingencies using only pre-disturbance and fault duration data. © 2019 IEEE. 2020-02-03T03:29:47Z 2020-02-03T03:29:47Z 2019 Conference Paper 10.1109/I2CACIS.2019.8825052 en
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
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language English
description This paper deals with the prediction of the transient stability of power systems using only pre-fault and fault duration data measured by Wide Area Measurement System (WAMS). In the proposed method, the time-synchronized values of voltage and current generated by synchronous generators (SGs) are measured by Phasor Measurement Units (PMUs) installed at generator buses, and given as input to the proposed algorithm in order to extract a proper feature set. Then, the proposed feature set is applied to Support Vector Machine (SVM) classifier to predict the transient stability status after fault occurrence and before fault clearance. The robustness and accuracy of the proposed method has been extensively examined under both unbalanced and balanced fault conditions as well as under different operating conditions. The results of simulation performed on an IEEE 14-bus test system using DIgSILENT PowerFactory software show that the proposed method can accurately predict the transient stability status against different contingencies using only pre-disturbance and fault duration data. © 2019 IEEE.
format Conference Paper
author Shahriyari, M.
Khoshkhoo, H.
Pouryekta, A.
Ramachandaramurthy, V.K.
spellingShingle Shahriyari, M.
Khoshkhoo, H.
Pouryekta, A.
Ramachandaramurthy, V.K.
Fast Prediction of Angle Stability Using Support Vector Machine and Fault Duration Data
author_facet Shahriyari, M.
Khoshkhoo, H.
Pouryekta, A.
Ramachandaramurthy, V.K.
author_sort Shahriyari, M.
title Fast Prediction of Angle Stability Using Support Vector Machine and Fault Duration Data
title_short Fast Prediction of Angle Stability Using Support Vector Machine and Fault Duration Data
title_full Fast Prediction of Angle Stability Using Support Vector Machine and Fault Duration Data
title_fullStr Fast Prediction of Angle Stability Using Support Vector Machine and Fault Duration Data
title_full_unstemmed Fast Prediction of Angle Stability Using Support Vector Machine and Fault Duration Data
title_sort fast prediction of angle stability using support vector machine and fault duration data
publishDate 2020
_version_ 1672614199320117248