A hierarchical self-adaptive method for post-disturbance transient stability assessment of power systems using an integrated CNN-based ensemble classifier
Data-driven approaches using synchronous phasor measurements are playing an important role in transient stability assessment (TSA). For post-disturbance TSA, there is not a definite conclusion about how long the response time should be. Furthermore, previous studies seldom considered the confidence...
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sg-ntu-dr.10356-1419032020-06-11T08:27:15Z A hierarchical self-adaptive method for post-disturbance transient stability assessment of power systems using an integrated CNN-based ensemble classifier Zhang, Ruoyu Wu, Junyong Xu, Yan Li, Baoqin Shao, Meiyang School of Electrical and Electronic Engineering Engineering::Electrical and electronic engineering Transient Stability Assessment (TSA) Intelligent System (IS) Data-driven approaches using synchronous phasor measurements are playing an important role in transient stability assessment (TSA). For post-disturbance TSA, there is not a definite conclusion about how long the response time should be. Furthermore, previous studies seldom considered the confidence level of prediction results and specific stability degree. Since transient stability can develop very fast and cause tremendous economic losses, there is an urgent need for faster response speed, credible accurate prediction results, and specific stability degree. This paper proposed a hierarchical self-adaptive method using an integrated convolutional neural network (CNN)-based ensemble classifier to solve these problems. Firstly, a set of classifiers are sequentially organized at different response times to construct different layers of the proposed method. Secondly, the confidence integrated decision-making rules are defined. Those predicted as credible stable/unstable cases are sent into the stable/unstable regression model which is built at the corresponding decision time. The simulation results show that the proposed method can not only balance the accuracy and rapidity of the transient stability prediction, but also predict the stability degree with very low prediction errors, allowing more time and an instructive guide for emergency controls. Published version 2020-06-11T08:27:15Z 2020-06-11T08:27:15Z 2019 Journal Article Zhang, R., Wu, J., Xu, Y., Li, B., & Shao, M. (2019). A hierarchical self-adaptive method for post-disturbance transient stability assessment of power systems using an integrated CNN-based ensemble classifier. Energies, 12(17), 3217-. doi:10.3390/en12173217 1996-1073 https://hdl.handle.net/10356/141903 10.3390/en12173217 2-s2.0-85071247238 17 12 en Energies © 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/). application/pdf |
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Engineering::Electrical and electronic engineering Transient Stability Assessment (TSA) Intelligent System (IS) Zhang, Ruoyu Wu, Junyong Xu, Yan Li, Baoqin Shao, Meiyang A hierarchical self-adaptive method for post-disturbance transient stability assessment of power systems using an integrated CNN-based ensemble classifier |
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Data-driven approaches using synchronous phasor measurements are playing an important role in transient stability assessment (TSA). For post-disturbance TSA, there is not a definite conclusion about how long the response time should be. Furthermore, previous studies seldom considered the confidence level of prediction results and specific stability degree. Since transient stability can develop very fast and cause tremendous economic losses, there is an urgent need for faster response speed, credible accurate prediction results, and specific stability degree. This paper proposed a hierarchical self-adaptive method using an integrated convolutional neural network (CNN)-based ensemble classifier to solve these problems. Firstly, a set of classifiers are sequentially organized at different response times to construct different layers of the proposed method. Secondly, the confidence integrated decision-making rules are defined. Those predicted as credible stable/unstable cases are sent into the stable/unstable regression model which is built at the corresponding decision time. The simulation results show that the proposed method can not only balance the accuracy and rapidity of the transient stability prediction, but also predict the stability degree with very low prediction errors, allowing more time and an instructive guide for emergency controls. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Zhang, Ruoyu Wu, Junyong Xu, Yan Li, Baoqin Shao, Meiyang |
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Article |
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Zhang, Ruoyu Wu, Junyong Xu, Yan Li, Baoqin Shao, Meiyang |
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Zhang, Ruoyu |
title |
A hierarchical self-adaptive method for post-disturbance transient stability assessment of power systems using an integrated CNN-based ensemble classifier |
title_short |
A hierarchical self-adaptive method for post-disturbance transient stability assessment of power systems using an integrated CNN-based ensemble classifier |
title_full |
A hierarchical self-adaptive method for post-disturbance transient stability assessment of power systems using an integrated CNN-based ensemble classifier |
title_fullStr |
A hierarchical self-adaptive method for post-disturbance transient stability assessment of power systems using an integrated CNN-based ensemble classifier |
title_full_unstemmed |
A hierarchical self-adaptive method for post-disturbance transient stability assessment of power systems using an integrated CNN-based ensemble classifier |
title_sort |
hierarchical self-adaptive method for post-disturbance transient stability assessment of power systems using an integrated cnn-based ensemble classifier |
publishDate |
2020 |
url |
https://hdl.handle.net/10356/141903 |
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1681056770310537216 |