Reconstruction Residuals Based Long-term Voltage Stability Assessment Using Autoencoders

Real-time voltage stability assessment (VSA) has long been an extensively research topic. In recent years, rapidly mounting deep learning methods have pushed online VSA to a new height that large amounts of learning algorithms are applied for VSA from the perspective of measurement data. Deep learni...

Full description

Bibliographic Details
Main Authors: Haosen Yang, Robert C. Qiu, Houjie Tong
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:Journal of Modern Power Systems and Clean Energy
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9275597/
id doaj-948e0b57d2924021b836af7244678225
record_format Article
spelling doaj-948e0b57d2924021b836af72446782252021-04-23T16:15:28ZengIEEEJournal of Modern Power Systems and Clean Energy2196-54202020-01-01861092110310.35833/MPCE.2020.0005269275597Reconstruction Residuals Based Long-term Voltage Stability Assessment Using AutoencodersHaosen Yang0Robert C. Qiu1Houjie Tong2Center for Big Data and Artificial Intelligence, Shanghai Jiaotong University,Department of Electrical Engineering,Shanghai,China,200240School of Electronic Information and Communication, Huazhong University of Science and Technology,Wuhan,China,430000Center for Big Data and Artificial Intelligence, Shanghai Jiaotong University,Department of Electrical Engineering,Shanghai,China,200240Real-time voltage stability assessment (VSA) has long been an extensively research topic. In recent years, rapidly mounting deep learning methods have pushed online VSA to a new height that large amounts of learning algorithms are applied for VSA from the perspective of measurement data. Deep learning methods generally require a large dataset which contains measurements in both secure and insecure states, or even unstable state. However, in practice, the data of insecure or unstable state is very rare, as the power system should be guaranteed to operate far away from voltage collapse. Under this circumstance, this paper proposes an autoencoder based method which merely needs data of secure state to evaluate voltage stability of a power system. The principle of this method is that an autoencoder purely trained by secure data is expected to only create precise reconstruction for secure data, while it fails to rebuild data of insecure states. Thus, the residual of reconstruction is effective in indicating VSA. Besides, to develop a more accurate and robust algorithm, long short-term memory (LSTM) networks combined with fully-connected (FC) layers are used to build the autoencoder, and a moving strategy is introduced to bias the features of testing data toward the secure feature domain. Numerous experiments and comparison with traditional machine learning algorithms demonstrate the effectiveness and high accuracy of the proposed method.https://ieeexplore.ieee.org/document/9275597/Reconstruction lossautoencodersvoltage stabilitylong-short-term memory (LSTM)feature moving strategy
collection DOAJ
language English
format Article
sources DOAJ
author Haosen Yang
Robert C. Qiu
Houjie Tong
spellingShingle Haosen Yang
Robert C. Qiu
Houjie Tong
Reconstruction Residuals Based Long-term Voltage Stability Assessment Using Autoencoders
Journal of Modern Power Systems and Clean Energy
Reconstruction loss
autoencoders
voltage stability
long-short-term memory (LSTM)
feature moving strategy
author_facet Haosen Yang
Robert C. Qiu
Houjie Tong
author_sort Haosen Yang
title Reconstruction Residuals Based Long-term Voltage Stability Assessment Using Autoencoders
title_short Reconstruction Residuals Based Long-term Voltage Stability Assessment Using Autoencoders
title_full Reconstruction Residuals Based Long-term Voltage Stability Assessment Using Autoencoders
title_fullStr Reconstruction Residuals Based Long-term Voltage Stability Assessment Using Autoencoders
title_full_unstemmed Reconstruction Residuals Based Long-term Voltage Stability Assessment Using Autoencoders
title_sort reconstruction residuals based long-term voltage stability assessment using autoencoders
publisher IEEE
series Journal of Modern Power Systems and Clean Energy
issn 2196-5420
publishDate 2020-01-01
description Real-time voltage stability assessment (VSA) has long been an extensively research topic. In recent years, rapidly mounting deep learning methods have pushed online VSA to a new height that large amounts of learning algorithms are applied for VSA from the perspective of measurement data. Deep learning methods generally require a large dataset which contains measurements in both secure and insecure states, or even unstable state. However, in practice, the data of insecure or unstable state is very rare, as the power system should be guaranteed to operate far away from voltage collapse. Under this circumstance, this paper proposes an autoencoder based method which merely needs data of secure state to evaluate voltage stability of a power system. The principle of this method is that an autoencoder purely trained by secure data is expected to only create precise reconstruction for secure data, while it fails to rebuild data of insecure states. Thus, the residual of reconstruction is effective in indicating VSA. Besides, to develop a more accurate and robust algorithm, long short-term memory (LSTM) networks combined with fully-connected (FC) layers are used to build the autoencoder, and a moving strategy is introduced to bias the features of testing data toward the secure feature domain. Numerous experiments and comparison with traditional machine learning algorithms demonstrate the effectiveness and high accuracy of the proposed method.
topic Reconstruction loss
autoencoders
voltage stability
long-short-term memory (LSTM)
feature moving strategy
url https://ieeexplore.ieee.org/document/9275597/
work_keys_str_mv AT haosenyang reconstructionresidualsbasedlongtermvoltagestabilityassessmentusingautoencoders
AT robertcqiu reconstructionresidualsbasedlongtermvoltagestabilityassessmentusingautoencoders
AT houjietong reconstructionresidualsbasedlongtermvoltagestabilityassessmentusingautoencoders
_version_ 1721512436918386688