Early Warning of Low-Frequency Oscillations in Power System Using Rough Set and Cloud Model

The stability of the power system is largely affected by low-frequency oscillations, so early warning research on low-frequency oscillations in power grids has become an urgent task. Traditional low-frequency oscillation early warning methods are still deficient in handling incomplete and highly dis...

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Main Authors: Miao Yu, Jinyang Han, Shuoshuo Tian, Jianqun Sun, Honghao Wu, Jiaxin Yan
Format: Article
Language:English
Published: Wiley 2025-01-01
Series:International Transactions on Electrical Energy Systems
Online Access:http://dx.doi.org/10.1155/etep/7250421
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author Miao Yu
Jinyang Han
Shuoshuo Tian
Jianqun Sun
Honghao Wu
Jiaxin Yan
author_facet Miao Yu
Jinyang Han
Shuoshuo Tian
Jianqun Sun
Honghao Wu
Jiaxin Yan
author_sort Miao Yu
collection DOAJ
description The stability of the power system is largely affected by low-frequency oscillations, so early warning research on low-frequency oscillations in power grids has become an urgent task. Traditional low-frequency oscillation early warning methods are still deficient in handling incomplete and highly discrete information. Compared with the existing methods, we have pioneered a synergistic mechanism of discrete attribute screening and continuous probabilistic feature fusion by combining the dynamic attribute approximation algorithm of rough sets with the cloud model, which effectively solves the loss of information caused by the discretization of continuous data in the traditional methods. Firstly, we analyze the principle of grid oscillation, use rough sets to process the raw data and indicators, remove redundant attributes, and get the set reflecting the relationship of different attributes. Then we construct a standard cloud based on grid operation data and a comprehensive cloud based on PMU data and obtain the oscillation warning evaluation. Finally, through the validation and simulation of 10 machine and 39 node systems in New England, as well as the comparison with other methods, the rationality and effectiveness of the proposed method are proved to be of theoretical and practical application value.
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institution OA Journals
issn 2050-7038
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publishDate 2025-01-01
publisher Wiley
record_format Article
series International Transactions on Electrical Energy Systems
spelling doaj-art-64a130ac77984b3584ae45ff01ad658d2025-08-20T01:48:48ZengWileyInternational Transactions on Electrical Energy Systems2050-70382025-01-01202510.1155/etep/7250421Early Warning of Low-Frequency Oscillations in Power System Using Rough Set and Cloud ModelMiao Yu0Jinyang Han1Shuoshuo Tian2Jianqun Sun3Honghao Wu4Jiaxin Yan5School of Mechanical-Electronic and Vehicle EngineeringSchool of Mechanical-Electronic and Vehicle EngineeringSchool of Electrical EngineeringSchool of Mechanical-Electronic and Vehicle EngineeringSchool of Mechanical-Electronic and Vehicle EngineeringSchool of Mechanical-Electronic and Vehicle EngineeringThe stability of the power system is largely affected by low-frequency oscillations, so early warning research on low-frequency oscillations in power grids has become an urgent task. Traditional low-frequency oscillation early warning methods are still deficient in handling incomplete and highly discrete information. Compared with the existing methods, we have pioneered a synergistic mechanism of discrete attribute screening and continuous probabilistic feature fusion by combining the dynamic attribute approximation algorithm of rough sets with the cloud model, which effectively solves the loss of information caused by the discretization of continuous data in the traditional methods. Firstly, we analyze the principle of grid oscillation, use rough sets to process the raw data and indicators, remove redundant attributes, and get the set reflecting the relationship of different attributes. Then we construct a standard cloud based on grid operation data and a comprehensive cloud based on PMU data and obtain the oscillation warning evaluation. Finally, through the validation and simulation of 10 machine and 39 node systems in New England, as well as the comparison with other methods, the rationality and effectiveness of the proposed method are proved to be of theoretical and practical application value.http://dx.doi.org/10.1155/etep/7250421
spellingShingle Miao Yu
Jinyang Han
Shuoshuo Tian
Jianqun Sun
Honghao Wu
Jiaxin Yan
Early Warning of Low-Frequency Oscillations in Power System Using Rough Set and Cloud Model
International Transactions on Electrical Energy Systems
title Early Warning of Low-Frequency Oscillations in Power System Using Rough Set and Cloud Model
title_full Early Warning of Low-Frequency Oscillations in Power System Using Rough Set and Cloud Model
title_fullStr Early Warning of Low-Frequency Oscillations in Power System Using Rough Set and Cloud Model
title_full_unstemmed Early Warning of Low-Frequency Oscillations in Power System Using Rough Set and Cloud Model
title_short Early Warning of Low-Frequency Oscillations in Power System Using Rough Set and Cloud Model
title_sort early warning of low frequency oscillations in power system using rough set and cloud model
url http://dx.doi.org/10.1155/etep/7250421
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AT jianqunsun earlywarningoflowfrequencyoscillationsinpowersystemusingroughsetandcloudmodel
AT honghaowu earlywarningoflowfrequencyoscillationsinpowersystemusingroughsetandcloudmodel
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