Doubly-fed Deep Learning Method for Bad Data Identification in Linear State Estimation
With more data-driven applications introduced in wide-area monitoring systems (WAMS), data quality of phasor measurement units (PMUs) becomes one of the fundamental requirements for ensuring reliable WAMS applications. This paper proposes a doubly-fed deep learning method for bad data identification...
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doaj-1eb7c7b3a69e4eb1866b109f59ade91d2021-04-23T16:15:36ZengIEEEJournal of Modern Power Systems and Clean Energy2196-54202020-01-01861140115010.35833/MPCE.2020.0005339275590Doubly-fed Deep Learning Method for Bad Data Identification in Linear State EstimationYingzhong Gu0Zhe Yu1Ruisheng Diao2Di Shi3GEIRI North America,San Jose,CA,USA,95134GEIRI North America,San Jose,CA,USA,95134GEIRI North America,San Jose,CA,USA,95134GEIRI North America,San Jose,CA,USA,95134With more data-driven applications introduced in wide-area monitoring systems (WAMS), data quality of phasor measurement units (PMUs) becomes one of the fundamental requirements for ensuring reliable WAMS applications. This paper proposes a doubly-fed deep learning method for bad data identification in linear state estimation, which can: 1 identify bad data under both steady states and contingencies; 2 achieve higher accuracy than conventional pre-filtering approaches; 3 reduce iteration burden for linear state estimation; 4 efficiently identify bad data in a parallelizable scheme. The proposed method consists of four key steps: 1 preprocessing filter; 2 online training of short-term deep neural network; 3 offline training of long-term deep neural network; 4 a decision merger. Through delicate design and comprehensive training, the proposed method can effectively differentiate the bad data from event data without relying on real-time topology information. An IEEE 39-bus system simulated by DSATools TSAT and a provincial electric power system with real PMU data collected are used to verify the proposed method. Multiple test scenarios are applied, which include steady states, three-phase-to-ground faults with (un)successful auto-reclosing, low-frequency oscillation, and low-frequency oscillation with simultaneous three-phase-to-ground faults. The proposed method demonstrates satisfactory performance during both the training session and the testing session.https://ieeexplore.ieee.org/document/9275590/Bad data identificationlinear state estimationpreprocessingdeep neural networkwide-area monitoring system (WAMS) |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Yingzhong Gu Zhe Yu Ruisheng Diao Di Shi |
spellingShingle |
Yingzhong Gu Zhe Yu Ruisheng Diao Di Shi Doubly-fed Deep Learning Method for Bad Data Identification in Linear State Estimation Journal of Modern Power Systems and Clean Energy Bad data identification linear state estimation preprocessing deep neural network wide-area monitoring system (WAMS) |
author_facet |
Yingzhong Gu Zhe Yu Ruisheng Diao Di Shi |
author_sort |
Yingzhong Gu |
title |
Doubly-fed Deep Learning Method for Bad Data Identification in Linear State Estimation |
title_short |
Doubly-fed Deep Learning Method for Bad Data Identification in Linear State Estimation |
title_full |
Doubly-fed Deep Learning Method for Bad Data Identification in Linear State Estimation |
title_fullStr |
Doubly-fed Deep Learning Method for Bad Data Identification in Linear State Estimation |
title_full_unstemmed |
Doubly-fed Deep Learning Method for Bad Data Identification in Linear State Estimation |
title_sort |
doubly-fed deep learning method for bad data identification in linear state estimation |
publisher |
IEEE |
series |
Journal of Modern Power Systems and Clean Energy |
issn |
2196-5420 |
publishDate |
2020-01-01 |
description |
With more data-driven applications introduced in wide-area monitoring systems (WAMS), data quality of phasor measurement units (PMUs) becomes one of the fundamental requirements for ensuring reliable WAMS applications. This paper proposes a doubly-fed deep learning method for bad data identification in linear state estimation, which can: 1 identify bad data under both steady states and contingencies; 2 achieve higher accuracy than conventional pre-filtering approaches; 3 reduce iteration burden for linear state estimation; 4 efficiently identify bad data in a parallelizable scheme. The proposed method consists of four key steps: 1 preprocessing filter; 2 online training of short-term deep neural network; 3 offline training of long-term deep neural network; 4 a decision merger. Through delicate design and comprehensive training, the proposed method can effectively differentiate the bad data from event data without relying on real-time topology information. An IEEE 39-bus system simulated by DSATools TSAT and a provincial electric power system with real PMU data collected are used to verify the proposed method. Multiple test scenarios are applied, which include steady states, three-phase-to-ground faults with (un)successful auto-reclosing, low-frequency oscillation, and low-frequency oscillation with simultaneous three-phase-to-ground faults. The proposed method demonstrates satisfactory performance during both the training session and the testing session. |
topic |
Bad data identification linear state estimation preprocessing deep neural network wide-area monitoring system (WAMS) |
url |
https://ieeexplore.ieee.org/document/9275590/ |
work_keys_str_mv |
AT yingzhonggu doublyfeddeeplearningmethodforbaddataidentificationinlinearstateestimation AT zheyu doublyfeddeeplearningmethodforbaddataidentificationinlinearstateestimation AT ruishengdiao doublyfeddeeplearningmethodforbaddataidentificationinlinearstateestimation AT dishi doublyfeddeeplearningmethodforbaddataidentificationinlinearstateestimation |
_version_ |
1721512387745415168 |