Data-driven failure diagnosis in transmission protection system with multiple events and data anomalies

To guarantee the reliable power supply, the expected operation of all the components in the power system is critical. Distance protection system is primarily responsible of isolating the faulty section from the healthy part of the grid. Failure in protection devices can result in multiple conflictin...

Full description

Bibliographic Details
Main Authors: Amir Gholami, Anurag K. Srivastava, Shikhar Pandey
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:Journal of Modern Power Systems and Clean Energy
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9028816/
id doaj-961e420024a743ae9d1c93b03cab4530
record_format Article
spelling doaj-961e420024a743ae9d1c93b03cab45302021-04-23T16:12:32ZengIEEEJournal of Modern Power Systems and Clean Energy2196-54202019-01-017476777810.1007/s40565-019-0541-69028816Data-driven failure diagnosis in transmission protection system with multiple events and data anomaliesAmir Gholami0Anurag K. Srivastava1Shikhar Pandey2Washington State University,Pullman,USAWashington State University,Pullman,USAWashington State University,Pullman,USATo guarantee the reliable power supply, the expected operation of all the components in the power system is critical. Distance protection system is primarily responsible of isolating the faulty section from the healthy part of the grid. Failure in protection devices can result in multiple conflicting alarms at the power grid operation center and complex events analysis to manually find the root cause of the observed system state. If not handled in time, it may lead to the propagation of the faults/failures to the adjacent transmission lines and components. With availability of the synchronized measurements from phasor measurement units (PMUs), real-time system monitoring and automated failure diagnosis is feasible. With multiple adverse events and possible data anomalies, the complexity of the problem will be escalated. In this paper, a PMU based algorithm is presented and discussed to detect the root cause of the failure in transmission protection system based on the observed state, e.g. multiple line tripping, breaker failures. The failure diagnosis algorithm is further enhanced to come up with the fully functional version of the failure diagnosis tool, which is tailored for the cases in which the PMU anomalies are present. In the developed algorithm the validity of the PMU data is critical; however, such causes as communication errors or cyber-attacks might lead to the PMU data anomalies. This issue is well-addressed in this paper and some major types of anomaly detection methods suitable for PMU data are discussed. Results show that the ensemble approach has some distinct advantages in data anomaly detection compared to the previously used standalone algorithms. Additionally, the enhanced failure diagnosis method is developed to clean the inaccurate data in case of the anomaly in measured voltage magnitudes. Finally, both original and enhanced versions of the tool are tested on 96-bus test system using the real-time OPAL-RT simulator. The results show the accuracy of the enhanced tool and its advantages over the primary version of the tool.https://ieeexplore.ieee.org/document/9028816/Failure diagnosisTransmission protection systemProtection mis-operationPhasor measurement unit (PMU) data anomaly and cleaningEnsemble method
collection DOAJ
language English
format Article
sources DOAJ
author Amir Gholami
Anurag K. Srivastava
Shikhar Pandey
spellingShingle Amir Gholami
Anurag K. Srivastava
Shikhar Pandey
Data-driven failure diagnosis in transmission protection system with multiple events and data anomalies
Journal of Modern Power Systems and Clean Energy
Failure diagnosis
Transmission protection system
Protection mis-operation
Phasor measurement unit (PMU) data anomaly and cleaning
Ensemble method
author_facet Amir Gholami
Anurag K. Srivastava
Shikhar Pandey
author_sort Amir Gholami
title Data-driven failure diagnosis in transmission protection system with multiple events and data anomalies
title_short Data-driven failure diagnosis in transmission protection system with multiple events and data anomalies
title_full Data-driven failure diagnosis in transmission protection system with multiple events and data anomalies
title_fullStr Data-driven failure diagnosis in transmission protection system with multiple events and data anomalies
title_full_unstemmed Data-driven failure diagnosis in transmission protection system with multiple events and data anomalies
title_sort data-driven failure diagnosis in transmission protection system with multiple events and data anomalies
publisher IEEE
series Journal of Modern Power Systems and Clean Energy
issn 2196-5420
publishDate 2019-01-01
description To guarantee the reliable power supply, the expected operation of all the components in the power system is critical. Distance protection system is primarily responsible of isolating the faulty section from the healthy part of the grid. Failure in protection devices can result in multiple conflicting alarms at the power grid operation center and complex events analysis to manually find the root cause of the observed system state. If not handled in time, it may lead to the propagation of the faults/failures to the adjacent transmission lines and components. With availability of the synchronized measurements from phasor measurement units (PMUs), real-time system monitoring and automated failure diagnosis is feasible. With multiple adverse events and possible data anomalies, the complexity of the problem will be escalated. In this paper, a PMU based algorithm is presented and discussed to detect the root cause of the failure in transmission protection system based on the observed state, e.g. multiple line tripping, breaker failures. The failure diagnosis algorithm is further enhanced to come up with the fully functional version of the failure diagnosis tool, which is tailored for the cases in which the PMU anomalies are present. In the developed algorithm the validity of the PMU data is critical; however, such causes as communication errors or cyber-attacks might lead to the PMU data anomalies. This issue is well-addressed in this paper and some major types of anomaly detection methods suitable for PMU data are discussed. Results show that the ensemble approach has some distinct advantages in data anomaly detection compared to the previously used standalone algorithms. Additionally, the enhanced failure diagnosis method is developed to clean the inaccurate data in case of the anomaly in measured voltage magnitudes. Finally, both original and enhanced versions of the tool are tested on 96-bus test system using the real-time OPAL-RT simulator. The results show the accuracy of the enhanced tool and its advantages over the primary version of the tool.
topic Failure diagnosis
Transmission protection system
Protection mis-operation
Phasor measurement unit (PMU) data anomaly and cleaning
Ensemble method
url https://ieeexplore.ieee.org/document/9028816/
work_keys_str_mv AT amirgholami datadrivenfailurediagnosisintransmissionprotectionsystemwithmultipleeventsanddataanomalies
AT anuragksrivastava datadrivenfailurediagnosisintransmissionprotectionsystemwithmultipleeventsanddataanomalies
AT shikharpandey datadrivenfailurediagnosisintransmissionprotectionsystemwithmultipleeventsanddataanomalies
_version_ 1721512564152598528