Novel rule base development from IED-resident big data for protective relay analysis expert system

Many Expert Systems for intelligent electronic device (IED) performance analyses suchvas those for protective relays have been developed to ascertain operations, maximize availability, and subsequently minimize misoperation risks. However, manual handling of overwhelming volume of relay resident big...

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Main Authors: Othman, Mohammad Lutfi, Aris, Ishak, Ananthapadmanabha, Thammaiah
Format: Book Section
Language:English
Published: InTech 2016
Online Access:http://psasir.upm.edu.my/id/eprint/52782/1/Novel%20rule%20base%20development%20from%20IED-resident%20big%20data%20for%20protective%20relay%20analysis%20expert%20system.pdf
http://psasir.upm.edu.my/id/eprint/52782/
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spelling my.upm.eprints.527822020-12-27T00:29:24Z http://psasir.upm.edu.my/id/eprint/52782/ Novel rule base development from IED-resident big data for protective relay analysis expert system Othman, Mohammad Lutfi Aris, Ishak Ananthapadmanabha, Thammaiah Many Expert Systems for intelligent electronic device (IED) performance analyses suchvas those for protective relays have been developed to ascertain operations, maximize availability, and subsequently minimize misoperation risks. However, manual handling of overwhelming volume of relay resident big data and heavy dependence on the protection experts’ contrasting knowledge and inundating relay manuals have hindered the maintenance of the Expert Systems. Thus, the objective of this chapter is to study the design of an Expert System called ProtectiveRelay Analysis System (PRAY), which is imbedded with a rule base construction module. This module is to provide the facility of intelligently maintaining the knowledge base of PRAY through the prior discovery of relay operations (association) rules from a novel integrated data mining approach of Rough-Set-Genetic-Algorithm-based rule discovery and Rule Quality Measure. The developed PRAY runs its relay analysis by, first, validating whether a protective relay undertest operates correctly as expected by way of comparison between hypothesized and actual relay behavior. In the case of relay maloperations or misoperations, it diagnoses presented symptoms by identifying their causes. This study illustrates how, with the prior hybrid-data-mining-based knowledge base maintenance of an Expert System, regular and rigorous analyses of protective relay performances carried out by power utility entities can be conveniently achieved. InTech 2016 Book Section PeerReviewed text en http://psasir.upm.edu.my/id/eprint/52782/1/Novel%20rule%20base%20development%20from%20IED-resident%20big%20data%20for%20protective%20relay%20analysis%20expert%20system.pdf Othman, Mohammad Lutfi and Aris, Ishak and Ananthapadmanabha, Thammaiah (2016) Novel rule base development from IED-resident big data for protective relay analysis expert system. In: Big Data on Real-World Applications. InTech, Rijeka, Croatia, pp. 1-22. ISBN 9789535124894
institution Universiti Putra Malaysia
building UPM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Putra Malaysia
content_source UPM Institutional Repository
url_provider http://psasir.upm.edu.my/
language English
description Many Expert Systems for intelligent electronic device (IED) performance analyses suchvas those for protective relays have been developed to ascertain operations, maximize availability, and subsequently minimize misoperation risks. However, manual handling of overwhelming volume of relay resident big data and heavy dependence on the protection experts’ contrasting knowledge and inundating relay manuals have hindered the maintenance of the Expert Systems. Thus, the objective of this chapter is to study the design of an Expert System called ProtectiveRelay Analysis System (PRAY), which is imbedded with a rule base construction module. This module is to provide the facility of intelligently maintaining the knowledge base of PRAY through the prior discovery of relay operations (association) rules from a novel integrated data mining approach of Rough-Set-Genetic-Algorithm-based rule discovery and Rule Quality Measure. The developed PRAY runs its relay analysis by, first, validating whether a protective relay undertest operates correctly as expected by way of comparison between hypothesized and actual relay behavior. In the case of relay maloperations or misoperations, it diagnoses presented symptoms by identifying their causes. This study illustrates how, with the prior hybrid-data-mining-based knowledge base maintenance of an Expert System, regular and rigorous analyses of protective relay performances carried out by power utility entities can be conveniently achieved.
format Book Section
author Othman, Mohammad Lutfi
Aris, Ishak
Ananthapadmanabha, Thammaiah
spellingShingle Othman, Mohammad Lutfi
Aris, Ishak
Ananthapadmanabha, Thammaiah
Novel rule base development from IED-resident big data for protective relay analysis expert system
author_facet Othman, Mohammad Lutfi
Aris, Ishak
Ananthapadmanabha, Thammaiah
author_sort Othman, Mohammad Lutfi
title Novel rule base development from IED-resident big data for protective relay analysis expert system
title_short Novel rule base development from IED-resident big data for protective relay analysis expert system
title_full Novel rule base development from IED-resident big data for protective relay analysis expert system
title_fullStr Novel rule base development from IED-resident big data for protective relay analysis expert system
title_full_unstemmed Novel rule base development from IED-resident big data for protective relay analysis expert system
title_sort novel rule base development from ied-resident big data for protective relay analysis expert system
publisher InTech
publishDate 2016
url http://psasir.upm.edu.my/id/eprint/52782/1/Novel%20rule%20base%20development%20from%20IED-resident%20big%20data%20for%20protective%20relay%20analysis%20expert%20system.pdf
http://psasir.upm.edu.my/id/eprint/52782/
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score 13.160551