Publication | Open Access
Application of Machine Learning on Power System Dynamic Security Assessment
25
Citations
11
References
2007
Year
Unknown Venue
EngineeringMachine LearningInformation SecuritySecurity AssessmentReliability EngineeringData SciencePower System AutomationPower SystemSystems EngineeringPower SystemsPower System AnalysisComputer ScienceSmart Grid SecurityPower System ProtectionSmart GridEnergy ManagementGreek Power SystemDynamic Security AssessmentSecurity
This paper addresses the on going work of the application of Machine Learning on Dynamic Security Assessment of Power Systems. Several techniques, which have been applied for the Dynamic Security Assessment of the Greek Power System are presented. These techniques include off-line Supervised learning (Radial Basis Function Neural Networks, Support Vector Machines, Decision Trees), off-line Unsupervised learning (Self Organizing Maps) and online Supervised learning (Probabilistic Neural Networks). Results from the application of these methods on operating point series from the Greek Mainland system and the Power System of Crete island show the accuracy and versatility of the methods.
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