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Unsupervised Machine Learning Approach to Enhance Online Voltage Security Assessment Based on Synchrophasor Data

Han Gao, Deyou Yang, Yanling Lv, Lixin Wang

2025IEEE Transactions on Power Systems29 citationsDOI

Abstract

The accuracy and reliability of the Q/V sensitivity for voltage security assessment is influenced by the outliers present in the calculation results. An unsupervised machine learning approach, empirical- cumulative- distribution- based outlier detection (ECOD), is introduced in this letter to detect and eliminate outliers to address this issue. A comparison of the results with those of the proposed approaches on the standard test power system CSEE-VS demonstrate that, compared with advanced outlier detection algorithms, ECOD can eliminate outliers from the Q/V sensitivities with higher accuracy and less computation time and realize online voltage security assessment with superior accuracy and reliability.

Topics & Concepts

Computer scienceUnsupervised learningElectric power systemVoltageArtificial intelligenceMachine learningEngineeringPower (physics)Electrical engineeringPhysicsQuantum mechanicsSmart Grid and Power SystemsPower Systems Fault DetectionPower Systems and Technologies
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