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Phase identification using co‐association matrix ensemble clustering

Logan Blakely, Matthew J. Reno

2020IET Smart Grid29 citationsDOIOpen Access PDF

Abstract

Calibrating distribution system models to aid in the accuracy of simulations such as hosting capacity analysis is increasingly important in the pursuit of the goal of integrating more distributed energy resources. The recent availability of smart meter data is enabling the use of machine learning tools to automatically achieve model calibration tasks. This research focuses on applying machine learning to the phase identification task, using a co‐association matrix‐based, ensemble spectral clustering approach. The proposed method leverages voltage time series from smart meters and does not require existing or accurate phase labels. This work demonstrates the success of the proposed method on both synthetic and real data, surpassing the accuracy of other phase identification research.

Topics & Concepts

Cluster analysisComputer scienceIdentification (biology)Task (project management)Data miningMachine learningCalibrationEnsemble learningArtificial intelligenceSmart meterAssociation (psychology)Energy (signal processing)Matrix (chemical analysis)Phase (matter)Smart gridEngineeringMathematicsStatisticsPhilosophyMaterials scienceEpistemologyBotanyElectrical engineeringOrganic chemistryBiologyChemistrySystems engineeringComposite materialEnergy Load and Power ForecastingTime Series Analysis and ForecastingPower Quality and Harmonics
Phase identification using co‐association matrix ensemble clustering | Litcius