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PERMANENT MAGNET SYNCHRONOUS MACHINE TEMPERATURE ESTIMATION USING LOW-ORDER LUMPED-PARAMETER THERMAL NETWORK WITH EXTENDED IRON LOSS MODEL

Emebet Gebeyehu Gedlu, Oliver Wallscheid, Joachim Böcker

2021IET conference proceedings.22 citationsDOI

Abstract

Since temperature rise in electric machines is mainly due to power losses during electro-mechanical power conversion, temperature estimation is highly attached to power loss modelling. In this contribution, an extended iron loss model is introduced with a direct identification methodology in the context of temperature estimation. The iron loss model is implemented as part of a fourth-order lumped-parameter thermal network (LPTN), which is parametrised using empirical measurements and global identification. Once parameters are identified using training data, the LPTN model is validated using three unseen profiles cross-validation. Satisfactory estimation is achieved with the average mean squared error of 2.1 K2 and the error bias close to zero.

Topics & Concepts

Mean squared errorContext (archaeology)Control theory (sociology)ThermalTemperature measurementEstimation theoryPower (physics)Computer scienceSynchronous motorPower lossMagnetAlgorithmMathematicsEngineeringStatisticsArtificial intelligencePhysicsMechanical engineeringThermodynamicsElectrical engineeringPaleontologyBiologyControl (management)Magnetic Properties and ApplicationsElectric Motor Design and AnalysisInduction Heating and Inverter Technology