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Heat transfer study on a stator-permanent magnet electric motor: A hybrid estimation model for real-time temperature monitoring and predictive maintenance

Tohid Sharifi, Alireza Eikani, Mojtaba Mirsalim

2024Case Studies in Thermal Engineering16 citationsDOIOpen Access PDF

Abstract

When electrical machines operate without a specific cooling system , the surrounding environment plays a crucial role in the rise of temperature and the duty cycle of operation. More clearly, a natural convection cooling system with a low value of heat transfer coefficient carries the risk of thermal breakdown, insufficient safety, and reliability. This paper studies the heat transfer aspects of a low-power flux switching permanent magnet (FSPM) motor under natural convection cooling to implement a novel real-time sensor-less temperature monitoring system . Thermal and electromagnetic experiments are carried out to create foundations for transient and steady-state numerical models. A data-driven, deep learning algorithm estimates the core and permanent magnet (PM) eddy current losses in real-time, besides the already available copper and friction losses . Subsequently, a two-node thermal equivalent circuit in a hybrid model with a feed-forward neural network estimates the dynamic temperature profile of windings and PMs. It is indicated that the worst-case estimation error is below 7.5%, and the configuration is applicable under a wide range of operation states and environmental conditions. Lastly, the system, including the power source, FSPM motor, and hybrid temperature estimation unit, will be implemented in MATLAB/Simulink to investigate the fault prediction and operation management capabilities.

Topics & Concepts

StatorMagnetElectric motorAutomotive engineeringMaterials sciencePermanent magnet motorHeat transferComputer scienceControl theory (sociology)Mechanical engineeringMechanicsPhysicsEngineeringControl (management)Artificial intelligenceElectric Motor Design and AnalysisMagnetic Properties and ApplicationsInduction Heating and Inverter Technology