Optimizing Mid-Drive Electric Motor Performance and Cost for Electric Bike Applications
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The widespread adoption of electric vehicles is influenced by factors including consumer preferences, cost reduction in battery technology, and environmental regulations. Within this context, electric micro-mobility emerges as a crucial sector, providing sustainable transportation options in urban settings central to the efficacy of such micro-mobility solutions lies the electric motor. This study focuses on designing and optimizing a 12-slot/10-pole flat magnet motor configuration for e-bikes, tailored to a unique driving cycle that captures dynamic load profiles, computed with a backward model from real-world scenarios, encompassing factors such as rolling resistance, aerodynamics, climbing, and acceleration. A multi-objective genetic algorithm optimization, integrated with MATLAB and Ansys Motor-CAD, is employed for comprehensive optimization considering constraints like permanent magnet demagnetization, torque ripple, mechanical stresses, and weight. Additionally, a multiphysics analysis validates the optimized design, highlighting its applicability beyond micro-mobility to other fields utilizing permanent-magnet synchronous motors. © 2024 IEEE.
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