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Ghareeb, Abdullah Waheeb Jaffer Omer
Babangida, Aminu
Szemes, Péter Tamás
2025-08-11T05:57:27Z
2025-08-11T05:57:27Z
2025
1785-8860hu_HU
http://hdl.handle.net/20.500.14044/32103
Electric vehicles (EVs) have emerged as a compelling solution to mitigate environmental concerns and meet the growing demand for energy-efficient transportation systems. The careful selection of the electric motor is critical in determining the overall performance of the EV. This paper uses an EV from the University of Debrecen as a reference to comprehensively study the feasibility of using a permanent magnet brushless direct current (PMBLDC) motor in the vehicle. The optimal performance of the overall powertrain is realized based on a proportional integral and derivative (PID) controller. The advanced nonlinear dynamics of the system make the performance of the control algorithm unrealistic. The PID is optimized based on a genetic algorithm (GA-PID) to address this limitation and achieve optimal performance. The integral performance indices are used as a fitness value for the optimization problem. However, MATLAB/Simulink/Simscape is used to comprehensively investigate and compare the simplified and advanced models of a three- phase, four-pole, Y-connected PMBLDC motor in the EV application. The simulation results indicate that the proposed electrical machine is promising in EVs, achieving 90.90 % energy efficiency, thereby decreasing the energy consumption by 11.12 % compared to the measured real-world results. This research contributes significantly to energy efficiency, power efficiency, and thermal performance, offering invaluable insights into the optimal selection and modeling of PMBLDC motors at varying complexity levels in EVs. Ultimately, this study steers the industry towards a more sustainable and environmentally conscious trajectory.hu_HU
dc.formatPDFhu_HU
enhu_HU
Dynamic Modeling and Optimization of Permanent Magnet Synchronous Electrical Machine Propulsion Powertrain at Different Modeling Levelshu_HU
Open accesshu_HU
Óbudai Egyetemhu_HU
Budapesthu_HU
Óbudai Egyetemhu_HU
Műszaki tudományok - multidiszciplináris műszaki tudományokhu_HU
advanced powertrainhu_HU
EVshu_HU
genetic algorithmhu_HU
PIDhu_HU
PMBLDC Motorhu_HU
Tudományos cikkhu_HU
Acta Polytechnica Hungaricahu_HU
local.tempfieldCollectionsFolyóiratcikkekhu_HU
10.12700/APH.22.3.2025.3.3
Kiadói változathu_HU
23 p.hu_HU
3. sz.hu_HU
22. évf.hu_HU
2025hu_HU
Óbudai Egyetemhu_HU


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