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https://doi.org/10.32985/ijeces.17.2.6

Fast and Accurate Design of BLDC Motors Using Bayesian Neural Networks

Son Nguyen Thanh ; Hanoi University of Science and Technology School of Electrical and Engineering, Faculty of Electrical Engineering Dai Co Viet Street, Hanoi, Vietnam *
Tu M. Pham ; Hanoi University of Science and Technology School of Electrical and Engineering, Faculty of Electrical Engineering Dai Co Viet Street, Hanoi, Vietnam
Anh Hoang ; Hanoi University of Science and Technology School of Electrical and Engineering, Faculty of Electrical Engineering Dai Co Viet Street, Hanoi, Vietnam
Trung T. Cao ; Hanoi University of Science and Technology School of Electrical and Engineering, Faculty of Electrical Engineering Dai Co Viet Street, Hanoi, Vietnam
Tinh V. Lai ; Hanoi University of Science and Technology School of Electrical and Engineering, Faculty of Electrical Engineering Dai Co Viet Street, Hanoi, Vietnam
Hoang Q. Ha ; Hanoi University of Science and Technology School of Electrical and Engineering, Faculty of Electrical Engineering Dai Co Viet Street, Hanoi, Vietnam

* Dopisni autor.


Puni tekst: engleski pdf 1.066 Kb

str. 141-149

preuzimanja: 0

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Sažetak

Brushless direct current (BLDC) motors are gaining popularity over traditional direct current (DC) motors due to their higher efficiency, compact size, and precise control capabilities. This study proposes a fast and accurate approach to BLDC motor design using a Bayesian neural network (BNN). The BNN, a specialized form of the multi-layer perceptron (MLP), offers strong resistance to overfitting and performs effectively with noisy or limited datasets, making it well-suited for complex motor design problems. In the proposed method, the BNN is applied within an inverse modeling framework to map desired motor performance parameters to the corresponding design variables. A dataset for an outer-rotor BLDC motor—containing both design parameters and the resulting output torque—is generated through finite element analysis (FEA). Finally, a demonstration of BLDC motor design using the BNN validates the effectiveness of the proposed approach.

Ključne riječi

BLDC motors; Bayesian neural networks; finite element analysis;

Hrčak ID:

344009

URI

https://hrcak.srce.hr/344009

Datum izdavanja:

2.2.2026.

Posjeta: 0 *