An Improved WOA of PI Control for Three Phase PWM Rectifier

Описание к видео An Improved WOA of PI Control for Three Phase PWM Rectifier

Authors: Shwetha G, Guruswamy K P (IJEECS ID 39574)
In the empire of electric vehicle (EV) propulsion systems, efficient energy conversion is paramount for extending driving range and enhancing overall performance. Rectifiers play a crucial role in converting AC from the grid into DC for battery charging and motor operation. However, the control algorithms employed heavily influence the performance of rectifiers. This work presents an optimized proportional-integral (PI) controller design for rectifiers in EV applications. The proposed controller aims to achieve high efficiency, rapid response, and robustness to variations in load and input voltage. This work incorporates an optimization process that uses whale optimization topology to tune the PI controller parameters. The goal is to get the cost function that shows how far the rectifier output is from the desired characteristics in different operating conditions to be as small as possible. The outcomes of the simulation demonstrate that the suggested controller works to provide greater accuracy than traditional control techniques. Moreover, experimental validation verifies the proposed controller's reliability and efficiency in practical EV applications. The optimized PI controller contributes to maximizing energy efficiency, extending battery life, and enhancing the overall reliability of electric vehicle propulsion systems.

Indonesian Journal of Electrical Engineering and Computer Science
https://ijeecs.iaescore.com

Supported by Master Program of Electrical and Computer Engineering, Universitas Ahmad Dahlan, https://mee.uad.ac.id #yogyakarta
Admission: https://mee.uad.ac.id/pendaftaran/

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