Applied Sciences (May 2022)

Induction Machine-Based EV Vector Control Model Using Mamdani Fuzzy Logic Controller

  • Humayun Salahuddin,
  • Kashif Imdad,
  • Muhammad Umar Chaudhry,
  • Dmitry Nazarenko,
  • Vadim Bolshev,
  • Muhammad Yasir

DOI
https://doi.org/10.3390/app12094647
Journal volume & issue
Vol. 12, no. 9
p. 4647

Abstract

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The substantial rise in the demand for electric vehicles (EVs) has emphasized an environment-friendly and intelligent design for speed control strategies. In this paper, a Mamdani fuzzy logic controller (MFLC) was proposed to vigorously control the speed of EVs at discrete levels. MFLC member functions (MFs) are tuned for EVs operating at three different speed modes (40, 60, and 80 km/h). The proposed speed controller operation for the speed tracking of EVs was designed and tested in MATLAB (Simulink) environment. The proposed speed controller validated a remarkable improvement in dynamic speed control compared with existing P-I, FLC, Fuzzy FOPID (ACO), Fuzzy FOPID (GA), and Fuzzy FOPID (PSO) controllers. Its stability under a user-defined drive pattern is also observed. In this proposed work, the speed controller highlights the better tracking of user-defined speed response compared to the conventional aforementioned controllers. Moreover, the speed tracking of the designed model was tested for robustness against speed transients at predefined time instants, respectively. The comparison suggests that the MFLC model removes overshoot and significantly reduces the steady-state time.

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