ARCHIVES
Artificial Intelligence–Based Field-Oriented Control of Induction Motor Drives for Heavy-Duty Electric Vehicle Applications Using Intelligent Water Drop Algorithm
Published Online: May-June 2026
Pages: 19-27
Cite this article
↗ https://www.doi.org/10.59256/ijsreat.20260603002Abstract
This paper presents an Artificial Intelligence–based control strategy for an induction motor drive used in heavy-duty electric vehicle applications. The proposed approach integrates the Intelligent Water Drop (IWD) algorithm within a field-oriented control framework, replacing the conventional PI speed controller. The IWD algorithm operates in an incremental manner to generate smooth torque references, improving dynamic performance and robustness under varying operating conditions. A comprehensive MATLAB/Simulink model was developed to represent the induction motor, inverter, and vehicle drivetrain dynamics. Simulation results demonstrate that the proposed IWD-based control strategy achieves high speed tracking accuracy of approximately 96%, reduced torque ripple, balanced stator currents, and improved energy efficiency compared to conventional PI-based control. Vehicle-level results further confirm smooth speed and acceleration profiles suitable for heavy-duty electric vehicle operation. The findings indicate that the proposed control strategy provides a robust and efficient alternative to conventional methods, highlighting its potential for application in advanced electric vehicle traction systems.
Related Articles
2026
Fake Currency Detection Using Deep Learning
2026
Smart E-Commerce System with Dynamic Pricing
2026
Personal Expense Tracker with Currency Converter
2026
Paw Safe: An Extensive Technology-Driven Framework for Stray Dog Rescue, Healthcare Management, Community Engagement, and Smart Urban Governance
2026
Design and Development of a Full-Stack E-Commerce Website
2026