TY - GEN
T1 - Adaptive Linear Predictive Control for Enhancing Sustainability in Battery Electric Vehicles Through Optimal Battery Discharging
AU - Ismail, Moustafa Magdi
AU - Al-Dhaifallah, Mujahed
AU - Xu, Wei
AU - Rezk, Hegazy
N1 - Publisher Copyright:
© 2025 IEEE.
PY - 2025
Y1 - 2025
N2 - This paper introduces a proposed adaptive linear predictive model designed to enhance sustainability and energy efficiency in battery electric vehicles (EVs) equipped with permanent magnet synchronous motors (PMSMs). Central to the approach is a third-order generalized integrator (TOGI) flux observer, which provides real-time adaptation of the predictive model by accurately estimating motor parameters, enabling precise flux and torque control under varying operating conditions. The control scheme employs an active-set optimization algorithm to solve the quadratic programming problem efficiently, dynamically adjusting control inputs to optimize traction torque and speed tracking while minimizing battery energy consumption. The proposed method is rigorously compared against a published conventional model predictive control (MPC) approach. Comprehensive simulation studies and experimental tests confirm that the proposed model significantly outperforms the conventional MPC in terms of control accuracy, energy efficiency, and battery longevity. Specifically, results demonstrate up to 98% reduction in current tracking error, a 19% increase in battery operational life, and more than 40% reduction in DC source current consumption across different driving scenarios. The combination of accurate TOGI-based parameter adaptation and active-set optimization offers a robust, computationally efficient, and energy-saving solution, advancing the performance and sustainability of EV powertrain control systems.
AB - This paper introduces a proposed adaptive linear predictive model designed to enhance sustainability and energy efficiency in battery electric vehicles (EVs) equipped with permanent magnet synchronous motors (PMSMs). Central to the approach is a third-order generalized integrator (TOGI) flux observer, which provides real-time adaptation of the predictive model by accurately estimating motor parameters, enabling precise flux and torque control under varying operating conditions. The control scheme employs an active-set optimization algorithm to solve the quadratic programming problem efficiently, dynamically adjusting control inputs to optimize traction torque and speed tracking while minimizing battery energy consumption. The proposed method is rigorously compared against a published conventional model predictive control (MPC) approach. Comprehensive simulation studies and experimental tests confirm that the proposed model significantly outperforms the conventional MPC in terms of control accuracy, energy efficiency, and battery longevity. Specifically, results demonstrate up to 98% reduction in current tracking error, a 19% increase in battery operational life, and more than 40% reduction in DC source current consumption across different driving scenarios. The combination of accurate TOGI-based parameter adaptation and active-set optimization offers a robust, computationally efficient, and energy-saving solution, advancing the performance and sustainability of EV powertrain control systems.
KW - Adaptive control
KW - Battery management
KW - Generalized integrator flux observer
KW - PMSM
KW - Predictive model
UR - https://www.scopus.com/pages/publications/105024712388
U2 - 10.1109/IECON58223.2025.11221976
DO - 10.1109/IECON58223.2025.11221976
M3 - Conference contribution
AN - SCOPUS:105024712388
T3 - IECON Proceedings (Industrial Electronics Conference)
BT - IECON 2025 - 51st Annual Conference of the IEEE Industrial Electronics Society
PB - IEEE Computer Society
T2 - 51st Annual Conference of the IEEE Industrial Electronics Society, IECON 2025
Y2 - 14 October 2025 through 17 October 2025
ER -