Neural Network-based Control Strategy for Energy-efficient Front-rear Torque Vectoring in Electric Vehicles with Multiple Motors and Disconnect Clutches


B. Škugor, L. Grden, Z. Dabčević, J. Deur
11th IFAC Symposium on Advances in Automotive Control (AAC), Eindhoven, Netherlands
2025
The paper deals with neural network (NN)-based energy-efficient front/rear torque vectoring (TV) for an electric vehicle (EV) with multiple motors and disconnect clutches. The NN model reflects a binary classification problem, formulated to distinguish between four-wheel (4WD) and two-wheel drive (2WD) powertrain configurations depending on current vehicle velocity and total torque demand inputs. The model provides a probability of EV being set in 2WD configuration with disconnected clutches on the opposite axle. By introducing a probability threshold on the NN model output, a proper trade-off between energy efficiency and suppression of clutch state switching frequency can be posed. The NN model is trained based on the globally optimal dataset obtained by off-line executed dynamic programming (DP) optimizations over multiple certification driving cycles. The proposed NN-based TV control strategy is tested against the DP benchmark and a rule-based (RB) TV baseline.
electric vehicles; torque vectoring; disconnect clutches; energy efficiency; dynamic programming; binary classification; neural network