Title :
Modeling, Analysis, and Neural Network Control of an EV Electrical Differential
Author :
Haddoun, Abdelhakim ; Benbouzid, Mohamed El Hachemi ; Diallo, Demba ; Abdessemed, Rachid ; Ghouili, Jamel ; Srairi, Kamel
Author_Institution :
Lab. Brestois de Mec. et des Syst., Univ. of Western Brittany, Brest
fDate :
6/1/2008 12:00:00 AM
Abstract :
This paper presents system modeling, analysis, and simulation of an electric vehicle (EV) with two independent rear wheel drives. The traction control system is designed to guarantee the EV dynamics and stability when there are no differential gears. Using two in-wheel electric motors makes it possible to have torque and speed control in each wheel. This control level improves EV stability and safety. The proposed traction control system uses the vehicle speed, which is different from wheel speed characterized by a slip in the driving mode, as an input. In this case, a generalized neural network algorithm is proposed to estimate the vehicle speed. The analysis and simulations lead to the conclusion that the proposed system is feasible. Simulation results on a test vehicle propelled by two 37-kW induction motors showed that the proposed control approach operates satisfactorily.
Keywords :
electric vehicles; induction motors; neurocontrollers; velocity control; EV electrical differential; electric vehicles; independent rear wheel drives; induction motors; inwheel electric motors; neural network control; speed control; traction control system; Analytical models; Control systems; Electric motors; Electric vehicles; Gears; Modeling; Neural networks; Stability; Vehicle dynamics; Wheels; Electric vehicle (EV); induction motor; neural networks; speed estimation; traction control;
Journal_Title :
Industrial Electronics, IEEE Transactions on
DOI :
10.1109/TIE.2008.918392