Proceedings of the Institution of Mechanical Engineers, Part D: Journal of Automobile Engineering / 29 July 2024
Localization robustness improvement for an autonomous race car using multiple extended Kalman filters
In this paper, we introduce a vehicle localization method designed for the SZEnergy race car, which competes in the Shell Eco-marathon. The proposed method comprises four different extended Kalman filter-based localization algorithms and a selection algorithm that determines the most suitable one based on vehicle speed, GNSS availability, and signal quality. The low-speed Kalman filters are based on a kinematic vehicle model while the high-speed variants are based on a dynamic vehicle model. Several measurements were performed during test maneuvers to evaluate the performance of the filters. The proposed method successfully handles sensor miscalibration and GNSS outages.