Robust Estimation of Longitudinal Velocity and Road Slope in Hybrid Electric Vehicles using an Adaptive Kalman Filter
Paper i proceeding, 2013
Accurate knowledge of the vehicle longitudinal velocity is essential for wheel slip control. Estimation of the slope angle in turn is important for real-life fuel economy optimization and improved traction control. In order to meet these demands also during slippery conditions, an accurate and efficient method of longitudinal velocity and slope estimation is proposed in paper. The research object of this work is a hybrid vehicle with an electric motor on the rear axle and a combustion engine on the front axle. The wheel torque, which offered by electric motor is used to find out over-slipping wheels. Also, only one wheel speed is selected as the observation variable of Kalman Filter by means of a best-wheel selection method, which reduces the influence of slipping wheels as well as the calculation quantity. Furthermore, the slope estimation and accelerometer bias are also taken into consideration. Finally, this algorithm is verified on a winter test ground with excellent results also when all four wheels are spinning.