Abstract
Vehicle speed is one of the important quantities in vehicle dynamics control. Estimation of the slope angle is in turn a necessity for correct dead reckoning from vehicle acceleration. In the present work, estimation of vehicle speed is applied to a hybrid vehicle with an electric motor on the rear axle and a combustion engine on the front axle. The wheel torque information, provided by electric motor, is used to early detect excessive wheel slip and improve the accuracy of the estimate. A best-wheel selection approach is applied as the observation variable of a Kalman filter which reduces the influence of slipping wheels as well as reducing the computational effort. The performance of the proposed algorithm is illustrated on a test data recorded at a winter test ground with excellent results, even for extreme conditions such as when all four wheels are spinning. © 2014 Taylor & Francis.
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CITATION STYLE
Klomp, M., Gao, Y., & Bruzelius, F. (2014). Longitudinal velocity and road slope estimation in hybrid electric vehicles employing early detection of excessive wheel slip. In Vehicle System Dynamics (Vol. 52, pp. 172–188). Taylor and Francis Ltd. https://doi.org/10.1080/00423114.2014.887737
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