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Short Term Prediction of a Vehicle's Velocity Trajectory Using ITS

Journal Article
2015-01-0295
ISSN: 1946-4614, e-ISSN: 1946-4622
Published April 14, 2015 by SAE International in United States
Short Term Prediction of a Vehicle's Velocity Trajectory Using ITS
Sector:
Citation: Moser, D., Waschl, H., Schmied, R., Efendic, H. et al., "Short Term Prediction of a Vehicle's Velocity Trajectory Using ITS," SAE Int. J. Passeng. Cars – Electron. Electr. Syst. 8(2):364-370, 2015, https://doi.org/10.4271/2015-01-0295.
Language: English

Abstract:

Modern cars feature a variety of different driving assistance systems, which aim to improve driving comfort and safety as well as fuel consumption. Due to the technical advances and the possibility to consider vehicle-to-vehicle (V2V) and vehicle-to-infrastructure (V2I) communication, cooperative adaptive cruise control (CACC) strategies have received significant attention from both research and industrial communities.
The performance of such systems can be enhanced if the future velocity of the surrounding traffic can be predicted. Generally, human driving behavior is a complex process and influenced by several environmental impacts. In this work a stochastic model of the velocity of a preceding vehicle based on the incorporation of available information sources such as V2I, V2V and radar information is presented. The main influences on the velocity prediction considered in this approach are current and previous velocity measurements and traffic light signals. For practical applications a model must capture the driver's reaction on the traffic situation as well as the vehicle dynamics. Here a Bayesian network approach is followed which provides a compact representation of the variable dependencies and allows inferring the mean value and the confidence interval of the prediction. The proposed model is parameterized with real traffic scenarios recorded during road tests. The validation results show that the prediction achieves a high accuracy within a prediction horizon useful for a variety of different driver assistance functions.