Collision Avoidance Warning Algorithm Based on Spatiotemporal Position Prediction of Vehicles at Intersections

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Authors Abstract
Content
Aiming at the high false alarm rate of vehicle collision avoidance algorithms at intersections controlled by traffic lights, a vehicle collision avoidance warning algorithm based on vehicle spatiotemporal position prediction (SPPWA) is proposed. The algorithm first obtains real-time data information such as the heading angle and global positioning system (GPS) coordinates of the two vehicles from the OnBoard Unit (OBU), and then the data is preprocessed by different filtering methods, and then excludes the data information that the two vehicles cannot collide. Finally, the filtered data is used to predict the spatiotemporal position of the vehicle before the two vehicles reach the collision point and determine whether the vehicle will collide. The algorithm is verified in three vehicle crash scenarios through PreScan and Matlab/Simulink co-simulation. The experimental results show that after the data are preprocessed by Kalman filtering, the algorithm has the lowest false alarm rate in the three scenarios. It can effectively improve the driving safety of vehicles at intersections.
Meta TagsDetails
DOI
https://doi.org/10.4271/12-06-03-0019
Pages
12
Citation
Han, B., Zhang, Y., Liu, Y., and Zhu, J., "Collision Avoidance Warning Algorithm Based on Spatiotemporal Position Prediction of Vehicles at Intersections," SAE Int. J. CAV 6(3):297-307, 2023, https://doi.org/10.4271/12-06-03-0019.
Additional Details
Publisher
Published
Feb 10, 2023
Product Code
12-06-03-0019
Content Type
Journal Article
Language
English