A data-driven behavior generation algorithm in car-following scenarios - Robotics Institute Carnegie Mellon University

A data-driven behavior generation algorithm in car-following scenarios

Y. Zhang, Q. Lin, J. Wang, S. Verwer, and J. Dolan
Conference Paper, Proceedings of 25th International Symposium on Dynamics of Vehicles on Roads and Tracks (IAVSD '17), pp. 227 - 232, August, 2017

Abstract

The conventional Adaptive Cruise Control system lacks user-friendly design. In this paper, a novel method for learning a generative model from human drivers’ car-following data using an automaton learning algorithms is proposed. By partitioning the model using frequent common state sequences, human driving patterns are extracted and clustered. Then a cluster identification method is used to obtain the current driving pattern and generate a desired acceleration. The experiments validate that the simulated trajectories of the proposed method are more similarly to human drivers than those of conventional PID controller.

BibTeX

@conference{Zhang-2017-122447,
author = {Y. Zhang and Q. Lin and J. Wang and S. Verwer and J. Dolan},
title = {A data-driven behavior generation algorithm in car-following scenarios},
booktitle = {Proceedings of 25th International Symposium on Dynamics of Vehicles on Roads and Tracks (IAVSD '17)},
year = {2017},
month = {August},
pages = {227 - 232},
}