A Data-Driven Behavior Generation Algorithm In Car-Following Scenarios

DYNAMICS OF VEHICLES ON ROADS AND TRACKS, VOL 1(2018)

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摘要
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.
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