Abstract
Safe driving decision-making is particularly important for automated commercial vehicles. Small passenger vehicles pay more attention to collision prevention, while commercial vehicles with a longer brake distance and worse roll stability need to consider both anti-collision and anti-rollover. The widely studied driving decision-making methods for small passenger vehicles cannot be simply and directly applied to commercial vehicles. This paper proposes a safe driving decision-making methodology based on a cascade imitation learning network (CILN). The CILN integrates two parts, namely the supervised learning part and the imitation learning part. The first part learns safe driving maneuvers extracted from naturalistic vehicle sensor data. Through sensor data processing, it develops decision-making at a humanoid level such as avoiding jerky driving actions. In the second part, generative adversarial imitation learning is introduced to further learn safe driving decisions under conditions prone to collision and rollover. Finally, both highD dataset and SUMO (Simulation of Urban Mobility) are used to train and verify the performance of the CILN. By comparing the evaluation indicators of TTC, RTTC, DRAC, distance headway, and lateral acceleration, the CILN outperforms the other decision-making algorithms. Experimental results show that the CILN can provide safe driving decision-making and ensure the driving safety of ACVs in dense traffic flow.
Published Version
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