4.6 Article

Proactive longitudinal control to preclude disruptive lane changes of human-driven vehicles in mixed-flow traffic

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CONTROL ENGINEERING PRACTICE
卷 136, 期 -, 页码 -

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PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.conengprac.2023.105522

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Connected and autonomous vehicle; Lane change; Platooning control; Mixed-flow traffic; Deep reinforcement learning

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In a mixed-flow traffic environment, predicting and intervening in lane-change behaviors of human-driven vehicles (HDVs) can enable cooperative platooning control and reduce traffic oscillations. A proactive longitudinal control strategy (PLCS), based on deep reinforcement learning, is proposed to counteract disruptive lane changes by HDVs and maintain the smoothness of traffic flow.
Connected and autonomous vehicles (CAVs) can be leveraged to enable cooperative platooning control to alleviate traffic oscillations. However, prior to a pure CAV environment, CAVs and human-driven vehicles (HDVs) will coexist on roads, creating a mixed-flow traffic environment. Mixed-flow traffic introduces key challenges for CAV operations due to potential lane changes by HDVs in adjacent lanes, which can cause stop-and-go waves and traffic oscillations. An understanding of the interactions between CAVs and HDVs in the lane-change process can be leveraged to use CAVs to proactively preclude disruptive lane changes by HDVs. This study proposes a deep reinforcement learning-based proactive longitudinal control strategy (PLCS) for CAVs to counteract disruptive HDV lane-change behaviors that can induce disturbances, and to preserve the smoothness of traffic flow in the CAV platooning control process. In it, a Transformer-based lane-change traffic condition predictor is constructed to predict whether an HDV will likely perform a disruptive lane change under the ambient traffic conditions. If no disruptive lane change is predicted, an extended intelligent driver model is activated for the CAV to perform smooth car-following behavior under cooperative CAV platooning control. If a disruptive lane change is predicted, a rainbow deep Q-network (RDQN)-based lane-change preclusion model is proposed through which the CAV can alter the lane-change traffic condition to preclude the HDV's lane change. Results from numerical experiments suggest that a CAV controlled by the PLCS is effective in reducing disruptive lane-change maneuvers by an HDV in its vicinity, and can improve string stability performance in mixed-flow traffic. Further, the effectiveness of the PLCS is illustrated under different lane-change scenarios, CAV control setups, and HDV driver types.

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