将变道预测纳入互联自动驾驶车辆在交叉路口的节能速度控制中

Maziar Zamanpour, Suiyi He, Michael W. Levin, Zongxuan Sun
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引用次数: 0

摘要

互联自动驾驶车辆(CAV)具有感知能力,并能与其他自动驾驶车辆和互联交叉路口进行信息广播。此外,它们还具有计算能力,可以进行策略控制,从而带来能源效益。一种潜在的控制策略是实时车速控制,即利用广播的交通信息(如信号灯时间)调整车速。然而,最佳控制很可能会增加受控 CAV 前方的空隙,从而导致其他驾驶员变道。本研究提出了一种改进的交通流模型,旨在预测变道发生率并评估变道对未来交通状态的影响。其主要目的是提高能源效率。该预测模型基于细胞分裂平台,并考虑了变道时的额外流量。然后,根据为前一辆车生成的预测轨迹,制定最佳控制策略。车道变更预测根据预测的交通状态估算车辆的未来速度和间隙。所提出的框架优于非变道交通模型,当提前 4-6 秒预测变道时,可节省多达 13% 的能源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incorporating lane-change prediction into energy-efficient speed control of connected autonomous vehicles at intersections
Connected and autonomous vehicles (CAVs) possess the capability of perception and information broadcasting with other CAVs and connected intersections. Additionally, they exhibit computational abilities and can be controlled strategically, offering energy benefits. One potential control strategy is real-time speed control, which adjusts the vehicle speed by taking advantage of broadcasted traffic information, such as signal timings. However, the optimal control is likely to increase the gap in front of the controlled CAV, which induces lane changing by other drivers. This study proposes a modified traffic flow model that aims to predict lane-changing occurrences and assess the impact of lane changes on future traffic states. The primary objective is to improve energy efficiency. The prediction model is based on a cell division platform and is derived considering the additional flow during lane changing. An optimal control strategy is then developed, subject to the predicted trajectory generated for the preceding vehicle. Lane change prediction estimates future speed and gap of vehicles, based on predicted traffic states. The proposed framework outperforms the non-lane change traffic model, resulting in up to 13% energy savings when lane changing is predicted 4-6 seconds in advance.
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