Prediction of Car-Following Behavior of Autonomous Vehicle and Human-Driven Vehicle Based on Drivers’ Memory and Cooperation With Lead Vehicle

IF 1.6 4区 工程技术 Q3 ENGINEERING, CIVIL
Ayobami Adewale, Chris Lee
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引用次数: 0

Abstract

Autonomous vehicles (AVs) have moved from hype to reality as the penetration and acceptance rate continues to increase. As they are slowly integrated into traffic with human-driven vehicles (HDVs), it is necessary to predict the car-following behaviors of AVs and HDVs for better control of AV–HDV mixed traffic. This study extends a data-driven car-following model to incorporate drivers’ memory, and cooperation with the lead vehicle. The model predicts the following vehicle’s speed in AV–HDV mixed traffic. The effect of drivers’ cooperation on car-following behavior was modeled using prospect theory (PT), whereas the driver’s memory was incorporated using the memory cell of a long short-term memory (LSTM) neural network. This extended car-following model is called the “PT-LSTM model.” Real-world vehicle trajectories of HDVs and AVs in the Waymo AV Open Dataset were used to calibrate and validate the PT-LSTM model. The PT-LSTM model demonstrated higher accuracy compared with the LSTM model that did not consider drivers’ cooperation, the multiple layer perceptron model, Gipps’ model, and the intelligent driver model that incorporated PT. The importance of variables in different time steps in the PT-LSTM model was also evaluated using SHapley Additive exPlanations (SHAP). The SHAP results showed that AV followers were more likely to cooperate with the lead HDV, whereas HDV followers were more likely to cooperate with the lead AV than the lead HDV. Thus, this study underscores the importance of considering drivers’ memory and cooperation with the lead vehicle for the prediction of car-following behaviors in AV–HDV mixed traffic.
基于驾驶员记忆和前导配合的自动驾驶汽车和人类驾驶汽车跟车行为预测
随着自动驾驶汽车的普及率和接受度不断提高,自动驾驶汽车已经从炒作变成了现实。随着无人驾驶汽车和无人驾驶汽车逐渐融入交通,为了更好地控制无人驾驶汽车和无人驾驶汽车的混合交通,有必要对自动驾驶汽车和无人驾驶汽车的跟车行为进行预测。本研究扩展了一个数据驱动的汽车跟随模型,将驾驶员的记忆和与前车的配合纳入其中。该模型预测了以下车辆在AV-HDV混合交通中的速度。驾驶员合作对汽车跟随行为的影响采用前景理论(PT)建模,驾驶员记忆采用长短期记忆(LSTM)神经网络的记忆单元。这种扩展的汽车跟随模型被称为“PT-LSTM模型”。使用Waymo自动驾驶汽车开放数据集中的hdv和自动驾驶汽车的真实车辆轨迹来校准和验证PT-LSTM模型。PT-LSTM模型比不考虑驾驶员合作的LSTM模型、多层感知器模型、Gipps模型和考虑PT的智能驾驶员模型具有更高的准确率,并利用SHapley加性解释(SHAP)对PT-LSTM模型中不同时间步长变量的重要性进行了评价。SHAP结果显示,AV跟随者更倾向于与领导HDV合作,而HDV跟随者更倾向于与领导AV合作而不是领导HDV。因此,本研究强调了在AV-HDV混合交通中,考虑驾驶员的记忆和与领先车辆的合作对于预测汽车跟随行为的重要性。
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来源期刊
Transportation Research Record
Transportation Research Record 工程技术-工程:土木
CiteScore
3.20
自引率
11.80%
发文量
918
审稿时长
4.2 months
期刊介绍: Transportation Research Record: Journal of the Transportation Research Board is one of the most cited and prolific transportation journals in the world, offering unparalleled depth and breadth in the coverage of transportation-related topics. The TRR publishes approximately 70 issues annually of outstanding, peer-reviewed papers presenting research findings in policy, planning, administration, economics and financing, operations, construction, design, maintenance, safety, and more, for all modes of transportation. This site provides electronic access to a full compilation of papers since the 1996 series.
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