利用并行学习建立变道模型

IF 7.6 1区 工程技术 Q1 TRANSPORTATION SCIENCE & TECHNOLOGY Transportation Research Part C-Emerging Technologies Pub Date : 2024-09-04 DOI:10.1016/j.trc.2024.104841
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引用次数: 0

摘要

本文介绍了一种创新方法,通过采用并行学习,将传统的物理或行为模型与数据驱动的对应模型无缝集成,对车辆的变道(LC)过程进行建模。变道过程分为两个不同的步骤:变道决策和变道执行,每个步骤都独立建模。在低功耗决策模型中,一个基于效用的模型被嵌入到神经网络中。同时,LC 实施模型在长短期记忆模型的训练过程中加入了传统的汽车跟随模型,复制了新的换道跟随者的行为。从无人驾驶飞行器收集的经验轨迹数据提供了有关车辆变道过程的详细信息,可作为训练和测试拟议模型的基础。此外,还采用了来自不同地点的数据来评估模型的可移植性。结果表明,所提出的模型能够很好地预测变道决策和实施情况,在预测准确性和可移植性方面优于基线物理和行为模型以及纯数据驱动模型。这些发现凸显了这些模型在提高微观交通模拟器精度方面的巨大潜力。
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Modeling lane changes using parallel learning

This paper introduces an innovative approach to model the lane-change (LC) process of vehicles by employing parallel learning, seamlessly integrating conventional physical or behavioral models with data-driven counterparts. The LC process is divided into two distinct steps: the LC decision and the LC implementation, each independently modeled. For the LC decision model, a utility-based model is embedded into a neural network. Simultaneously, the LC implementation model incorporates a conventional car-following model, replicating the behavior of the new follower of the lane-changer, within the training process of a long-short-term memory model. Empirical trajectory data collected from unmanned aerial vehicles, which provides detailed information on the vehicles’ lane-changing process, serves as the basis for training and testing the proposed models. Additionally, data from a different site is employed to assess model transferability. Results demonstrate that the proposed models adeptly predict both LC decisions and implementations, outperforming baseline physical and behavioral models, as well as pure data-driven models, in terms of prediction accuracy and transferability. These findings highlight the significant potential of these models in improving the precision of microscopic traffic simulators.

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来源期刊
CiteScore
15.80
自引率
12.00%
发文量
332
审稿时长
64 days
期刊介绍: Transportation Research: Part C (TR_C) is dedicated to showcasing high-quality, scholarly research that delves into the development, applications, and implications of transportation systems and emerging technologies. Our focus lies not solely on individual technologies, but rather on their broader implications for the planning, design, operation, control, maintenance, and rehabilitation of transportation systems, services, and components. In essence, the intellectual core of the journal revolves around the transportation aspect rather than the technology itself. We actively encourage the integration of quantitative methods from diverse fields such as operations research, control systems, complex networks, computer science, and artificial intelligence. Join us in exploring the intersection of transportation systems and emerging technologies to drive innovation and progress in the field.
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