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Platoon Separation Strategy Optimization Method Based on Deep Cognition of a Driver’s Behavior at Signalized Intersections

机译:分级分离策略优化方法基于驾驶员交叉口驾驶员行为的深度认知

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Semantic understanding of drivers & x2019; behavior features at intersections plays a pivotal role in the proper decision-making of a platoon. This paper presents a flexible framework to automatically extract the driver & x2019;s driving features from observed temporal sequences of driving raw data and traffic light information. An approach, which contains two key sub-problems, is proposed to select the separated vehicles from the platoon in the vicinity of the intersection. Then, the first sub-problem, accurately capturing the drivers & x2019; driving behavior features under the impact of traffic lights, is addressed by using the Bayesian nonparametric approach, which could segment drivers & x2019; driving raw data temporal sequences into small analytically interpretable components (called driving primitives) without using prior knowledge. In addition, the extracted driving primitives are used to obtain the vehicle separation strategy (which is also the second sub-problem) by considering safety, efficiency, and energy consumption. Finally, 200 groups of raw data of human-driven vehicles approaching the intersection are used to validate the effectiveness of the proposed primitive-based framework. Experimental results demonstrate that the acceleration indeterminacy of separated vehicles could be decreased 37 & x0025;-72 & x0025; by segmenting the captured driving behavior features into patterns. Moreover, the vehicle separation strategy could not only increase the efficiency, but also the safety, and the energy consumption could be decreased.
机译:对司机的语义理解&x2019;交叉路口的行为特征在特定的排列中起着关键作用。本文提出了一种灵活的框架,可以自动提取驱动器和X2019; S驱动特征,从观察到的驾驶原始数据和交通灯信息的时间序列。提出了一种包含两个关键子问题的方法,以从交叉口附近从排中的分隔件中选择分离的车辆。然后,第一个子问题,准确地捕获驱动器和X2019;通过使用贝叶斯非参数方法来解决交通灯的影响下的行为特征,可以使用贝叶斯非参数方法来解决司机司机和X2019;在不使用先前知识的情况下将原始数据临时序列驱动成小型分析可解释的组件(称为驾驶基元)。另外,通过考虑安全性,效率和能量消耗,使用提取的驾驶基元用于获得车辆分离策略(也是第二子问题)。最后,使用200个接近交叉路口的人机车辆的原始数据组用于验证所提出的基于原始框架的有效性。实验结果表明,分离车辆的加速度不确定性可以减少37&x0025; -72&x0025;通过将捕获的驾驶行为分段分割成模式。此外,车辆分离策略不仅可以提高效率,而且可以减少安全性,并且能量消耗也可以减少。

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