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Combined car-following and unsafe event trajectory simulation using agent based modeling techniques

机译:基于代理的建模技术组合了汽车跟踪和不安全的事件轨迹仿真

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This paper presents a research effort aimed at modeling normal and safety-critical driving behavior in traffic under naturalistic driving data using agent based modeling techniques. Neuro-fuzzy reinforcement learning was used to train the agents. The developed agents were implemented in the VISSIM simulation platform and were evaluated by comparing the behavior of vehicles with and without agent behavior activation. The results showed very close resemblance of the behavior of agents to driver data.
机译:本文提出了一种研究旨在使用基于代理的建模技术在自然驾驶数据下的流量下进行建模的正常和安全关键驾驶行为。 神经模糊钢筋学习用于培训代理商。 发达的代理在Vissim仿真平台中实施,并通过比较具有和不具有代理行为激活的车辆的行为来评估。 结果表明,代理行为与驱动程序数据的行为非常紧密相似。

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