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MOHA: A Multi-Mode Hybrid Automaton Model for Learning Car-Following Behaviors

机译:MOHA:用于学习汽车跟随行为的多模式混合自动机模型

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摘要

This paper proposes a novel hybrid model for learning discrete and continuous dynamics of car-following behaviors. Multiple modes representing driving patterns are identified by partitioning the model into groups of states. The model is visualizable and interpretable for car-following behavior recognition, traffic simulation, and human-like cruise control. The experimental results using the next generation simulation datasets demonstrate its superior fitting accuracy over conventional models.
机译:本文提出了一种新颖的混合模型,用于学习汽车跟随行为的离散和连续动力学。通过将模型划分为状态组,可以识别代表驾驶模式的多种模式。该模型是可视化和可解释的,用于汽车跟随行为识别,交通仿真和类似人的巡航控制。使用下一代仿真数据集的实验结果证明了其优于传统模型的拟合精度。

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