基于排队网络认知架构的驾驶员横向和纵向控制模型

Luzheng Bi, Cuie Wang, Xuerui Yang
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引用次数: 0

摘要

本文提出了一种基于排队网络(QN)认知架构的驾驶员跟车横向控制计算模型。首先基于车头时距开发了QN认知架构框架内的驾驶员跟车模型,然后将其与先前验证的基于QN的驾驶员横向控制模型集成。人类驾驶员数据与集成模型仿真数据的对比表明,该计算模型能够很好地完成横向控制的跟车控制,其性能与驾驶员在直线和弯曲道路下的性能基本一致。该模型可以计算和模拟汽车跟随行为,因此有可能帮助开发针对汽车跟随场景的驾驶员辅助系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Driver Lateral and Longitudinal Control Model Based on Queuing Network Cognitive Architecture
In this paper, we propose a new computational model of driver car-following control with lateral control based on the Queuing Network (QN) cognitive architecture. A driver car-following model within the framework of the QN cognitive architecture is first developed based on the time headway and then integrated with a QN-based driver lateral control model previously validated. The comparison between human driver data and the integrated model simulation data suggests that this computational model can perform car-following control with lateral control well, and its performance is in agreement with that of drivers under straight and curved roads. This proposed model can compute and simulate car-following behavior and thus has the potential to help develop driver assistance systems for the car-following scenario.
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