论文标题

通过加权视觉和触觉指导对驾驶员行为进行建模和分析

Modeling and analysis of driver behavior under shared control through weighted visual and haptic guidance

论文作者

Wang, Zheng, Zheng, Rencheng, Nacpil, Edric John Cruz, Nakano, Kimihiko

论文摘要

对于驾驶员自动化共享控制系统的最佳设计,基于测量和建模的驾驶员行为的理解在开发过程的早期至关重要。本文通过从前方的道路上的视觉指导加权过程以及转向系统的触觉指导来展示驾驶员模型。提出的加权过程描述了驾驶员与触觉指导转向的相互作用以及驾驶员对其的依赖。进行了驾驶模拟器实验,以确定手动和触觉指导的模型参数。在考虑个体差异后,提议的驱动程序模型与14名参与者之间的拟合度相匹配。验证结果表明,模拟轨迹通过与测量的轨迹相匹配,有效地遵循了驾驶过程,从而表明所提出的驾驶员模型能够在触觉指导过程中预测驾驶员行为。此外,考虑到各种驾驶员状态以及通过数值分析,可以评估不同程度的驾驶员依赖对驾驶性能的影响。模型评估结果揭示了提出的驱动器模型的潜力,该模型应应用于触觉引导系统的设计和评估。

For the optimum design of a driver-automation shared control system, an understanding of driver behavior based on measurements and modeling is crucial early in the development process. This paper presents a driver model through a weighting process of visual guidance from the road ahead and haptic guidance from a steering system for a lane-following task. The proposed weighting process describes the interaction of a driver with the haptic guidance steering and the driver reliance on it. A driving simulator experiment is conducted to identify the model parameters for driving manually and with haptic guidance. The proposed driver model matched the driver input torque with a satisfactory goodness of fit among fourteen participants after considering the individual differences. The validation results reveal that the simulated trajectory effectively followed the driving course by matching the measured trajectory, thereby indicating that the proposed driver model is capable of predicting driver behavior during haptic guidance. Furthermore, the effect of different degrees of driver reliance on driving performance is evaluated considering various driver states and with system failure via numerical analysis. The model evaluation results reveal the potential of the proposed driver model to be applied in the design and evaluation of a haptic guidance system.

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