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A comparison of computational driver models using naturalistic and test-track data from cyclist-overtaking manoeuvres

机译:使用骑自行失论和测试轨道数据从骑自行车的超车演习进行计算驱动程序模型的比较

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The improvement of advanced driver assistance systems (ADAS) and their safety assessment rely on the understanding of scenario-dependent driving behaviours, such as steering to avoid collisions.This study compares driver models that predict when a driver starts steering away to overtake a cyclist on rural roads. The comparison is among four models: a threshold model, an accumulator model, and two models inspired by a proportional-integral and proportional-integral-derivative controller. These models were tested and cross-applied using two different datasets: one from a naturalistic driving (ND) study and one from a test-track (TT) experiment. Two perceptual variables, expansion rate (the horizontal angular expansion rate of the image of the lead road user on the driver's retina) and inverse tau (the ratio between the image's expansion rate and its horizontal optical size), were tested as input to the models. A linear cost function is proposed that can obtain the optimal parameters of the models by computationally efficient linear programming.The results show that the models based on inverse tau fitted the data better than the models that included expansion rate. In general, the models fitted the ND data reasonably well, but not as well the TT data. For the ND data, the models including an accumulative component outperformed the threshold model. For the TT data, due to the poorer fit of the models, more analysis is required to determine the merit of the models. The models fitted to TT data captured the overall pattern of steering onsets in the ND data rather well, but with a persistent bias, probably due to the drivers employing a more cautious strategy in TT.The models compared in this paper may support the virtual safety assessment of ADAS so that driver behaviour may be considered in the design and evaluation of new safety systems. (C) 2020 The Author(s). Published by Elsevier Ltd.
机译:改进高级驾驶辅助系统(ADA)及其安全评估依赖于对情景依赖驾驶行为的理解,例如转向以避免碰撞。这项研究比较了预测驾驶员在转向转向骑行者时预测的驾驶员模型农村道路。比较是四种模型:阈值模型,累加器模型和由比例积分和比例积分控制器的启发的两种模型。使用两个不同的数据集进行测试和交叉施加这些模型:一个来自自然主义驾驶(ND)研究的一个,以及来自测试轨道(TT)实验的模型。两个感知变量,扩展速率(驾驶员视网膜上的铅道用户的图像的水平角膨胀率)和逆Tau(图像的膨胀率和水平光学尺寸之间的比率)被测试为模型的输入。提出了一种线性成本函数,其可以通过计算有效的线性编程获得模型的最佳参数。结果表明,基于逆TAU的模型比包括扩展速率的模型更好地拟合数据。一般来说,模型合理地拟合了ND数据,但不是TT数据。对于ND数据,包括累积分量的模型优于阈值模型。对于TT数据,由于模型的较差较差,需要更多的分析来确定模型的优点。安装在TT数据的模型捕获了ND数据中的转向持续的整体模式,而是持久偏见,可能是由于驾驶员在TT中采用更谨慎的策略。在本文中的模型相比,可以支持虚拟安全对ADA的评估,以便在新安全系统的设计和评估中可能考虑驱动程序行为。 (c)2020提交人。 elsevier有限公司出版

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