A Neurofuzzy Approach to Modeling Longitudinal Driving Behavior and Driving Task Complexity

R. Hoogendoorn, B. Arem, S. Hoogendoorn
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引用次数: 5

Abstract

Technological innovations can be assumed to have made the driving task more complex. It is, however, not yet clear to what extent this complexity leads to changes in longitudinal driving behavior. Furthermore, it remains to be seen how these adaptation effects can best be modeled mathematically. In order to determine the effect of complexity on empirical longitudinal driving behavior we performed a driving simulator experiment with a repeated measures design. Through this experiment we established that complexity of the driving task leads to substantial changes in speed and spacing. In order to provide insight into how complexity is actually related to changes in longitudinal driving behavior we introduce a new theoretical framework based on the Task-Capability-Interface model. Finally in this paper we take some first steps towards modeling of adaptation effects in longitudinal driving behavior in relation to complexity of the driving task through the introduction of a new neurofuzzy car-following model and based on the proposed theoretical framework. In this paper we show that this model yields a relatively good prediction of longitudinal driving behavior in case of driving conditions with differing complexity. The paper finishes with a discussion section and recommendations for future research.
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纵向驾驶行为和驾驶任务复杂性建模的神经模糊方法
可以认为,技术创新使驾驶任务变得更加复杂。然而,目前尚不清楚这种复杂性在多大程度上导致了纵向驾驶行为的变化。此外,如何才能最好地用数学模型来模拟这些适应效应还有待观察。为了确定复杂性对经验纵向驾驶行为的影响,我们进行了重复测量设计的驾驶模拟器实验。通过这个实验,我们确定了驾驶任务的复杂性会导致速度和间距的实质性变化。为了深入了解复杂性与纵向驾驶行为变化之间的关系,我们引入了一个基于任务-能力-界面模型的新理论框架。最后,在本文提出的理论框架的基础上,我们通过引入一个新的神经模糊汽车跟随模型,为纵向驾驶行为中与驾驶任务复杂性相关的适应效应建模迈出了一些初步的步骤。在本文中,我们表明,该模型产生了相对较好的预测纵向驾驶行为的情况下,驾驶条件具有不同的复杂性。论文最后以讨论部分和对未来研究的建议结束。
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