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DRIVING RHYTHM METHOD FOR DRIVING COMFORT ANALYSIS ON RURAL HIGHWAYS

机译:农村公路驾驶舒适性分析的驾驶节律方法

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摘要

Driving comfort is of great significance for rural highways, since the variation characteristics of driving speed are comparatively complex on rural highways. Earlier studies about driving comfort were usually based on the actual geometric road alignments and automobiles, without considering the driver's visual perception. However, some scholars have shown that there is a discrepancy between actual and perceived geometric alignments, especially on rural highways. Moreover, few studies focus on rural highways. Therefore, in this paper the driver's visual lane model was established based on the Catmull-Rom spline, in order to describe the driver's visual perception of rural highways. The real vehicle experiment was conducted on 100 km rural highways in Tibet. The driving rhythm was presented to signify the information during the driving process. Shape parameters of the driver's visual lane model were chosen as input variables to predict the driving rhythm by BP neural network. Wavelet transform was used to explore which part of the driving rhythm is related to the driving comfort. Then the probabilities of good, fair and bad driving comfort can be calculated by wavelets of the driving rhythm. This work not only provides a new perspective into driving comfort analysis and quantifies the driver's visual perception, but also pays attention to the unique characteristics of rural highways.
机译:驾驶舒适性对于农村公路具有重要意义,因为在农村公路上行驶速度的变化特征比较复杂。较早的关于驾驶舒适性的研究通常基于实际的几何道路路线和汽车,而不考虑驾驶员的视觉感知。但是,一些学者表明,实际的和感知的几何路线之间存在差异,尤其是在农村公路上。此外,很少有研究关注农村公路。因此,本文基于Catmull-Rom样条建立了驾驶员的视觉车道模型,以描述驾驶员对农村公路的视觉感知。真实车辆实验是在西藏100公里的乡村公路上进行的。提出了驾驶节奏以表示驾驶过程中的信息。选择驾驶员视觉车道模型的形状参数作为输入变量,以通过BP神经网络预测驾驶节奏。小波变换用于探索驾驶节奏的哪一部分与驾驶舒适性有关。然后,可以通过驾驶节奏的小波计算出良好,合理和不良驾驶舒适性的概率。这项工作不仅为驾驶舒适性分析提供了新的视角,并量化了驾驶员的视觉感受,还关注了乡村公路的独特特征。

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