Modeling and Explanation of Driver Steering Style: An Experiment under Large-Curvature Road Condition

Puheng Shao, Zhenwu Fang, Jinxiang Wang, Zhongsheng Lin, Guo-dong Yin
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Abstract

Understanding driver’s maneuver behavior is an important prerequisite for providing drivers with different levels of assistance in the collaborative driving system. Aiming at establishing a general and interpretable model of driver steering styles, 38 drivers’ data are collected by a driving simulator platform, where a U-shaped experimental scene is built. To reduce data redundancy, Principal Component Analysis (PCA) is utilized to extract key features. Vali-dated by both Elbow Method and Silhouette Coefficient, the features are classified by k-means cluster. Finally, three driving styles with different characteristics are defined, and the corresponding original data are compared to make a reasonable explanation. The results can be used as a design basis for customizing shared steering controllers in collaborative driving.
驾驶员转向方式的建模与解释——基于大曲率路况的实验
了解驾驶员的机动行为是在协同驾驶系统中为驾驶员提供不同程度辅助的重要前提。为了建立驾驶员转向风格的通用可解释性模型,利用驾驶模拟器平台采集了38名驾驶员的驾驶数据,构建了u型实验场景。为了减少数据冗余,利用主成分分析(PCA)提取关键特征。采用肘部法和廓形系数对特征进行验证,采用k-means聚类对特征进行分类。最后,定义了三种具有不同特征的驾驶风格,并对比了相应的原始数据,做出合理的解释。研究结果可作为定制协同驾驶共享转向控制器的设计依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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