首页> 外文期刊>International journal of modeling, simulation and scientific computing >Capturing driving behavior Heterogeneity based on trajectory data
【24h】

Capturing driving behavior Heterogeneity based on trajectory data

机译:基于轨迹数据捕获驾驶行为异质性

获取原文
获取原文并翻译 | 示例
       

摘要

Driving behavior is heterogeneous for various drivers due to the different influencing factors as reaction time, gender, driving years and so on. Some existing works tried to reproduce some of the complex characteristics of real traffic flow by taking into account the heterogeneous driving behavior, and the drivers are generally divided into two classes (including aggressive drivers and careful drivers) or three classes (including aggressive drivers, normal drivers and careful drivers). Nevertheless, the classification approaches have not been verified, and the rationality of the classifications has not been confirmed as well. In this study, the trajectory data of drivers is extracted from the NGSIM datasets. By combining the K-Means method and Silhouette measure index, the drivers are classified into four clusters (named as clusters A, B, C and D, respectively) in accordance with the acceleration and time headway. The two-dimensional approach is applied to analyze the characteristics of different clusters. Here, one dimension consists of "Cautious" and "Aggressive" behaviors in terms of velocity and acceleration, and the other dimension consists of "Sensitive" and "Insensitive" behaviors in terms of reaction time. Finally, the fuel consumption and emissions for different clusters are calculated by using the VT-Micro model. A surprising result indicates that overly "cautious" and "sensitive" behaviors may result in more fuel consumption and emissions. Therefore, it is necessary to find the balance between the driving characteristics.
机译:由于影响因素,性别,驾驶年等不同,各种司机,各种司机的行为行为是异构的。一些现有的作品试图通过考虑异构的驾驶行为来重现实际交通流量的一些复杂特征,并且司机通常分为两类(包括攻击驱动程序和仔细驱动程序)或三个类(包括攻击驱动程序,正常司机和谨慎的司机)。尽管如此,尚未验证分类方法,并未确认分类的合理性。在本研究中,从NGSIM数据集中提取驱动程序的轨迹数据。通过组合K-METION方法和轮廓测量指数,根据加速度和时间偏转,驱动程序分为四个集群(分别为群集A,B,C和D)。应用二维方法来分析不同簇的特征。在这里,一个维度包括在速度和加速方面的“谨慎”和“侵略性”行为,另一个维度在反应时间方面由“敏感”和“不敏感”行为组成。最后,通过使用VT-MICRO模型计算不同簇的燃料消耗和排放。令人惊讶的结果表明,过于“谨慎”和“敏感”行为可能导致更燃料的消耗和排放。因此,有必要在驾驶特性之间找到平衡。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号