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Attribute selection for modelling driver's car-following behaviour in heterogeneous congested traffic conditions

机译:在异构拥塞交通状况下建模驾驶员的跟车行为的属性选择

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This paper uses a real-world data set to investigate a driver's car-following behaviour of different class of vehicles in congested traffic conditions. The existing car-following models do not explicitly consider heavy vehicle (HV) interactions with the other vehicles. This could become problematic in future due to the increasing proportion of HVs in the traffic stream. Four types of vehicle combinations were considered in this study including car-car, car-HV, HV-car, and HV-HV. The results of detailed data analysis showed that the driver's behaviours differ in each car-following combination. Further the variables which could influence the car-following behaviour in each combination were identified. The potential variables were explored and the effective variables were selected through a combination of advanced statistical analysis. The findings specify that further research is needed to develop a car-following model which incorporates these behavioural differences.
机译:本文使用现实世界的数据集来研究在交通拥挤的情况下不同类别车辆的驾驶员的跟车行为。现有的跟车模型未明确考虑重型车辆(HV)与其他车辆的相互作用。由于HV在交通流中的比例不断增加,这将来可能会成为问题。在这项研究中考虑了四种类型的车辆组合,包括汽车,汽车-HV,HV-car和HV-HV。详细数据分析的结果表明,驾驶员的行为在每种跟车组合中都不同。进一步确定了可能影响每种组合的跟车行为的变量。探索了潜在变量,并通过高级统计分析的组合选择了有效变量。研究结果表明,需要进一步研究以开发出包含这些行为差异的跟车模型。

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