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A Weather-Assisted Driver Experiences Based Path Selection Method

机译:基于天气辅助驾驶员体验的路径选择方法

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摘要

With the rapid increasing number of vehicles in the urban area, the metropolitan traffic becomes extremely busy in particular in rush hours. In recent years, Intelligent Transport System (ITS) is applied to provide real-time path planning and navigation in order to enable the convenience travelling from one place to another. Weather condition is a critical factor for path planning while the raining or snowing can severely degrade the vehicle moving speed. For this reason, when the experienced drivers including most taxi drivers manually plan the paths, they always consider the weather and other related factors to find the optimal path during bad weather. However, most existing works do not consider the weather and experienced drivers' selection to make path planning. Therefore, in this paper, we propose a new path planning considers by analyzing the weather effect on experienced drivers' path selection. To achieve this, we study the floating car data in Beijing to discover how taxi drivers as a group of most experienced drivers select path under bad weathers. In addition, we use the Support Vector Machine (SVM) to learn a model about the taxi drivers' path selection. Then we apply this model in the A-star. The experimental results show our proposal provides shorter travel time compared to its counterpart under bad weather condition.
机译:随着市区车辆数量的迅速增加,特别是在高峰时段,城市交通变得极为繁忙。近年来,智能交通系统(ITS)用于提供实时路径规划和导航,以实现从一个地方到另一个地方的便捷旅行。天气条件是道路规划的关键因素,而下雨或下雪会严重降低车辆的行驶速度。因此,当经验丰富的驾驶员(包括大多数出租车驾驶员)手动规划路线时,他们总是考虑天气和其他相关因素以在恶劣天气下找到最佳路线。但是,大多数现有工程并未考虑天气和经验丰富的驾驶员的选择来进行路径规划。因此,在本文中,我们通过分析天气对有经验的驾驶员选择道路的影响,提出了一种新的道路规划方法。为了实现这一目标,我们研究了北京的浮动汽车数据,以发现出租车司机作为最有经验的司机群体如何在恶劣天气下选择道路。此外,我们使用支持向量机(SVM)学习有关出租车司机的路径选择的模型。然后,我们将此模型应用于A星。实验结果表明,与恶劣天气条件下相比,我们的建议可以缩短旅行时间。

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