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An innovative method to measure and predict drivers' behaviour in highway extra-long tunnels using time-series modelling

机译:使用时间序列建模在高速公路超长隧道中测量和预测驱动器行为的一种创新方法

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摘要

Previous studies lack a comprehensive evaluation model that combined the subjective perception of the driver and the objective driving environment. This work investigates the characteristics of drivers' behavior risk in highway extra-long tunnels. Real-vehicle tests were conducted in two typical extra-long tunnels and the speed of skilled and unskilled drivers were collected simultaneously. The quantified model of drivers' behavior risk was proposed based on the safety speed difference. The variation characteristics of behavior risk both inside the tunnel and ordinary highway were analysed. Further, the NARX neural network was used to predict real-time speed with the heart rate regarded as the input variable. Results showed that skilled drivers showed the highest behavior risk in the internal zone, while the highest value of unskilled drivers was at the exit zone in the tunnel section. Both two types of drivers presented the highest and the lowest behavior risk on the ordinary highway and the tunnel entrance zone respectively. The proposed NARX model could predict synchronous speed with high accuracy. These results of the present study concern the driver's risk characteristics in Internet ofVehicles and howto establish the automated driver model in the simulation driving environment.
机译:以前的研究缺乏一个综合评价模型,使驾驶员和客观驾驶环境的主观看法。这项工作调查了高速公路超长隧道中司机行为风险的特征。在两个典型的超长隧道中进行真正的车辆测试,同时收集熟练和不熟练的驾驶员的速度。基于安全速度差,提出了司机行为风险量化模型。分析了隧道和普通公路内部行为风险的变化特征。此外,NARX神经网络用于预测具有被视为输入变量的心率的实时速度。结果表明,熟练的司机在内部区显示出最高的行为风险,而非熟练司机的最高值位于隧道部分的出口区。两种类型的司机分别在普通公路和隧道入口区域上呈现最高和最低的行为风险。所提出的NARX模型可以高精度地预测同步速度。目前研究的这些结果涉及驾驶员在互联网上的风险特征以及HOWTO在模拟驾驶环境中建立自动化驱动程序模型。

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