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Classification of driving workload affected by highway alignment conditions based on classification and regression tree algorithm

机译:基于分类和回归树算法的公路对准条件影响的驾驶工作量分类

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Objective: Guaranteeing a safe and comfortable driving workload can contribute to reducing traffic injuries. In order to provide safe and comfortable threshold values, this study attempted to classify driving workload from the aspects of human factors mainly affected by highway geometric conditions and to determine the thresholds of different workload classifications. This article stated a hypothesis that the values of driver workload change within a certain range.Methods: Driving workload scales were stated based on a comprehensive literature review. Through comparative analysis of different psychophysiological measures, heart rate variability (HRV) was chosen as the representative measure for quantifying driving workload by field experiments. Seventy-two participants (36 car drivers and 36 large truck drivers) and 6 highways with different geometric designs were selected to conduct field experiments. A wearable wireless dynamic multiparameter physiological detector (KF-2) was employed to detect physiological data that were simultaneously correlated to the speed changes recorded by a Global Positioning System (GPS) (testing time, driving speeds, running track, and distance). Through performing statistical analyses, including the distribution of HRV during the flat, straight segments and P-P plots of modified HRV, a driving workload calculation model was proposed. Integrating driving workload scales with values, the threshold of each scale of driving workload was determined by classification and regression tree (CART) algorithms.Results: The driving workload calculation model was suitable for driving speeds in the range of 40 to 120km/h. The experimental data of 72 participants revealed that driving workload had a significant effect on modified HRV, revealing a change in driving speed. When the driving speed was between 100 and 120km/h, drivers showed an apparent increase in the corresponding modified HRV. The threshold value of the normal driving workload K was between -0.0011 and 0.056 for a car driver and between -0.00086 and 0.067 for a truck driver.Conclusion: Heart rate variability was a direct and effective index for measuring driving workload despite being affected by multiple highway alignment elements. The driving workload model and the thresholds of driving workload classifications can be used to evaluate the quality of highway geometric design. A higher quality of highway geometric design could keep driving workload within a safer and more comfortable range. This study provided insight into reducing traffic injuries from the perspective of disciplinary integration of highway engineering and human factor engineering.
机译:目的:保证安全舒适的驾驶工作量可以有助于减少交通损伤。为了提供安全且舒适的阈值,该研究试图将行动工作量从主要受公路几何条件影响的人类因素的各个方面进行分类,并确定不同工作负载分类的阈值。本文规定了一个假设,即驾驶员工作负载变化的值在一定范围内。方法:基于全面的文献综述来说明驾驶工作负载量表。通过对不同的心理生理措施的比较分析,选择了心率变异性(HRV)作为通过现场实验量化驾驶工作量的代表性措施。选择了七十二名参与者(36个汽车司机和36个大型卡车驾驶员)和6条高速公路,具有不同的几何设计,进行现场实验。使用可穿戴无线动态多级数率的生理检测器(KF-2)来检测与全球定位系统(GPS)记录的速度变化同时相关的生理数据(测试时间,驾驶速度,运行轨道和距离)。通过执行统计分析,包括在改进的HRV的平坦,直线区段和P-P图中分布HRV,提出了一种驱动工作负载计算模型。集成驾驶工作负载量为值,通过分类和回归树(推车)算法确定每个驾驶工作负载的阈值。结果:驱动工作负载计算模型适用于40至120km / h范围内的驱动速度。 72名参与者的实验数据显示,驱动工作量对改进的HRV产生显着影响,揭示了驱动速度的变化。当驱动速度在100至120km / h之间时,驱动器显示相应的改性HRV的表观增加。汽车驱动器的阈值在-0.0011和0.056之间,用于卡车驾驶员的-0.00086和0.067。结论:心率变异性是虽然受到多个的影响,但是为驾驶工作量的直接有效指标公路对准元素。驾驶工作负载模型和驾驶工作负载分类的阈值可用于评估公路几何设计的质量。高速公路的高速公路几何设计可以在更安全和更舒适的范围内保持驾驶工作量。本研究提供了从公路工程和人为因素工程纪律一体化的视角下减少交通损伤的洞察力。

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