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Classification of Fatigued and Drunk Driving Based on Decision Tree Methods: A Simulator Study

机译:基于决策树方法的疲劳酒后驾车分类仿真研究

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摘要

It is a commonly known fact that both alcohol and fatigue impair driving performance. Therefore, the identification of fatigue and drinking status is very important. In this study, each of the 22 participants finished five driving tests in total. The control condition, serving as the benchmark in the five driving tests, refers to alert driving. The other four test conditions include driving with three blood alcohol content (BAC) levels (0.02%, 0.05%, and 0.08%) and driving in a fatigued state. The driving scenario included straight and curved roads. The straight roads connected the curved ones with radii of 200 m, 500 m, and 800 m with two turning directions (left and right). Driving performance indicators such as the average and standard deviation of longitudinal speed and lane position were selected to identify drunk driving and fatigued driving. In the process of identification, road geometry (straight segments, radius, and direction of curves) was also taken into account. Alert vs. abnormal and fatigued vs. drunk driving with various BAC levels were analyzed separately using the Classification and Regression Tree (CART) model, and the significance of the variables on the binary response variable was determined. The results showed that the decision tree could be used to distinguish normal driving from abnormal driving, fatigued driving, and drunk driving based on the indexes of vehicle speed and lane position at curves with different radii. The overall accuracy of classification of “alert” and “abnormal” driving was 90.9%, and that of “fatigued” and “drunk” driving was 94.4%. The accuracy was relatively low in identifying different BAC degrees. This experiment is designed to provide a reference for detecting dangerous driving states.
机译:众所周知,酒精和疲劳都会损害驾驶性能。因此,识别疲劳和饮酒状态非常重要。在这项研究中,22名参与者中的每人总共完成了5次驾驶考试。作为五次驾驶测试的基准的控制条件是警报驾驶。其他四个测试条件包括以三个血液酒精含量(BAC)水平(0.02%,0.05%和0.08%)行驶以及在疲劳状态下行驶。驾驶场景包括直弯道路。笔直的道路连接半径为200 m,500 m和800 m的弯曲道路,并具有两个转向(左和右)。选择诸如纵向速度和车道位置的平均和标准偏差之类的驾驶性能指标来识别酒后驾驶和疲劳驾驶。在识别过程中,还考虑了道路几何形状(直线段,半径和曲线方向)。使用分类和回归树(CART)模型分别分析了在各种BAC级别下的警报,异常和疲劳与醉酒驾驶,并确定了这些变量在二元响应变量上的重要性。结果表明,基于不同半径曲线上车速和车道位置的指标,决策树可用于区分正常驾驶与异常驾驶,疲劳驾驶和酒后驾驶。 “警告”和“异常”驾驶的总分类准确率为90.9%,“疲劳”和“醉酒”驾驶的总分类准确率为94.4%。识别不同的BAC程度的准确性相对较低。该实验旨在为检测危险驾驶状态提供参考。

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