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A study on the cognitive workload characteristics according to the driving behavior in the urban road

机译:基于城市道路驾驶行为的认知工作量特征研究

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The aim of this study is to investigate the cognitive workload characteristics which can be applied to the human factors that are applied to the switching of operation control in autonomous vehicles. For this purpose, we analyze test driver's EEG and driving data measured while driving on real roads to find out the difference of the cognitive workload state according to driving behaviors in the Urban Road. We performed a paired sample t-test using the preprocessed data to investigate the difference between normal workload ratio and overload workload ratio according to driving behavior. We also performed k-means clustering to see if drivers could be divided into groups using the overload status ratio according to the driving behavior of the driver. For this, we divided the collected data into simple and complex driving types, to see if there is any difference in the cognitive workload when the driver drives straight ahead or does in combination with other driving behaviors. We found that the overload occurrence rate is significantly different according to the driving behavior. We found that female drivers are more likely to be overloaded than male drivers and middle-aged drivers are likely to have more overloaded than young drivers when they did in complex driving. These cognitive workload characteristics can be reflected in the function of switching the operation control right in the autonomous driving system.
机译:这项研究的目的是研究可应用于人为因素的认知工作量特征,该人为因素适用于自动驾驶汽车的操作控制切换。为此,我们分析测试驾驶员的EEG和在实际道路上行驶时测得的行驶数据,以根据城市道路上的驾驶行为找出认知工作量状态的差异。我们使用预处理后的数据进行了配对样本t检验,以根据驾驶行为调查正常工作负荷率和过载工作负荷率之间的差异。我们还执行了k均值聚类,以查看是否可以根据驾驶员的驾驶行为使用超载状态比率将驾驶员分为几组。为此,我们将收集的数据分为简单和复杂的驾驶类型,以查看驾驶员直行驾驶或与其他驾驶行为结合时认知工作量是否存在差异。我们发现,根据驾驶行为,过载发生率显着不同。我们发现,女性驾驶员比男性驾驶员更容易超载,而中年驾驶员在复杂驾驶中可能比年轻驾驶员更容易超载。这些认知工作量特征可以反映在自动驾驶系统中切换操作控制权的功能中。

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