It is extremely important to ensure a safe takeover transition in conditionally automated driving. One of the critical factors that quantifies the safe takeover transition is takeover time. Previous studies identified the effects of many factors on takeover time, such as takeover lead time, non-driving tasks, modalities of the takeover requests (TORs), and scenario urgency. However, there is a lack of research to predict takeover time by considering these factors all at the same time. Toward this end, we used eXtreme Gradient Boosting (XGBoost) to predict the takeover time using a dataset from a meta-analysis study [1]. In addition, we used SHAP (SHapley Additive exPlanation) to analyze and explain the effects of the predictors on takeover time. We identified seven most critical predictors that resulted in the best prediction performance. Their main effects and interaction effects on takeover time were examined. The results showed that the proposed approach provided both good performance and explainability. Our findings have implications on the design of in-vehicle monitoring and alert systems to facilitate the interaction between the drivers and the automated vehicle.
翻译:在有条件自动驾驶中确保安全接管过渡极为重要。安全接管过渡的关键因素之一是接管时间。以前的研究查明了许多因素对接管时间的影响,例如接管准备时间、非驾驶任务、接管请求的方式和情景紧迫性。然而,缺乏通过同时考虑这些因素对接管时间进行预测的研究。为此,我们利用一项元分析研究的数据集[1]预测接管时间(XGBoost)。此外,我们利用SHAP(SHapley Additive Explaination)分析和解释预测器对接管时间的影响。我们查明了导致最佳预测业绩的七个最重要的预测器。审查了这些预测器对接管时间的主要影响和互动影响。结果显示,拟议的方法既提供了良好的性能,也提供了解释性能。我们的调查结果对车辆监测和警报系统的设计产生了影响,以便利司机与自动车辆之间的互动。