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Risk prediction model for drivers' in-vehicle activities - Application of task analysis and back-propagation neural network

机译:驾驶员车载活动的风险预测模型-任务分析和反向传播神经网络的应用

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摘要

This study aims to develop a risk prediction model for in-vehicle tasks performed by drivers by using two methods: task analysis (TA) and back-propagation neural networks (BPNNs). Sixty-six participants volunteered to participate and were divided in two groups with different in-vehicle secondary tasks (traditional vs. in-vehicle information system/ IVIS) and participated in a driving experiment simulating low/high driving load road conditions. We assessed driving performance (i.e. longitudinal velocity and lateral acceleration variance), hand movements (i.e. number of movements and movement durations), visual judgment behaviors (i.e. glance duration and glance frequency) and response time. Task analysis results allowed us to generate input and output variables for further BPNN modeling. The overall risk prediction accuracy rate of our model was as high as 60%. In addition, an analysis of variable importance demonstrated that the longitudinal velocity was the most important variable in predicting traditional in-vehicle tasks, whereas the number of glances was the most important variable for predicting IVIS in-vehicle tasks. This study may help researchers better understand safety considerations related to in-vehicle secondary tasks and in-vehicle interface design.
机译:这项研究旨在通过使用两种方法为驾驶员执行的车载任务开发风险预测模型:任务分析(TA)和反向传播神经网络(BPNN)。 66名参与者自愿参加,并分为两组,分别具有不同的车载次要任务(传统与车载信息系统/ IVIS),并参加了模拟低/高驾驶负荷路况的驾驶实验。我们评估了驾驶性能(即纵向速度和横向加速度变化),手部动作(即动作次数和动作持续时间),视觉判断行为(即扫视持续时间和扫视频率)和响应时间。任务分析结果使我们能够为进一步的BPNN建模生成输入和输出变量。我们模型的整体风险预测准确率高达60%。此外,对变量重要性的分析表明,纵向速度是预测传统车载任务的最重要变量,而扫视次数是预测IVIS车载任务的最重要变量。这项研究可以帮助研究人员更好地理解与车载次要任务和车载界面设计有关的安全注意事项。

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